This study evaluated the performance of crop models CROPGRO-Soybean and CERES-Maize for simulating soybean and maize growth in different conditions in Mato Grosso, Brazil. The models were adjusted using data from field experiments under irrigated and rainfed conditions. Model performance varied depending on water availability, with lower accuracy under water deficit, especially for maize in the second season. Coefficient of agreement values ranged from 0.22-0.50 and 0.10-0.80 for soybean and maize, respectively. Grain yield RMSE was up to 2.5 t/ha for soybean and 2.7 t/ha for maize. Results showed the models
This study aimed to calibrate the CERES-Maize and CERES-Sorghum crop simulation models for maize and sorghum crops grown under dry conditions in Juranda, Paraná, Brazil. Experiments were conducted with three planting dates in 2014-2015 for each crop. Variables such as days to flowering, leaf area index, yield, and 1000 seed weight were measured and used to calibrate the models. The results demonstrated that the models were highly efficient at simulating crop cycles, yield and leaf area index, with agreement indices and modeling efficiency values above 0.90. The calibrated models can satisfactorily and comparatively simulate maize and sorghum yields for different planting dates in the study
Brunetti et al 2021 Improving CROPGRO for partitioning in Panicum Agron J.pdfFantahun Dugassa
The document describes improvements made to the CROPGRO-PFM model to better simulate growth and biomass partitioning of guineagrass cultivars Tanzânia and Mombaça. Data from two field experiments with different harvest cycles were used to modify model parameters. Major improvements were achieved by modifying parameters controlling biomass partitioning between leaf and stem throughout phenological stages. Additional modifications improved simulation of leaf and stem senescence, leaf photosynthesis, and sensitivity of leaf area expansion to cool weather. The improved model performance for simulating short and long harvest cycles will enable applications to diverse forage crop utilization strategies.
This document summarizes a study on farmers' agricultural practices, use of organic manure, and water availability in Madaya township, Myanmar. The study found that most farmers were middle-aged with 11-30 years of farming experience. They owned medium-sized farms of 4-30 acres. The majority practiced continuous flooding irrigation and grew rice varieties suited to their water availability. However, many farmers lacked organic manure and experienced water shortages or flooding. The study evaluated farmers' perceptions of climate change impacts on agriculture.
This document summarizes a research paper that examines the heterogeneous impacts of climate on rice yield in Assam, India. It applies quantile regression to district-level data from 1978 to 2005 to analyze how the effects of temperature and rainfall vary across seasonal rice varieties, agro-climatic zones, and levels of rice yield. The results show the climate impacts are not uniform, and that temperature has insignificant effects on yield overall, while precipitation effects differ across varieties, zones, and yields. Increases in temperature and rainfall variability were found to benefit autumn and winter rice but have insignificant or harmful impacts on summer rice. The findings suggest adaptation strategies and policies need to account for growing season, location, and current yield levels.
CROP MODELING IN VEGETABLES ( AABID AYOUB SKUAST-K).pptxAabidAyoub
crop modeling is future in agriculture to tackle changing environment conditions and increase food security in the world. These models incorporate various factors such as climate, soil characteristics, agronomic practices, and crop physiology to predict crop yields, water usage, nutrient uptake, and other important parameters. Crop modeling helps in understanding the complex interactions between different variables affecting crop growth and assists farmers, researchers, and policymakers in making informed decisions related to crop management, resource allocation, and risk assessment.
Role of AI in crop modeling: Artificial Intelligence (AI) plays a significant role in enhancing crop modeling by leveraging advanced computational techniques to improve model accuracy, efficiency, and scalability. One of the most important aspects of precision farming is sustainability. Using artificial neural networks (ANNs), a highly effective multilayer perceptron (MLP) model. The most common type in crop modeling is DSSAT , DSSAT (Decision Support System for Agro-technology Transfer).The Decision Support System for Agro-technology Transfer (DSSAT) is a software application program that comprises crop simulation models for over 42 crops (as of Version 4.8.2) as well as tools to facilitate effective use of the models. The tools include database management programs for soil, weather, crop management and experimental data, utilities, and application programs. The crop simulation models simulate growth, development and yield as a function of the soil-plant-atmosphere dynamics.DSSAT and its crop simulation models have been used for a wide range of applications at different spatial and temporal scales. This includes on-farm and precision management, regional assessments of the impact of climate variability and climate change, gene-based modeling and breeding selection, water use, greenhouse gas emissions, and long-term sustainability through the soil organic carbon and nitrogen balances.In conclusion, crop modeling stands as a crucial tool in modern agriculture, offering a systematic approach to understanding and predicting crop growth dynamics in diverse environmental conditions. By simulating the complex interactions between various factors influencing crop development, including climate, soil properties, agronomic practices, and genetic traits, crop models provide valuable insights for farmers, researchers, and policymakers.
2016_Spatial variability of the ten-day rainfall in the months in which.._.pdfANTONIOCARDOSOFERREI
This document analyzes the spatial and temporal variability of rainfall in Mato Grosso, Brazil over ten-day periods in October and January. Rainfall data from 177 weather stations in Mato Grosso and neighboring states were used. Ordinary kriging was employed to interpolate rainfall values and generate maps. Exponential models best fit the semivariograms. Spatial variability was observed in all periods analyzed, with the northern region receiving the highest rainfall. Average October rainfall was below 20mm, sufficient for soybean germination but not second crop corn. Average January rainfall was 52mm, potentially harmful for early soybean harvest but beneficial for later varieties and second crop corn cultivation.
Grain Yield Stability in Three-way Cross Hybrid Maize Varieties using AMMI an...Premier Publishers
A study to evaluate three-way cross hybrid maize varieties for wide adaptability and stability was conducted in eight environments in Sierra Leone using AMMI and GGE biplot analysis. There were significant genotype and environment main effects, and genotype x environment interactions (GEI) effects. Differences due to environments accounted for 70.1% of the total treatments sum of squares while genotypes and genotype x environment interaction accounted for 9.9% and 20.0%, respectively. The first four interaction principal component axes (IPCA) were also highly significant and accounted for 38.7%, 25.2%, 14.3% and 8.6%, respectively of the total genotype x environment interaction variation. The polygon view of the GGE biplot revealed that hybrid G14 produced the highest grain yield in environments E1, E5 and E7 whereas G24 was adaptive in environments E6, E8, E3, E4 and E2. Hybrids G24, G9, G17 and G6 also produced high grain yields and were relatively stable. Both AMMI and GGE biplot effectively partitioned treatments sum of squares and were more appropriate in explaining genotype x environment interaction. The models also identified G24 as the most desirable hybrid in terms of high grain yield and stability across environments. Therefore, this hybrid is recommended for commercial release.
This document is a research article that assesses the impact of climate variability and change on maize yield in Gamo Zone, Southern Ethiopia using crop modeling. It uses output from 3 CMIP5 climate models under 2 climate scenarios (RCP4.5 and RCP8.5) as inputs to the APSIM crop model to simulate maize yields. The results show inconsistent temperature and rainfall trends due to climate change. Simulated maize yields match observed yields with low error. Median yields are projected to decrease by up to 36.5% by 2041-2070 due to less rainfall, but increase by up to 29.2% from 2010-2040 under both climate scenarios.
This study aimed to calibrate the CERES-Maize and CERES-Sorghum crop simulation models for maize and sorghum crops grown under dry conditions in Juranda, Paraná, Brazil. Experiments were conducted with three planting dates in 2014-2015 for each crop. Variables such as days to flowering, leaf area index, yield, and 1000 seed weight were measured and used to calibrate the models. The results demonstrated that the models were highly efficient at simulating crop cycles, yield and leaf area index, with agreement indices and modeling efficiency values above 0.90. The calibrated models can satisfactorily and comparatively simulate maize and sorghum yields for different planting dates in the study
Brunetti et al 2021 Improving CROPGRO for partitioning in Panicum Agron J.pdfFantahun Dugassa
The document describes improvements made to the CROPGRO-PFM model to better simulate growth and biomass partitioning of guineagrass cultivars Tanzânia and Mombaça. Data from two field experiments with different harvest cycles were used to modify model parameters. Major improvements were achieved by modifying parameters controlling biomass partitioning between leaf and stem throughout phenological stages. Additional modifications improved simulation of leaf and stem senescence, leaf photosynthesis, and sensitivity of leaf area expansion to cool weather. The improved model performance for simulating short and long harvest cycles will enable applications to diverse forage crop utilization strategies.
This document summarizes a study on farmers' agricultural practices, use of organic manure, and water availability in Madaya township, Myanmar. The study found that most farmers were middle-aged with 11-30 years of farming experience. They owned medium-sized farms of 4-30 acres. The majority practiced continuous flooding irrigation and grew rice varieties suited to their water availability. However, many farmers lacked organic manure and experienced water shortages or flooding. The study evaluated farmers' perceptions of climate change impacts on agriculture.
This document summarizes a research paper that examines the heterogeneous impacts of climate on rice yield in Assam, India. It applies quantile regression to district-level data from 1978 to 2005 to analyze how the effects of temperature and rainfall vary across seasonal rice varieties, agro-climatic zones, and levels of rice yield. The results show the climate impacts are not uniform, and that temperature has insignificant effects on yield overall, while precipitation effects differ across varieties, zones, and yields. Increases in temperature and rainfall variability were found to benefit autumn and winter rice but have insignificant or harmful impacts on summer rice. The findings suggest adaptation strategies and policies need to account for growing season, location, and current yield levels.
CROP MODELING IN VEGETABLES ( AABID AYOUB SKUAST-K).pptxAabidAyoub
crop modeling is future in agriculture to tackle changing environment conditions and increase food security in the world. These models incorporate various factors such as climate, soil characteristics, agronomic practices, and crop physiology to predict crop yields, water usage, nutrient uptake, and other important parameters. Crop modeling helps in understanding the complex interactions between different variables affecting crop growth and assists farmers, researchers, and policymakers in making informed decisions related to crop management, resource allocation, and risk assessment.
Role of AI in crop modeling: Artificial Intelligence (AI) plays a significant role in enhancing crop modeling by leveraging advanced computational techniques to improve model accuracy, efficiency, and scalability. One of the most important aspects of precision farming is sustainability. Using artificial neural networks (ANNs), a highly effective multilayer perceptron (MLP) model. The most common type in crop modeling is DSSAT , DSSAT (Decision Support System for Agro-technology Transfer).The Decision Support System for Agro-technology Transfer (DSSAT) is a software application program that comprises crop simulation models for over 42 crops (as of Version 4.8.2) as well as tools to facilitate effective use of the models. The tools include database management programs for soil, weather, crop management and experimental data, utilities, and application programs. The crop simulation models simulate growth, development and yield as a function of the soil-plant-atmosphere dynamics.DSSAT and its crop simulation models have been used for a wide range of applications at different spatial and temporal scales. This includes on-farm and precision management, regional assessments of the impact of climate variability and climate change, gene-based modeling and breeding selection, water use, greenhouse gas emissions, and long-term sustainability through the soil organic carbon and nitrogen balances.In conclusion, crop modeling stands as a crucial tool in modern agriculture, offering a systematic approach to understanding and predicting crop growth dynamics in diverse environmental conditions. By simulating the complex interactions between various factors influencing crop development, including climate, soil properties, agronomic practices, and genetic traits, crop models provide valuable insights for farmers, researchers, and policymakers.
2016_Spatial variability of the ten-day rainfall in the months in which.._.pdfANTONIOCARDOSOFERREI
This document analyzes the spatial and temporal variability of rainfall in Mato Grosso, Brazil over ten-day periods in October and January. Rainfall data from 177 weather stations in Mato Grosso and neighboring states were used. Ordinary kriging was employed to interpolate rainfall values and generate maps. Exponential models best fit the semivariograms. Spatial variability was observed in all periods analyzed, with the northern region receiving the highest rainfall. Average October rainfall was below 20mm, sufficient for soybean germination but not second crop corn. Average January rainfall was 52mm, potentially harmful for early soybean harvest but beneficial for later varieties and second crop corn cultivation.
Grain Yield Stability in Three-way Cross Hybrid Maize Varieties using AMMI an...Premier Publishers
A study to evaluate three-way cross hybrid maize varieties for wide adaptability and stability was conducted in eight environments in Sierra Leone using AMMI and GGE biplot analysis. There were significant genotype and environment main effects, and genotype x environment interactions (GEI) effects. Differences due to environments accounted for 70.1% of the total treatments sum of squares while genotypes and genotype x environment interaction accounted for 9.9% and 20.0%, respectively. The first four interaction principal component axes (IPCA) were also highly significant and accounted for 38.7%, 25.2%, 14.3% and 8.6%, respectively of the total genotype x environment interaction variation. The polygon view of the GGE biplot revealed that hybrid G14 produced the highest grain yield in environments E1, E5 and E7 whereas G24 was adaptive in environments E6, E8, E3, E4 and E2. Hybrids G24, G9, G17 and G6 also produced high grain yields and were relatively stable. Both AMMI and GGE biplot effectively partitioned treatments sum of squares and were more appropriate in explaining genotype x environment interaction. The models also identified G24 as the most desirable hybrid in terms of high grain yield and stability across environments. Therefore, this hybrid is recommended for commercial release.
This document is a research article that assesses the impact of climate variability and change on maize yield in Gamo Zone, Southern Ethiopia using crop modeling. It uses output from 3 CMIP5 climate models under 2 climate scenarios (RCP4.5 and RCP8.5) as inputs to the APSIM crop model to simulate maize yields. The results show inconsistent temperature and rainfall trends due to climate change. Simulated maize yields match observed yields with low error. Median yields are projected to decrease by up to 36.5% by 2041-2070 due to less rainfall, but increase by up to 29.2% from 2010-2040 under both climate scenarios.
1. The study evaluated the CSM-CERES-Maize model for simulating maize growth and yield under different irrigation regimes in semi-arid conditions of Punjab, Pakistan.
2. Two maize hybrids were grown under 7 irrigation treatments, including no irrigation, irrigation at different growth stages, and irrigation scheduled using potential soil moisture deficit.
3. The model was calibrated using 2009 data and evaluated against 2010 data for a range of variables including yield, biomass, leaf area index, and evapotranspiration. The model performance was generally good with errors of less than 15% for most treatments.
Applications of Aqua crop Model for Improved Field Management Strategies and ...CrimsonpublishersMCDA
To quantify, integrate and assess the impacts from weather and climate change/variability on crop growth and productivity, crop models have been used for several years as decision support tools in the world. This paper is reviewed to assess applications of Aqua crop model as a decision support tool for simulating and validating crop management practices and climate change adaptation strategies. This model is devised by the FAO irrigation and drainage team. This model is very important especially, to guide as a decision support tool for dry land areas where soil moisture is very critical to affect crop productivity. It maintains the balance between simplicity, accuracy and robustness. The model has been calibrated and validated to simulate growth and productivity of crops, soil moisture balance, water use efficiency, evapo-transpiration and climate change impact assessment in different climate, management (water, fertilizer, sowing date, spacing etc.) practices around the world, especially in areas where soil moisture stress prevails. Maize, wheat, barley, tee, sorghum, pulse crops such as groundnut, soybean, vegetables (tomato, cabbage) have been tested using this model. The model comprehensively uses stress coefficients (water stress, fertilizer and temperature coefficients) to compute the effect of the factors on crop canopy, dry matter, stomatal closure, flowering, pollination and harvest index build up.
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Abstract— Agriculture (the agricultural exports flagship from southern Brazil) is highly dependent on temporal rainfall distribution. However, the technology used in the field has been altering this relationship. Such technology, in addition to minimizing the effects of climate variability, has increased the annual soybean yield observed in the trend analysis, which was positive in 17 of the municipalities studied. The aim of this study was to analyze the rainfall variability and soybean production in one of the areas of greatest soybean production in southern Brazil by applying the quartile, percentile, Pettitt (homogeneity - break results) and Mann-Kendall (trend) tests. The results indicate a significant relationship between annual rainfall variability (1999-2000; 2009-2010) and soybean yield (kg/ha), particularly during the growing season of 2009-2010 when the yield variation between municipalities was low. It was concluded that the statistically significant correlations indicate that the soy dependence ranges from 22% to 50% in certain municipalities.
2017_Zoning of water requerement satisfaction (Agriambi).pdfANTONIOCARDOSOFERREI
This study used weather data from 38 stations in Mato Grosso, Brazil to create a water requirement satisfaction index (WRSI) zoning for common bean cultivation periods. WRSI values were calculated for 12 sowing periods and 3 soil water capacities, and indicated the ratio of actual to potential crop evapotranspiration. Semivariograms were fitted to the data and kriging interpolation was used to generate WRSI maps. The maps showed similar suitability for the 3 soil water capacities. Periods 1-7 had no spatial variability and were suitable for all regions. Periods 8-12 maps indicated suitable, restricted and unsuitable areas for flowering and grain filling. The zoning provides guidance on best sowing periods to reduce drought risk for
— Southern of Minas state, is a important producer of banana, especially the cultivars Prata-Anã, Nanicão and Maçã. These cultivars present low productivity, great plant height and are susceptible to major banana diseases. The objective of this study was to evaluate the vegetative and productive behavior of banana cultivars as Prata, Nanicão and Maçã, in Lavras, MG, Brazil to select those with the best features, of bunch and fruit size, lower production cycle and disease resistance in high land conditions. Were evaluated the following materials: type: 'Prata': 'Prata-Anã' (control), 'BRS Maravilha', 'BRS Vitoria', PA 94-01; type 'Nanicão': 'Grande Naine' (control) and FHIA 17 and type 'Maçã': 'Maçã' (control) and YB 42-03. The experiment was conducted in a completely randomized block design with three replications and 16 plants per plot. Regarding the type 'Prata-Anã', 'BRS Maravilha' and PA 94-01 are recommended by their greater productivity, plant height, production cycle, flavor and fruit appearance in relation to cv 'Prata-Anã' traditionally grown in region. PV 94-01 and 'Vitoria', despite the greats plant height, are recommended due to the greater productivity. The YB 42-03 genotype is an alternative to 'Maçã' because it is similar to productivity, size and production cycle.
Evaluation of water deficient stress tolerance in spring wheat lines using ca...Innspub Net
This document summarizes a research study that used canonical discriminant analysis to evaluate 296 spring wheat lines for water deficit stress tolerance. The analysis used stress tolerance and sensitivity indices measured under normal and drought conditions. The results showed:
1) The first two canonical variables explained 97% of the variation between groups and differentiated genotypes based on yield potential and stress tolerance for the first variable, and stress tolerance versus sensitivity for the second.
2) Five distinct genotype groups were identified. Group 2 performed best with the highest first canonical variable scores and most negative second variable scores, indicating suitability for both stressed and non-stressed conditions.
3) Canonical discriminant analysis accurately grouped 98% of genotypes, validating the cluster analysis
This document discusses incorporating weather, soil, plant, and other environmental parameters as inputs into crop growth models. It provides an overview of different types of crop models and the key input data they require, including weather, soil, crop, management, and pest data. The document also discusses how remote sensing data can be incorporated into models by using time series variables like leaf area index derived from remote sensing as model inputs. Several case studies are presented on integrating remote sensing with different crop models to improve yield predictions at regional scales.
ISSN 2321 – 9602
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Research study or Thesis on Agriculture courseYzaCambosaReyes
55% of local farmers surveyed said they had experimented with different crop rotations in response to weather changes, and found the results to be a little bit good. All 20 farmers surveyed said they experienced losing profit income due to weather changes, and tried using crop rotation methods to avoid low productivity. The majority, 60% of farmers, used a biennial rotation method, rotating crops every two years.
Matusso and Faruque, 2015. The Performance of Sesame (Sesamum indicum L.)Jossias Matusso
This study evaluated the performance of four sesame genotypes (Linde, Alua, Rama, and Nicaragua) under agro-ecological conditions in Angónia District, Mozambique over two growing seasons. Results showed significant differences between genotypes in days to flowering, capsule formation, and maturity. The Nicaragua variety yielded significantly higher than the others with 214.8 kg/ha and 241.4 kg/ha in the respective seasons. While plant height and branching were unaffected by genotype, other growth parameters like time to flowering and capsule formation differed significantly between varieties. Overall, the Nicaragua genotype performed best in terms of yield potential under the conditions tested.
This document summarizes a study on farmers' perceptions of climate change impacts in different rice production systems in Morogoro, Tanzania. The study used questionnaires and focus groups to collect data from 150 farmers practicing rainfed, rainwater harvesting, and irrigated rice production. The results showed that socioeconomic factors like age, education, household size, and main occupation influence farmers' perceptions of climate change impacts and adaptation strategies. Most farmers perceived that climate change could lead to crop failure, unpredictable seasons, drought, and floods. The study recommends increasing awareness, education, and training on good agricultural practices to help farmers cope with climate variability.
In the southern region of the State of Minas Gerais, Brazil, there is predominance of small farms that cultivate potato and exploit and dairy farming in family business form. These firms are important for the economic activity in the region, although most pasture areas are degraded. In Potato cultivation the intensive use of the area predominates with more than one crop per year, with absence of: technology, conservation and environmental techniques and crop rotation. This predatory system has led to the degradation of soils and natural resources. The purpose of this paper was to propose and disseminate techniques for crop managing and, mainly, the adoption of the crop-livestock integration system with potato as the main crop, providing for family business rationality and sustainable exploitation of its property. These practices can improve the income producers, and ensure the permanence in their properties. The research was carried out in three municipalities in the southern region of the state of Minas Gerais, prioritizing the sequence of rotational occupation and planting time of the potato: a) potato (planting in October), maize + Brachiaria grass (direct grazing and silage), millet (grazing); b) potato (February planting), oats (cutting and grazing), corn (grain); c) potato (October planting), maize; occupational sequence of crop rotation performed respectively in three municipalities. After the crops in succession, the potato planting is again restarted. The results obtained allow us to conclude that the crop-livestock integration system adds positive effects of potato production to those of livestock production, with a great synergistic effect benefiting all these operations.
USE OF FERTILIZER TYPE IN THE PADDY CULTIVATION & ITS ASSOCIATION WITH THE VA...Mohd Asif Shah
This document summarizes a study on the association between socioeconomic variables and the type of fertilizer (organic or inorganic) used for paddy cultivation in Kulgam district, Jammu and Kashmir, India. The study found that most farmers (79.4%) use both organic and inorganic fertilizers for paddy. Chi-square tests showed associations between fertilizer type and age as well as education level, but not gender. Younger, more educated farmers were more likely to use inorganic fertilizers in addition to organic ones. The shift from paddy to more profitable horticultural crops like apples has reduced Kulgam's status as the "Rice Bowl of Kashmir".
EFFECT OF BIOFERTILIZAÇÃO ON YELLOW PASSION FRUIT PRODUCTION AND FRUIT QUALITYAna Aguiar
The document summarizes a study that evaluated the effects of bovine biofertilizer on yellow passion fruit production and fruit quality. It was conducted in Brazil using three passion fruit genotypes and five doses of cattle biofertilizer applied monthly. The biofertilizer did not negatively impact the production capacity of two of the genotypes. Overall, the biofertilizer doses led to fruit quality characteristics that met or exceeded market requirements. The study suggests that bovine biofertilizer has potential to improve yellow passion fruit production and quality.
This document discusses emerging machine learning techniques for predicting crop yield and studying influential factors. It reviews literature applying machine learning to quantify the effects of environmental factors like temperature and precipitation on crop yields. Many studies use artificial neural networks, random forests, support vector machines and other techniques. Deep learning methods are also being explored for crop yield prediction. Remote sensing data and large datasets are enabling more accurate machine learning models to estimate yields and assess influential factors for various crops. The techniques studied can help farmers and governments optimize agriculture practices and policies.
Creating Shared Value for Rice in Latin America and the CaribbeanCIAT
The document summarizes rice research at the International Center for Tropical Agriculture (CIAT) in Latin America and the Caribbean. It notes that rice is a staple crop in the region and demand is growing, but production faces challenges from climate change, high fertilizer prices, and narrow genetic diversity. CIAT's rice program aims to develop eco-efficient rice varieties with higher yields, nutrient content, stress tolerance, and water/fertilizer efficiency to ensure food security through partnerships with other organizations in the region. The program will provide improved rice germplasm, broaden genetic resources, establish evaluation platforms, and transfer technologies to farmers to boost sustainable production.
Yield potentials of recently released wheat varieties and advanced lines unde...Innspub Net
An experiment was conducted to study the varietals /genotypic potentiality in producing maximum yield under
different soil and environmental conditions and N-use efficiency of different genotypes and to support wheat
breeding program in selecting the genotype with relatively higher yield potential. The experiment was conducted
in split plot design with three replications to evaluate the two soil management practices: (i) Recommended
fertilizer (N100P30K50S20) with all the production package of Wheat Research Center (WRC) (timely sowing, one
weeding, 3 irrigations) (ii) Treatment (i) plus soil treatment (application of granular fungicide in moist soil before
seeding) with plant protection (foliar application of tilt at anthesis and grain filling). One additional irrigation
(schedules: 17-21, 35-40, 55-60, 75-80 DAS) in the main plot and eight varieties/lines, varities: i) Shatabdi ii)
Prodip iii) Bijoy iv) BARI Gom-25 v) BARI Gom-26, lines: vi) BAW 1051 vii) BAW 1135 and viii) BAW 1141 in subplot were adopted. The results conclude that best management practice with Prodip, Bijoy and BAW 1141 are best performance among the genotypes/varieties and will give a new concept on identification of the strategy for the improvement of wheat cultivation and yield.
Combining Ability and Heterosis for Grain Yield and Other Agronomic Traits in...Premier Publishers
A varietal diallel of eight parents (3 sweet corn, 1 popcorn and 4 field corn) was evaluated at the Teaching and Research Farms of College of Agriculture, Lafia and Federal University of Agriculture, Makurdi respectively, to estimate combining ability, heterosis and gene action. The experiments were laid out as 8x8 α-lattice design with three replications in both locations during the 2018 rain-fed cropping season. Data was collected on emergence count, chlorophyll content, days to tasselling, days to silking, plant height, ear height and grain yield. A significant difference (p≤ 0.05 and p≤ 0.01) in the General Combining Ability (GCA), Specific Combining Ability (SCA) and Reciprocals was observed, with apparent additivity for all the traits. Both negative and positive GCA, SCA and Reciprocal effects and heterosis were observed for all the traits studied. Recurrent selection in TZY-sh2-Y, MAW-sh2-W, SAMMAZ 39, TZEE 2009 and MAY-PC-Y for earliness, dwarfism, vigour and yield was recommended for further breeding towards the improvement of these genotypes in the Southern Guinea Savanna ecology of Nigeria.
Criteria for the Selection of Vegetable Growth-Promoting Bacteria to be appli...Agriculture Journal IJOEAR
In order to define which are the most important criteria for the selection of plant Growth-Promoting bacterial strains of the Hibiscus sabdariffa L. crop (Roselle), bacterial strains isolated from the roots of Roselle plants of two varieties (Creole and Spider) were used, collected in the community of Río de los Peces, municipality of Candelaria Loxicha, Oaxaca and seeds of the same varieties. To characterize the varieties, the following were determined: total germination percentage (TGP), germination speed (GS), the root length(RL), the stem length (SL), the dry root biomass (DRB), the dry stem biomass (DSB) and the chlorophyll content (CC). Three types of LED lamps were used to illuminate the seedlings. The seeds inoculated with cells of six selected bacterial strains were grown in a greenhouse to determine: the stem length (SL) at 3, 45 and 65 days after sowing (das). The treatments were distributed under a completely random design and comparison of means (Tukey, p = 0.05). The TGP, DSB and DRB parameters were not useful in the selection process of the strains that promoted plant growth to a greater degree. The GS and SL to be considered safe criteria or not, what is important is the relationship of what happens at the time of germination and development of the seedlings in the laboratory and greenhouse. The SL of the plants in the greenhouse showed differences between strains, but not regarding the control and also only observed in the first days of development (3 das). The CC did not prove to be a good selection criterion either. The lamp composed of 15% white light, 27% blue light and 58% red light was the one that most promoted root growth.
We evaluated the oviposition preference and damage capacity of Spodoptera frugiperda on the different phenological stages of corn. Tests were performed at the Assis Chateaubriand Agricultural School (07º10'15" S, 35º51'13" W, altitude 634 meters), municipality of Lagoa Seca, Paraíba State, Brazil, in two areas of 500 m2, with CMS maize hybrid strain and maize intercropped with bean with the spacing of 0.80 x 0.40 m. Eggs and caterpillars were collected weekly on 50 plants randomly sampled in five spots. Height and number of leaves per plant, and damage from caterpillars of S. frugiperda were recorded using the scale, the rangers were., 0) no damage, 1) leaf scraped, 2) leaf pierced, 3) leaf torn, 4) damage in cartridge, 5) cartridge destroyed. The average number of clutches did not differ significantly among the three phenological stages of the culture, but average clutch size (number of eggs) was significantly smaller for the stage of 4-6 leaves. However, there was a significant interaction with respect to the number of clutches between position in the plant (lower, middle, and upper) and phenological stage, and between leaf surface and phenological stages. There were significant differences among tillage systems for corn in monoculture and corn intercropped with bean.
O documento descreve um estudo sobre a precipitação e temperatura no estado de Mato Grosso utilizando dados de estações meteorológicas e pluviométricas e o método de krigagem ordinária para gerar mapas espaciais das variáveis climáticas. Os resultados mostram que a precipitação média anual varia entre 1.200 e 2.200 mm e que as menores temperaturas ocorrem no sudeste do estado.
Este documento apresenta um calendário agrícola para o cultivo do milho na região de Sinop, Mato Grosso, Brasil. O estudo avaliou variáveis como precipitação, temperatura e evapotranspiração para determinar as melhores épocas de plantio. Com base nos requisitos térmicos da cultura e na distribuição da precipitação durante as fases fenológicas, a melhor época para o plantio foi entre os dias 30 e 32 de outubro a início de novembro.
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1. The study evaluated the CSM-CERES-Maize model for simulating maize growth and yield under different irrigation regimes in semi-arid conditions of Punjab, Pakistan.
2. Two maize hybrids were grown under 7 irrigation treatments, including no irrigation, irrigation at different growth stages, and irrigation scheduled using potential soil moisture deficit.
3. The model was calibrated using 2009 data and evaluated against 2010 data for a range of variables including yield, biomass, leaf area index, and evapotranspiration. The model performance was generally good with errors of less than 15% for most treatments.
Applications of Aqua crop Model for Improved Field Management Strategies and ...CrimsonpublishersMCDA
To quantify, integrate and assess the impacts from weather and climate change/variability on crop growth and productivity, crop models have been used for several years as decision support tools in the world. This paper is reviewed to assess applications of Aqua crop model as a decision support tool for simulating and validating crop management practices and climate change adaptation strategies. This model is devised by the FAO irrigation and drainage team. This model is very important especially, to guide as a decision support tool for dry land areas where soil moisture is very critical to affect crop productivity. It maintains the balance between simplicity, accuracy and robustness. The model has been calibrated and validated to simulate growth and productivity of crops, soil moisture balance, water use efficiency, evapo-transpiration and climate change impact assessment in different climate, management (water, fertilizer, sowing date, spacing etc.) practices around the world, especially in areas where soil moisture stress prevails. Maize, wheat, barley, tee, sorghum, pulse crops such as groundnut, soybean, vegetables (tomato, cabbage) have been tested using this model. The model comprehensively uses stress coefficients (water stress, fertilizer and temperature coefficients) to compute the effect of the factors on crop canopy, dry matter, stomatal closure, flowering, pollination and harvest index build up.
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Abstract— Agriculture (the agricultural exports flagship from southern Brazil) is highly dependent on temporal rainfall distribution. However, the technology used in the field has been altering this relationship. Such technology, in addition to minimizing the effects of climate variability, has increased the annual soybean yield observed in the trend analysis, which was positive in 17 of the municipalities studied. The aim of this study was to analyze the rainfall variability and soybean production in one of the areas of greatest soybean production in southern Brazil by applying the quartile, percentile, Pettitt (homogeneity - break results) and Mann-Kendall (trend) tests. The results indicate a significant relationship between annual rainfall variability (1999-2000; 2009-2010) and soybean yield (kg/ha), particularly during the growing season of 2009-2010 when the yield variation between municipalities was low. It was concluded that the statistically significant correlations indicate that the soy dependence ranges from 22% to 50% in certain municipalities.
2017_Zoning of water requerement satisfaction (Agriambi).pdfANTONIOCARDOSOFERREI
This study used weather data from 38 stations in Mato Grosso, Brazil to create a water requirement satisfaction index (WRSI) zoning for common bean cultivation periods. WRSI values were calculated for 12 sowing periods and 3 soil water capacities, and indicated the ratio of actual to potential crop evapotranspiration. Semivariograms were fitted to the data and kriging interpolation was used to generate WRSI maps. The maps showed similar suitability for the 3 soil water capacities. Periods 1-7 had no spatial variability and were suitable for all regions. Periods 8-12 maps indicated suitable, restricted and unsuitable areas for flowering and grain filling. The zoning provides guidance on best sowing periods to reduce drought risk for
— Southern of Minas state, is a important producer of banana, especially the cultivars Prata-Anã, Nanicão and Maçã. These cultivars present low productivity, great plant height and are susceptible to major banana diseases. The objective of this study was to evaluate the vegetative and productive behavior of banana cultivars as Prata, Nanicão and Maçã, in Lavras, MG, Brazil to select those with the best features, of bunch and fruit size, lower production cycle and disease resistance in high land conditions. Were evaluated the following materials: type: 'Prata': 'Prata-Anã' (control), 'BRS Maravilha', 'BRS Vitoria', PA 94-01; type 'Nanicão': 'Grande Naine' (control) and FHIA 17 and type 'Maçã': 'Maçã' (control) and YB 42-03. The experiment was conducted in a completely randomized block design with three replications and 16 plants per plot. Regarding the type 'Prata-Anã', 'BRS Maravilha' and PA 94-01 are recommended by their greater productivity, plant height, production cycle, flavor and fruit appearance in relation to cv 'Prata-Anã' traditionally grown in region. PV 94-01 and 'Vitoria', despite the greats plant height, are recommended due to the greater productivity. The YB 42-03 genotype is an alternative to 'Maçã' because it is similar to productivity, size and production cycle.
Evaluation of water deficient stress tolerance in spring wheat lines using ca...Innspub Net
This document summarizes a research study that used canonical discriminant analysis to evaluate 296 spring wheat lines for water deficit stress tolerance. The analysis used stress tolerance and sensitivity indices measured under normal and drought conditions. The results showed:
1) The first two canonical variables explained 97% of the variation between groups and differentiated genotypes based on yield potential and stress tolerance for the first variable, and stress tolerance versus sensitivity for the second.
2) Five distinct genotype groups were identified. Group 2 performed best with the highest first canonical variable scores and most negative second variable scores, indicating suitability for both stressed and non-stressed conditions.
3) Canonical discriminant analysis accurately grouped 98% of genotypes, validating the cluster analysis
This document discusses incorporating weather, soil, plant, and other environmental parameters as inputs into crop growth models. It provides an overview of different types of crop models and the key input data they require, including weather, soil, crop, management, and pest data. The document also discusses how remote sensing data can be incorporated into models by using time series variables like leaf area index derived from remote sensing as model inputs. Several case studies are presented on integrating remote sensing with different crop models to improve yield predictions at regional scales.
ISSN 2321 – 9602
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Research study or Thesis on Agriculture courseYzaCambosaReyes
55% of local farmers surveyed said they had experimented with different crop rotations in response to weather changes, and found the results to be a little bit good. All 20 farmers surveyed said they experienced losing profit income due to weather changes, and tried using crop rotation methods to avoid low productivity. The majority, 60% of farmers, used a biennial rotation method, rotating crops every two years.
Matusso and Faruque, 2015. The Performance of Sesame (Sesamum indicum L.)Jossias Matusso
This study evaluated the performance of four sesame genotypes (Linde, Alua, Rama, and Nicaragua) under agro-ecological conditions in Angónia District, Mozambique over two growing seasons. Results showed significant differences between genotypes in days to flowering, capsule formation, and maturity. The Nicaragua variety yielded significantly higher than the others with 214.8 kg/ha and 241.4 kg/ha in the respective seasons. While plant height and branching were unaffected by genotype, other growth parameters like time to flowering and capsule formation differed significantly between varieties. Overall, the Nicaragua genotype performed best in terms of yield potential under the conditions tested.
This document summarizes a study on farmers' perceptions of climate change impacts in different rice production systems in Morogoro, Tanzania. The study used questionnaires and focus groups to collect data from 150 farmers practicing rainfed, rainwater harvesting, and irrigated rice production. The results showed that socioeconomic factors like age, education, household size, and main occupation influence farmers' perceptions of climate change impacts and adaptation strategies. Most farmers perceived that climate change could lead to crop failure, unpredictable seasons, drought, and floods. The study recommends increasing awareness, education, and training on good agricultural practices to help farmers cope with climate variability.
In the southern region of the State of Minas Gerais, Brazil, there is predominance of small farms that cultivate potato and exploit and dairy farming in family business form. These firms are important for the economic activity in the region, although most pasture areas are degraded. In Potato cultivation the intensive use of the area predominates with more than one crop per year, with absence of: technology, conservation and environmental techniques and crop rotation. This predatory system has led to the degradation of soils and natural resources. The purpose of this paper was to propose and disseminate techniques for crop managing and, mainly, the adoption of the crop-livestock integration system with potato as the main crop, providing for family business rationality and sustainable exploitation of its property. These practices can improve the income producers, and ensure the permanence in their properties. The research was carried out in three municipalities in the southern region of the state of Minas Gerais, prioritizing the sequence of rotational occupation and planting time of the potato: a) potato (planting in October), maize + Brachiaria grass (direct grazing and silage), millet (grazing); b) potato (February planting), oats (cutting and grazing), corn (grain); c) potato (October planting), maize; occupational sequence of crop rotation performed respectively in three municipalities. After the crops in succession, the potato planting is again restarted. The results obtained allow us to conclude that the crop-livestock integration system adds positive effects of potato production to those of livestock production, with a great synergistic effect benefiting all these operations.
USE OF FERTILIZER TYPE IN THE PADDY CULTIVATION & ITS ASSOCIATION WITH THE VA...Mohd Asif Shah
This document summarizes a study on the association between socioeconomic variables and the type of fertilizer (organic or inorganic) used for paddy cultivation in Kulgam district, Jammu and Kashmir, India. The study found that most farmers (79.4%) use both organic and inorganic fertilizers for paddy. Chi-square tests showed associations between fertilizer type and age as well as education level, but not gender. Younger, more educated farmers were more likely to use inorganic fertilizers in addition to organic ones. The shift from paddy to more profitable horticultural crops like apples has reduced Kulgam's status as the "Rice Bowl of Kashmir".
EFFECT OF BIOFERTILIZAÇÃO ON YELLOW PASSION FRUIT PRODUCTION AND FRUIT QUALITYAna Aguiar
The document summarizes a study that evaluated the effects of bovine biofertilizer on yellow passion fruit production and fruit quality. It was conducted in Brazil using three passion fruit genotypes and five doses of cattle biofertilizer applied monthly. The biofertilizer did not negatively impact the production capacity of two of the genotypes. Overall, the biofertilizer doses led to fruit quality characteristics that met or exceeded market requirements. The study suggests that bovine biofertilizer has potential to improve yellow passion fruit production and quality.
This document discusses emerging machine learning techniques for predicting crop yield and studying influential factors. It reviews literature applying machine learning to quantify the effects of environmental factors like temperature and precipitation on crop yields. Many studies use artificial neural networks, random forests, support vector machines and other techniques. Deep learning methods are also being explored for crop yield prediction. Remote sensing data and large datasets are enabling more accurate machine learning models to estimate yields and assess influential factors for various crops. The techniques studied can help farmers and governments optimize agriculture practices and policies.
Creating Shared Value for Rice in Latin America and the CaribbeanCIAT
The document summarizes rice research at the International Center for Tropical Agriculture (CIAT) in Latin America and the Caribbean. It notes that rice is a staple crop in the region and demand is growing, but production faces challenges from climate change, high fertilizer prices, and narrow genetic diversity. CIAT's rice program aims to develop eco-efficient rice varieties with higher yields, nutrient content, stress tolerance, and water/fertilizer efficiency to ensure food security through partnerships with other organizations in the region. The program will provide improved rice germplasm, broaden genetic resources, establish evaluation platforms, and transfer technologies to farmers to boost sustainable production.
Yield potentials of recently released wheat varieties and advanced lines unde...Innspub Net
An experiment was conducted to study the varietals /genotypic potentiality in producing maximum yield under
different soil and environmental conditions and N-use efficiency of different genotypes and to support wheat
breeding program in selecting the genotype with relatively higher yield potential. The experiment was conducted
in split plot design with three replications to evaluate the two soil management practices: (i) Recommended
fertilizer (N100P30K50S20) with all the production package of Wheat Research Center (WRC) (timely sowing, one
weeding, 3 irrigations) (ii) Treatment (i) plus soil treatment (application of granular fungicide in moist soil before
seeding) with plant protection (foliar application of tilt at anthesis and grain filling). One additional irrigation
(schedules: 17-21, 35-40, 55-60, 75-80 DAS) in the main plot and eight varieties/lines, varities: i) Shatabdi ii)
Prodip iii) Bijoy iv) BARI Gom-25 v) BARI Gom-26, lines: vi) BAW 1051 vii) BAW 1135 and viii) BAW 1141 in subplot were adopted. The results conclude that best management practice with Prodip, Bijoy and BAW 1141 are best performance among the genotypes/varieties and will give a new concept on identification of the strategy for the improvement of wheat cultivation and yield.
Combining Ability and Heterosis for Grain Yield and Other Agronomic Traits in...Premier Publishers
A varietal diallel of eight parents (3 sweet corn, 1 popcorn and 4 field corn) was evaluated at the Teaching and Research Farms of College of Agriculture, Lafia and Federal University of Agriculture, Makurdi respectively, to estimate combining ability, heterosis and gene action. The experiments were laid out as 8x8 α-lattice design with three replications in both locations during the 2018 rain-fed cropping season. Data was collected on emergence count, chlorophyll content, days to tasselling, days to silking, plant height, ear height and grain yield. A significant difference (p≤ 0.05 and p≤ 0.01) in the General Combining Ability (GCA), Specific Combining Ability (SCA) and Reciprocals was observed, with apparent additivity for all the traits. Both negative and positive GCA, SCA and Reciprocal effects and heterosis were observed for all the traits studied. Recurrent selection in TZY-sh2-Y, MAW-sh2-W, SAMMAZ 39, TZEE 2009 and MAY-PC-Y for earliness, dwarfism, vigour and yield was recommended for further breeding towards the improvement of these genotypes in the Southern Guinea Savanna ecology of Nigeria.
Criteria for the Selection of Vegetable Growth-Promoting Bacteria to be appli...Agriculture Journal IJOEAR
In order to define which are the most important criteria for the selection of plant Growth-Promoting bacterial strains of the Hibiscus sabdariffa L. crop (Roselle), bacterial strains isolated from the roots of Roselle plants of two varieties (Creole and Spider) were used, collected in the community of Río de los Peces, municipality of Candelaria Loxicha, Oaxaca and seeds of the same varieties. To characterize the varieties, the following were determined: total germination percentage (TGP), germination speed (GS), the root length(RL), the stem length (SL), the dry root biomass (DRB), the dry stem biomass (DSB) and the chlorophyll content (CC). Three types of LED lamps were used to illuminate the seedlings. The seeds inoculated with cells of six selected bacterial strains were grown in a greenhouse to determine: the stem length (SL) at 3, 45 and 65 days after sowing (das). The treatments were distributed under a completely random design and comparison of means (Tukey, p = 0.05). The TGP, DSB and DRB parameters were not useful in the selection process of the strains that promoted plant growth to a greater degree. The GS and SL to be considered safe criteria or not, what is important is the relationship of what happens at the time of germination and development of the seedlings in the laboratory and greenhouse. The SL of the plants in the greenhouse showed differences between strains, but not regarding the control and also only observed in the first days of development (3 das). The CC did not prove to be a good selection criterion either. The lamp composed of 15% white light, 27% blue light and 58% red light was the one that most promoted root growth.
We evaluated the oviposition preference and damage capacity of Spodoptera frugiperda on the different phenological stages of corn. Tests were performed at the Assis Chateaubriand Agricultural School (07º10'15" S, 35º51'13" W, altitude 634 meters), municipality of Lagoa Seca, Paraíba State, Brazil, in two areas of 500 m2, with CMS maize hybrid strain and maize intercropped with bean with the spacing of 0.80 x 0.40 m. Eggs and caterpillars were collected weekly on 50 plants randomly sampled in five spots. Height and number of leaves per plant, and damage from caterpillars of S. frugiperda were recorded using the scale, the rangers were., 0) no damage, 1) leaf scraped, 2) leaf pierced, 3) leaf torn, 4) damage in cartridge, 5) cartridge destroyed. The average number of clutches did not differ significantly among the three phenological stages of the culture, but average clutch size (number of eggs) was significantly smaller for the stage of 4-6 leaves. However, there was a significant interaction with respect to the number of clutches between position in the plant (lower, middle, and upper) and phenological stage, and between leaf surface and phenological stages. There were significant differences among tillage systems for corn in monoculture and corn intercropped with bean.
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2019_Adjustment and avaluation of cropgro-soybean....._.pdf
1. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
189
ADJUSTMENT AND EVALUATION OF CROPGRO-SOYBEAN AND
CERES-MAIZE FOR DIFFERENT GENETIC MATERIAL IN A
REGION OF MATO GROSSO STATE, BRAZIL†
[AJUSTE Y EVALUACIÓN DE CROPGRO-SOYBEAN Y CERES-
MAIZE PARA DIFERENTES MATERIALES GENÉTICOS EN UNA
REGIÓN DEL ESTADO DE MATO GROSSO, BRASIL]
Maria Carolina da Silva Andrea1,
*, João Danilo Barbieri 1,2
, Rivanildo
Dallacort1
, Rafael Cesar Tieppo1
, Paulo Sérgio Lourenço de Freitas2
and
Marco Antonio Camillo de Carvalho3
1
State University of Mato Grosso – UNEMAT, Campus Universitário de
Tangará da Serra, Rodovia MT – 358, Km 07, Jardim Aeroporto, Tangará da
Serra, Mato Grosso, Brazil; 78300-000. Email: maria.andrea@usp.br
2
State University of Maringá – UEM, Av. Colombo, 5790, Jardim Universitário,
87020900 Maringá, Paraná, Brazil
3
State University of Mato Grosso – UNEMAT, Campus Universitário de Alta
Floresta, 78.580-000 Alta Floresta, Mato Grosso, Brazil
*Corresponding author
SUMMARY
Considering the importance of the use of crop models as an aid measure in the management of the agricultural
production system, the objective of this study was to assess the performance of a soybean and maize models,
CROPGRO-Soybean and CSM-CERES-Maize, respectively, for different genetic materials and water regime in
the two annual cropping seasons in a region of Mato Grosso state, Brazil. Models were adjusted and evaluated,
respectively, with field experiments under irrigated and rainfed conditions, by using crop production parameters
and phenology. Model performance was generally variable in the rainfed conditions, especially when water
deficit was more pronounced during the season. Values of coefficient of agreement, d, varied between 0.22 –
0.50 and 0.10 – 0.80 and maximum RMSE of grain yield were of 2.5 and 2.7 t ha-1
for soybean and maize,
respectively. Results indicated model’s sensibility to water stress, which was more accentuated in the second
agricultural season, when maize is usually cultivated. In an overall analysis, the soybean and maize crop models
provided satisfactory results regarding simulation of crop growth and development, indicating to be a useful
agricultural management tool for the most important agricultural crops in Mato Grosso state, although
adjustments regarding parameters of soil water availability would increase models’ performances.
Keywords: DSSAT; Glycine max (L.) Merr.; Zea mays L.; simulation; Cerrado; Mato Grosso.
RESUMEN
Considerando la importancia del uso de modelos de cultivos como medida de ayuda en el manejo del sistema de
producción agrícola, el objetivo de este estudio fue la calibración, validación y análisis de los modelos de maíz y
soya, CROPGRO-Soybean y CSM-CERES-Maize, respectivamente, se realizaron para diferentes materiales
genéticos y fechas de siembra en las dos temporadas agrícolas en una región del estado de Mato Grosso, en
Brasil. Los modelos fueron calibrados y evaluados con experimentos de campo en condiciones de irrigación y de
secano, respectivamente. Los parámetros de producción de cultivos y la fenología se utilizaron para el ajuste del
modelo y su rendimiento se evaluó estadísticamente. El rendimiento del modelo fue generalmente variable en las
condiciones de secano, especialmente cuando el déficit de agua fue más pronunciado. Los valores de coeficiente
de acuerdo, d, variaron entre 0.22 - 0.50 y 0.10 - 0.80 y el RMSE máximo del rendimiento de grano fue de 2.5 y
2.7 t ha-1
para la soja y el maíz, respectivamente. Los resultados indicaron la sensibilidad del modelo al estrés
hídrico, que se acentuó más en la segunda temporada agrícola, cuando generalmente se cultiva el maíz. En un
análisis general, los modelos de cultivos de soja y maíz proporcionaron resultados satisfactorios con respecto a la
simulación del crecimiento y desarrollo de los cultivos, lo que indica que es una herramienta útil de manejo
agrícola para los cultivos agrícolas más importantes en el estado de Mato Grosso, aunque los ajustes en los
parámetros de disponibilidad de agua en el suelo aumentarán el rendimiento de los modelos.
Palabras clave: DSSAT; Glycine max (L.) Merr.; Zea mays L.; simulación; Cerrado; Mato Grosso.
† Submitted October 9, 2018 – Accepted March 12, 2019. This work is licensed under a CC-BY 4.0 International License.
ISSN: 1870-0462
2. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
190
INTRODUCTION
Crop models have established their importance as a
tool for assistance in management decisions in
agricultural production systems, especially since the
year 2000 and are also constantly subject of study
and research (Keating and Thornburn, 2018). For
its profitable use, it is of recognized importance that
the model is adjusted to local conditions,
comprising environment, management and genetic
material traits, which promote some variation in
crop development and production. In a crop model,
knowledge of cultivar specific factors, known as
genetic coefficients, is a primary step for predicting
crop daily growth and development under different
environmental and crop management conditions
(Jones et al. 2003). Although the models’ overall
yield trend predicting capacity is worldwide
recognized, the extent of the necessity of required
experimental data and the approach that provides
best model performance is subject of question
(Seidel et al., 2018). Mavromatis et al. (2001),
when assessing a widely used soybean model
(CROPGRO-Soybean), pointed to its successful
performance when simulating the “average”
genotype x environment interactions trends, but a
lower performance in environments with very high
or very low crop yields. Salmerón and Purcell
(2016), when using the same soybean model,
pointed to a similar model performance between
using the model’s generic genetic coefficients
(function of maturity group) and when adjusting the
model through some of their coefficients. Monteiro
et al. (2017) showed the overall accuracy of a
widely used maize model (CERES-Maize) for
predicting general maize yield trends under
different management and water availability
conditions for all main regions in Brazil.
In the past decades, crop models have stood out in
terms of technological tools used in agriculture to
assist the planning and management of agricultural
activities (Jones et al., 2003, Kassie et al., 2014,
Soler et al. 2007). By using a minimum of input
data for local characterization, they can mimic the
growth and development of plants in a diversity of
conditions. The Decision Support System for
Agrotechnology Transfer, DSSAT (Hoogenboom et
al., 2015, Jones et al., 2003) is a software dedicated
to simulate growth and development of a variety of
crops, including staple crops like soybean (by
means of CROPGRO-Soybean model) and maize
(by means of CERES-Maize model), ones of the
first crops to compose the referred set of crop
models. Both models have a established use
worldwide (Kassie et al., 2014, Mavromatis et al.,
2001, Salmerón and Purcell, 2016) and less
frequent in Brazilian conditions (Amaral et al.,
2015, Dallacort et al., 2006, Soler et al., 2007). In
Brazil, their use has been more concentrated on
model parametrization and management assessment
(Amaral et al., 2015, Dallacort et al., 2006, Pereira
et al., 2010, Rodrigues et al., 2013, Soler et al.,
2007) and lately few studies assessing climate
change impacts on crops (Justino et al., 2013).
In Brazil, Mato Grosso state stands out in the
national farming scenario. In terms of staple crops,
the production of soybean and maize is commonly
performed in a succession system during the
agricultural year (soybean in the first and maize in
the second agricultural season). In the 2017/2018
agricultural year, the state produced 32.3 million
tons of soybean in the first season (starting around
mid-September-October, along with the rainy
period of year) and 26.2 million tons of maize in
the second season (starting around February, right
before the rainy season starts to decline). The total
production of soybean and maize reached 27 and
48% of the country’s total production, respectively
(Conab, 2018). The state, one of the largest in area
in Brazil, can be divided into seven macro regions,
sharing proximity and common characteristic
concerning the farming industry profile. Major
shares of areas of soybean and maize production in
Mato Grosso state are located in its northern
regions, while the southern comes after, but still
representing ~ 30% in state area of production of
both crops (Imea, 2017). The southernmost region
of the state also present economic importance,
including the state capital and relevant national
livestock production, thus the improvement in
production of these staple crops is of interest for the
macro region (Imea, 2017). In that context, crop
models can be considered an interesting approach
to assess crop production in areas with potential for
production improvements.
Considering the previous considerations on the
soybean and maize production importance for Mato
Grosso state and Brazil, as well as the necessity for
using tools that aid in understanding and managing
the environment for better crop production, such as
crop models, this study was carried during an
agricultural year for both crops. The main objective
of this study was to assess a soybean and maize
models behavior related to different maturity of
genetic material in different water regime for a
central-southern region of Mato Grosso state,
Midwestern main region of Brazil. This objective
was accomplished through the adjustment of the
models to local conditions and the evaluation of the
simulations under different management practices,
comprising genetic material, sowing dates and
water availability.
MATERIALS AND METHODS
Site characterization – soil and climate
The present study was carried for the region of
Tangará da Serra (14º39’ S; 57º25’ W), located in
3. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
191
the central-southern portion of Mato Grosso state,
Brazil, at 440 of altitude according to the National
Institute of Meteorology (Inmet, 2018). The climate
of the region, as defined by Köppen, is the tropical
metamorphic wet (Aw), and the average annual
rainfall is of 1830 mm, with higher rainfall rates
from October to March and the dry season
established from April to September (Dallacort et
al., 2011). The soil classification, according to
methodology of Embrapa (2013) is a dystroferric
red Latosol with a very clayey texture. Main soil
properties were measured before the installation of
the experiments and used as input in the crop
model, as follows: clay content = 58%; silt content
= 15.6%; pH (H2) = 5.9; Organic matter content =
35 g dm-3
; Bulk density = 1.28 g cm-3
.
Meteorological data was obtained by means of an
automated station, installed at the University,
equipped with a Data Logger CR1000 (both
Campbell Sci. Inc., Logan, UT) and sensors to
measure/characterize meteorological variables.
Daily data of maximum and minimum
temperatures, solar radiation, wind, humidity and
rainfall were used as input in the crop model
Experimental description and crop management
The experiments were conducted for both soybean
and maize in succession, or “double-cropping”
system, in 1st
and 2nd
agricultural seasons,
respectively at the experimental area of CETEGO-
SR (“Centro Tecnológico de Geoprocessamento e
Sensoriamento Remoto aplicado à produção de
Biodiesel”) located at the State University of Mato
Grosso, university campus of Tangará da Serra.
Soybean experiments were sown in four different
dates for each cultivar: 09/22/2015 (mm/dd/YY),
10/06/15, 10/21/15 and 11/05/15 using three
cultivars: ST 815 (maturity group 8.1), ST 820
(maturity group 8.2) and TMG 1188 (maturity
group 8.8), with plant population of 18, 20 e 14 pl
m-1
, respectively. Soybean harvests were performed
according to the cycle of each cultivar and its
specific sowing date. Maize experiments were also
sown in four different dates: 01/27/16, 02/09/16,
02/25/16 and 03/11/16 using three hybrids: AG
7088 (early maturity), AS 1555 (super early
maturity) and DKB 390 PRO (early maturity), all
with final plant population of 60.000 pl ha-1
. Maize
harvests were performed according to the cycle of
each hybrid and its specific sowing date.
The experimental design used for the cultivation of
both crops was of randomized blocks in a factorial
scheme of 4x3x2, consisting of four sowing dates,
three cultivars and two water management
conditions: irrigated and non-irrigated, with four
replications. Each treatment consisted of six lines of
12 m, with spacing of 0.45 m between rows for
each crop, a total plot size of 32.4 m2
. Crops’
phenology and material evaluations were performed
during their cycles. The irrigated experiments were
used for model calibration while rainfed
experiments were used for model evaluation
(Amaral, 2015), for both assessed crops. Both
water-related treatment’s experiments were
conducted in order to provide general optimum
conditions for crops’ growth and development. In
the irrigated experiments, water management
provided 130% of reference evapotranspiration, as
proposed by Penman-Monteith (Allen and Pruitt,
1986). Rainfed experiments were then used to
assess model’s capabilities of simulation under such
water-limited conditions, which is the usual
management used in most part of maize and
soybean production systems in Mato Grosso state
and Central-Southern Brazil.
Model adjustment and evaluation
The software of Decision Support System for
Agrotechnology Transfer, DSSAT version 4.6.1.0,
(Jones et al., 2003, Hoogenboom et al., 2015) was
used to run crop simulations. Besides the primary
modules contained in the system used for soil,
weather, crop management and their interactions in
simulations, the Soybean (CROPGRO-Soybean)
and maize (CERES-Maize) models were used.
Experimental information characterizing crops’
phenology, development and production were
collected and used to adjust models’ performance
by means of their genetic coefficients,
characterizing the calibration and validation
processes (Hunt and Boote, 1998, Jones et al.,
2003). The coefficients were mainly related to
phenological dates: emergence, flowering,
physiological maturity and to growth and
development parameters: number of grains per
plant, grain filling rate and others. Phenology
parameters were adjusted before production
parameters (Amaral et al., 2015, Kassie et al.,
2014), following that same order for both crops.
Each crop model was adjusted separately for each
genetic material due to their specificities regarding
cycle length and production performance. Genetic
coefficients vary with the crop and their cycle
characteristics, thus experimental information was
inserted in each model according to their
coefficients. In model calibration of both crops,
only the sowing dates that provided the best crop
performance (i.e., higher yields) were used:
10/21/15 and 01/27/16, for soybean and maize,
respectively. Irrigated experiments were used for
adjustment of models, aiming to set it to the best
possible conditions for crop development, while the
rainfed experiments, considering all four sowing
dates, were used for model evaluation. During
model adjustment, genetic coefficients were
changed aiming to minimize the errors associated
with statistical indices, while close as possible to
4. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
192
the observed values. Model performance was then
assessed by means of three goodness-of-fit statistics
for the phenological and production values:
Wilmott’s index of agreement, “d”, (Willmott et al.,
1985), mean absolute error (MAE) and root mean
square error (RMSE) (Eq. 1,2 and 3).
(1)
d = 1 − [
∑ (Pi − Oi)2
N
i=1
∑ (|P′i| + |O′i|)2
N
i=1
]
(2)
MAE = √∑
(Pi − Oi)
n
n
i=1
(3)
RMSE = √
∑ (Pi − Oi)2
N
i=1
N
Where: N = number of observations; Pi = estimated
value; Oi = observed value; M = average of
observed variable; P’i = Pi – M; O’i = Oi - M
The statistical parameters were calculated for each
crop and its genetic material separately. MAE and
RMSE range from zero to infinity, with zero
indicating a perfect match, while d ranges from
zero to one, and one indicates a perfect match.
RESULTS
Climate conditions during the 2015/2016
agricultural year
Of primary importance regarding the evaluation of
the model and plant development in the field,
observed daily meteorological data during the entire
agricultural year of 2015/2016 (both cropping
seasons) can be observed in Figure 1.
For soybean crop cultivation in first season, by
assessing rainfall, maximum and minimum
temperatures, greater variability was found for
rainfall, when compared to temperature, for each
cultivar across the four different sowing dates.
Accumulated rainfall varied > 200 mm for all
cultivar cycles. For the ST815 cultivar, values
regarding accumulated rainfall, average maximum
and minimum temperatures corresponding to each
sowing date (starting at the earliest sowing date),
respectively, were of 685, 824, 884, 1005 mm; 33,
32.6, 32.3, 32°C and 22°C. For the ST 820 cultivar,
these values were of 751, 845, 958, 1008 mm; 32,
32.5, 32.3, 32 and 22°C. For the TMG 1188
cultivar, these values were of 898, 1050, 1133,
1060 mm; 32.6, 32.5, 32, 32 and 22°C (Figure 1).
During maize cultivation in second season, by
assessing rainfall, maximum and minimum
temperatures, greater variability was also found for
rainfall (when compared to temperature) for each
hybrid experiment across the four different sowing
dates. However, accumulated rainfall presented
variability across sowing dates but almost nothing
between hybrids cycles. Accumulated rainfall
varied > 350 mm across different sowing dates. For
the AG7088 hybrid, values regarding accumulated
rainfall, average maximum and minimum
temperatures for each sowing date, respectively,
were of 507, 436, 328, 164 mm; 31.4, 31, 31,
30.6°C and 21, 20.6, 20.4, 20°C. For the AS1555
and DKB 390 hybrids, all values were equal, except
for accumulated rainfall at the first sowing date,
which was of 530 mm.
Adjustment and evaluation of soybean model
According to field observations of crop phenology,
growth and development variables, genetic
coefficients of the soybean model were adjusted for
the crop cultivars.
Figure 1. Variability of observed rainfall and maximum and minimum temperatures during the agricultural year
of 2015/2016 in the region of Tangará da Serra, Mato Grosso state, Brazil. Solid and dashed line indicates
minimum and maximum daily temperatures, respectively.
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193
In Table 1 is possible to observe the genetic
coefficients after model adjustment for the three
genetic materials. Genetic coefficients that were not
adjusted (PODUR, XFRT, SIZLF, SLAVR) were
adopted from the model default as the specific for
their maturity group (see Material and Methods).
Some of the genetic coefficients were used in the
model as the same values as they were collected
from experiments, i.e., without alteration in the
model adjustment process. This occurred with the
coefficients EM-FL, SD-PM, SIZLF and SDPDV.
Variability on the model evaluation coefficients of
different cultivar and maturity cycles, as found in
this present study, was also observed by others
(Rodrigues et al., 2013, Confalone et al., 2016,
Talacuece et al., 2016) when using the CSM-
CROPGRO-Soybean. The model showed
sensibility concerning the occurrence of crop
phenological events (Rodrigues et al., 2013), which
also contribute to the variability of growth and
development due to the different periods in which
the crop is in the field.
Table 1. Soybean model genetic coefficients of three cultivars in the conditions of soil and climate in a region of
Mato Grosso state, Brazil.
Crop cycle Genetic coefficients
Cultivars
ST 815 ST 820 TMG 1188
Growth
CSDL 13.00 13.00 14.00
PPSEN 0.27 0.27 0.34
Vegetative stage
EM-FL 29.40 29.30 29.60
FL-SH 14.90 14.10 22.60
FL-SD 15.50 15.50 29.50
SD-PM 43.18 43.82 48.02
FL-LF 17.96 17.85 28.93
LFMAX 1080.00 1030.00 1030.00
SLAVR 375.00 375.00 375.00
SIZLF 180.00 180.00 180.00
Reproductive stage
XFRT 1.00 1.00 1.00
WTPSD 0.18 0.18 0.20
SFDUR 30.00 26.70 19.60
SDPDV 2.03 2.10 2.28
PODUR 10.00 10.00 10.00
SDPRO 0.40 0.40 0.40
SDLIP 0.20 0.20 0.20
Where CSDL: Critical Short Day Length below which reproductive development progresses with no daylength
effect (for shortday plants) (hour); PPSEN: Slope of the relative response of development to photoperiod with
time (positive for shortday plants) (1/hour); EM-FL: Time between plant emergence and flower appearance (R1)
(photothermal days); FL-SH: Time between first flower and first pod (R3) (photothermal days); FL-SD: Time
between first flower and first seed (R5) (photothermal days); SD-PM: Time between first seed (R5) and
physiological maturity (R7) (photothermal days); FL-LF: Time between first flower (R1) and end of leaf
expansion (photothermal days); LFMAX: Maximum leaf photosynthesis rate at 30 C, 350 vpm CO2, and high
light (mg CO2/m2-s); SLAVR: Specific leaf area of cultivar under standard growth conditions (cm2/g); SIZLF:
Maximum size of full leaf (three leaflets) (cm2); XFRT: Maximum fraction of daily growth that is partitioned to
seed + shell; WTPSD: Maximum weight per seed (g); SFDUR:Seed filling duration for pod cohort at standard
growth conditions (photothermal days); SDPDV: Average seed per pod under standard growing conditions
(#/pod); PODUR: Time required for cultivar to reach final pod load under optimal conditions (photothermal
days). *p.d.: phototermal days.
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Absolute differences between simulated and
observed main events (i.e., days from emergence to
flowering and days from emergence to
physiological maturity) can be observed in Table 2.
Overall, absolute differences were lower for
vegetative crop growth phase than reproductive
phase, as observed by other studies (Mercau et al.,
2007)., and similar among irrigated and rainfed
experiments In the model evaluation, absolute
differences between simulated and observed values
varied between 0 – 15% (5 – 15% for model
adjustment) for DFA and between 7 – 16% (9 -
17% for model adjustment) for DFM. Comparing
periods from emergence to beginning of
reproductive phase, simulated days tended to be
more like the observed ones than when simulating
days to achieve the end of the cycle. Variability of
soybean yields in the evaluation experiments of the
different cultivars and sowing dates, as well as
model performance can be observed in Figure 2.
Table 2. Absolute differences between simulated and observed phenology events in the adjustment and
evaluation processes of the soybean model CROPGRO-Soybean for three cultivars in a region of Mato Grosso
state, Brazil.
Experiment Material
Absolute differences (days)
DFA DFM
Irrigated
ST815 3 10
ST820 2 13
TMG1188 5 25
Rainfed
ST815 5 8
ST820 4 11
TMG1188 0 23
DFA: days from emergence to flowering; DFM: days from emergence to physiological maturity.
Statistical parameters for each genetic material were as following, d: 0.47; 0.52; 0.36; RMSE: 1125; 636; 1313
kg ha-1
; MAE: 970; 538;1170 kg ha-1
for the rainfed experiments and for the cultivars ST815; ST820 and
TMG1188, respectively.
Figure 2. Relationship between observed and simulated grain yields of the soybean model evaluation of the
soybean model for three cultivars in the region of Tangará da Serra, Brazil.
7. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
195
The overall performance of soybean model
evaluation was relatively higher and less variable,
when compared to the field experiments, as
observed in Figure 2. In general, the deviation
found among simulated and observed average grain
yield values varied between 16 – 22% (4 – 19% for
model adjustment). The absolute differences among
simulated and observed average grain yield values
varied between ~ 400 – 950 kg ha-1
, relatively more
variable than the irrigated experiments (500 – 800
kg ha-1
). However, each of the presented results and
panels presented in Figure 2, are related to all
different sowing dates performed for each cultivar,
thus, representing broader climate variability to the
model performance.
Other variables related to crop yields were used to
evaluate model performance, as can be observed in
Table 3.
Adjustment and evaluation of maize model
According to field observations of crop phenology,
growth and development variables, genetic
coefficients of the maize model were adjusted for
the three hybrids. In Table 4 is possible to observe
the genetic coefficients after model adjustment for
the three genetic materials.
All coefficients, except P2, were changed according
to field observations and adjustment process. The
P2 coefficient was not altered, since the day length
during the time of the year the crop was sown was
lower than the critical photoperiod (12.5 hours)
(Soler, 2005). The coefficient P5 was used in the
same way as observed from field experiments. In
terms of crop phenology, in Table 5 is possible to
observe the absolute differences between simulated
and observed main phenology stages of maize.
Table 3. Coefficients of the soybean model evaluation related to crop production variables of the soybean model
CROPGRO-Soybean for three soybean cultivars in a region of Mato Grosso state, Brazil.
Cultivar
Number of grains per pod Grain (unit) weigth Number of grains m-2
MAE RMSE d MAE RMSE d MAE RMSE d
ST815 0.08 0.10 0.41 0.06 0.06 0.22 1616.29 2095.51 0.44
ST820 0.12 0.14 0.43 0.03 0.03 0.32 2465.89 2789.06 0.39
TMG1188 0.11 0.13 0.26 0.03 0.03 0.35 2533.00 2624.28 0.26
The agreement between simulated and observed of the development variables presented in Table 3 was also
considered satisfactory in an overall view. The deviation in number of grains per pod, grain weigth and number
of grains per m2 varied between -1 to 5%, 15 to 30% and ~60% among simulated and observed values,
respectively. Deviation in number of grains per m2 was overall the lowest agreement found among assessed
variables of crop production.
Table 4. Maize model genetic coefficients of three hybrids in the conditions of soil and climate in a region of
Mato Grosso state, Brazil.
Crop cycle Genetic coefficients
Hybrids
AG 7088 AS 1555 DKB 390
Vegetative stage
P1 250.90 250.70 250.30
P2 0.50 0.50 0.50
P5 963.00 961.60 981.30
Reproductive stage
G2 980.00 900.60 700.80
G3 5.85 5.60 6.00
Phylochron PHINT 45.00 50.00 50.00
Where P1: Thermal time from seedling emergence to the end of the juvenile phase (expressed in degree days
above a base temperature of 8 deg.C) during which the plant is not responsive to changes in photoperiod; P2:
Extent to which development (expressed as days) is delayed for each hour increase in photoperiod above the
longest photoperiod at which development proceeds at a maximum rate (which is considered to be 12.5 hours);
P5: Thermal time from silking to physiological maturity (expressed in degree days above a base temperature of 8
deg.C); G2: Maximum possible number of kernels per plant; G3: Kernel filling rate during the linear grain filling
stage and under optimum conditions (mg/day); PHINT: Phylochron interval; the interval in thermal time (degree
days) between successive leaf tip appearances.
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The general absolute differences during the
reproductive stage were more accentuated than on
vegetative stage, as found for soybean. However,
values found for maize suggested a better
agreement between simulated and observed than for
soybean, indicated by lower values of absolute
differences between simulated and observed days in
phenological phases. In the model evaluation,
absolute differences between simulated and
observed values varied around 4% (0% for model
adjustment) for DFA and between 1 – 6% (3 – 7%
for adjustment) for DFM. A relatively low
disagreement between phenological main stages
(beginning of reproductive phase and achievement
of physiological maturity) was also found for maize
in other studies using the same model (Amaral et
al., 2015).
Variability of maize yields in the evaluation
experiments for the different hybrids across sowing
dates, as well as model performance can be
observed in Figure 3.
Table 5. Absolute differences between simulated and observed phenology events in the adjustment and
evaluation processes of the maize model CSM-CERES-Maize for three maize hybrids in a region of Mato
Grosso state, Brazil.
Experiment Material
Absolute differences
DFA DFM
Irrigated
AG7088 0 4
AS1555 0 3
DKB390 0 9
Rainfed
AG7088 2 2
AS1555 2 1
DKB390 2 7
Statistical parameters for each genetic material were as following, d: 0.51; 0.51; 0.65; RMSE: 2127; 2498; 2700
kg ha-1
; MAE: 1789; 2161; 2590 kg ha-1
for the rainfed experiments and for the cultivars AG7088; AS1555 and
DKB390, respectively.
Figure 3. Relationship between observed and simulated grain yields of the maize model CSM-CERES-Maize for
three maize hybrids in a region of Mato Grosso state, Brazil.
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The overall performance of model evaluation for
maize was relatively lower and less variable, when
compared to the field experiments, as observed in
Figure 3. Due to the relatively more accentuated
water deficit found for the latest sowing date and
for the hybrid with longer cycle, the deviation of
simulated from observed values could reach -100%.
In the irrigated conditions this deviation ranged
between 9 – 22%. While in rainfed conditions the
absolute differences among simulated and observed
average grain yield values varied between 1700 –
2500 kg ha-1
, in the irrigated conditions they varied
between 600 – 2000 kg ha-1
. Other variables of crop
development were used to evaluate model
performance through statistical parameters, as can
be observed in Table 6.
The agreement between simulated and observed of
the development variables presented in Table 6 was
also considered satisfactory in an overall view. The
deviation in number of grains per ear, grain weight
and leaf area index varied between -50 to -80%,
>100% and -20 - -30% among simulated and
observed values, respectively. Deviation in grain
weight was the overall lowest agreement found
among the assessed crop production variables.
DISCUSSION
Climate
During the first agricultural season of the year, in
which soybean is commonly cultivated, water
deficit tends to be less harmful to crops than on
second season, since the former is also the rainy
period of the year in Mato Grosso state (Dallacort
et al., 2011) and in most part of the Central-
Southern portion of the country. It was possible to
observe that sowing dates around mid-October to
November provided the highest amounts of rainfall
with low variability of temperatures. However, the
earliest sowing date promoted the lowest amount of
rainfall, since during mid-September and beginning
of October, the rainfall season may not have fully
started yet.
Regarding the rainfed experiments, accumulated
rainfall was considered satisfactory for soybean
development, including scenarios well above the
upper limit (in the range of 450 – 800 mm)
(Oliveira et al., 2011) considered ideal for crop
development; but its distribution may not have been
the optimum for the crop, i.e., considering water
availability during crop’s critical stages. In terms of
maximum temperatures, average values did not
present much variation, staying between 32 - 33°C
during the growing season However some
variability was observed during the overall cycle
(Figure 1) indicating the existence of days with
relatively higher temperatures (e.g., above 33 °C),
which can be harmful for the crop especially when
its occurrence takes place during the plant’s
reproductive stage (Puteh et al., 2013). Average
minimum temperatures were similar for all
experiments and presented low variability during
the season when compared with maximum
temperatures.
During the second agricultural season of the year,
in which maize is commonly cultivated after
soybean harvest, water deficit tends to be a
significant problem in the region (Dallacort et al.,
2011) since rainfall starts to decrease around
March, which is also the occurrence in major share
of Central Brazil. Unlike soybean cropping cycles,
similar (and relatively low) amount of accumulated
rain was found for most of the cropping cycles of
maize, considering their different sowing dates and
genetic material. It was possible to observe the
accentuated decrease of rainfall as maize sowing
was delayed. At the latest sowing dates, only 164 of
rainfall was provided for the rainfed experiments
during the entire cycle, a value well below the
recommended range of water supply for maize, of
approximately 400 – 700 mm, depending on local
conditions (Bergamaschi and Matzenauer, 2014).
Even at the performed earliest sowing dates,
although the values of accumulated rain are
narrowly within the recommended range, if the
distribution is not adequately assisting crop’s most
critical phase, the reproductive stage, especially
during anthesis-silking (Bergamaschi and
Matzenauer, 2014), water deficit becomes a serious
yield limiting factor. In average terms, temperatures
did not present much variation, staying around 30 -
31°C and 20 - 21°C for maximum and minimum
temperatures, respectively, during the entire cycle
among cycle duration of the different genetic
materials. However, it was possible to observe in
Figure 1 a more accentuated variability of
maximum and minimum temperatures starting mid-
late April, related to the change of climate season.
Table 6. Coefficients of the maize model evaluation related to crop production of the maize model CSM-
CERES-Maize for three maize hybrids in a region of Mato Grosso state, Brazil.
Hybrid
Number of grains per ear Grain (unit) weigth Leaf area index
MAE RMSE d MAE RMSE d MAE RMSE d
AG7088 119.02 153.18 0.72 0.19 0.20 0.25 0.93 1.13 0.10
AS1555 115.45 125.85 0.77 0.26 0.26 0.21 1.13 1.26 0.53
DKB390 172.56 216.22 0.65 0.19 0.20 0.35 0.50 0.62 0.36
10. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
198
Although relatively low temperatures (i.e., < 10°C)
are not observed in this region of the country,
minimum temperatures can present a relative drop
in some days, situation not observed during spring
and summer. This magnitude of minimum
temperatures does not present negative impact for
the crop (Bergamaschi and Matzenauer, 2014).
Thus, rainfall was the most likely variable to have
negative influence on the development of the crop.
Soybean experiments and simulations
The overall model performance in rainfed
conditions was considered satisfactory for capturing
local conditions tendencies on crop growth and
development, although some specific variables did
not present a relatively good agreement. Regarding
crop growth and phenology, field experiments are
usually harvested with some remaining grain
moisture (~13%), while the model simulates totally
dry biomass. Thus, considering the date when the
grains were harvested in the field in this study,
about 2 weeks of additional time should be
considered for the grains’ dry-down of all cultivars
and hybrids, which would lead to a better
agreement between observed and simulated days
for physiological maturity. Considering variables
related to crop production, agreement between
soybean simulated and observed yields was overall
satisfactory, as denoted by the statistical
parameters. The greater variability of observed
yield values when compared to the lower variability
of simulated ones should be highlighted. This is not
an uncommon result in crop modeling, since the
model did not capture some conditions that may
occur even in well-managed experiments, and
compromise yields, such as occasional occurrence
of pests, diseases, bedding, among others. Some of
these occurrences, such as pests, diseases and other
pressures can be incorporated in crop models such
as DSSATs’ (Jones et al., 2017), but were beyond
the scope of this study. These results led to the
variable model performance among soybean
genetic materials with different cycle duration, as
other studies have presented (Rodrigues et al.,
2013). Variability in the magnitude of agreement
between simulated and observed is also pointed by
other studies (Talacuece et al., 2016). General
model’s performance was poorer in rainfed
conditions when compared irrigated conditions
(used for model calibration). Variability of
performance indicators have been found in other
studies that used CROPGRO
Maize experiments and simulations
In an overall view, maize model performance
should be analyzed with caution. Accentuated yield
variability was found both for observed and
simulated scenarios, and such variability is
expected for the crop during second season in
rainfed conditions in several parts of Central-
Southern Brazil (Soler et al., 2007). The latter
authors, by using CERES-Maize, performed a
model adjustment with relatively more and more
detailed experimental information, but found
average difference values between simulated and
observed yields > 1000 kg ha-1
, especially in
rainfed conditions. Bao et al. (2017), by using
limited variety trials data, found RMSE values in
the range of 1000 – 3000 kg ha-1
in irrigated
conditions using DSSAT and EPIC crop models for
maize. The variability in the observed yields is
strongly related to seasonal rainfall availability,
demonstrating the impact that water deficit can
provide on maize in second agricultural season.
Although the model was able to capture similar
variability of yields due to climate, the average
values of yield and production parameters of the
simulated experiments were generally lower than
the observed ones. This was also more accentuate
in the latest sowing date, which was in the scenario
with the strongest water deficit and presented the
lowest simulated yields (yields ~1000 kg ha-1
, see
Figure 4), contributing to the worsening of the
performance parameters of the model. Accentuated
sensibility and yield penalization of DSSAT maize
model is also pointed by other studies. Pereira et al.
(2010) tested Ceres Maize performance in Brazil,
considering different hybrid maturity and sowing
dates. The latter authors concluded that the model
has an overall good performance for simulating
phenology and production parameters, but in the
sowing dates that provided the least favorable
climatic conditions in terms of water availability,
model performance was more variable and inferior
than other sowing dates. The disagreement between
observed and simulated may also be related to the
absence of in-depth soil data regarding water
holding parameters. While the model uses a pedo-
transfer function suited for temperate climate-soil
environments, this may have under predicted actual
plant-soil behavior in a tropical environment with
clayey soil type, i.e., high water holding capacity
when in good physical conditions. Concerning the
agreement of crop production variables, presented
in Table 6, in a general manner model performance
on rainfed conditions was intermediate and
variable, as found for soybean. Model performance
also presented variability according to the assessed
crop variable. Number of grains per ear was best
predicted than other variables, which may have
been less penalized by water deficit than the other
two variables.
Overall conclusions on experiments and model
performance
For both crops, agreement between simulated and
observed values of growth and production were
higher for irrigated experiments. Seasonal amount
11. Tropical and Subtropical Agroecosystems, 22 (2019): 189-201 Andrea et al., 2019
199
of rainfall of all experiments may not have been
enough for both crops since model evaluation,
performed in rainfed conditions, revealed a
moderately satisfactory performance, with variable
agreement of results among assessed crop’s
variables. In model performance, agreement was
also generally higher in conditions with relatively
lower water deficit, such as sowing dates that
provided higher amount of rainfall, especially
during first cropping season. An accentuated crop
yield penalization due to water stress by the model
was observed, especially for maize, since its
cultivation period occurs during a period of water
deficit. This water stress context contributed also to
a more accentuated simulated variability, not found
for irrigated conditions. Model adjustment and
evaluation, performed for four different sowing
dates, but only one year, may also have some
impact on relative model performance. By using
only one year, we are imposing a relative poorer
climate variability to the model when compared to
the use of more than one agricultural year
experimental data.
Studies have presented the general good
performance of DSSAT models of staple crops such
as soybean and maize, especially under irrigated
conditions. However, they also pointed for the
necessity of model adjustments regarding
parameters related to soil water availability in
rainfed conditions when in tropical environment
like Brazil, since water deficit significantly affects
its performance efficiency for estimating crop
production (Pereira et al., 2010) especially in no-
tillage systems, in which soil moisture can be
significantly saved (Martorano et al., 2012). As
these findings point to the sensibility of the model
in water-limited conditions for different crops,
results also point to the necessity of further
detailing soil conditions in-depth.
The model also showed the tendency of minimizing
yield variability when compared to observed
occurrences. This was more noticeable for soybean
and could also have been related to this crop’s
greater water availability during its cycle, when
compared to lower water availability and greater
simulated variability of rainfed maize yields at the
assessed region. In general, occurrences that
penalize crop yields, such as occasional pests,
nutrition and soil compaction may have influence
on observed yields lower than simulated ones (as
observed for soybean), even on an experimental
level, where crop management is at an optimum
level.
Despite the variable agreement between observed
and simulated yields, DSSAT is a model with good
overall predicting power for maize and soybean,
indicating to be an important tool for planning the
management of agricultural production systems. In
the case of Brazilian agricultural activity,
specifically for Mato Grosso state, this is of great
importance since the practice of double-cropping
systems (i.e., soybean and maize in succession) has
its profitability heavily dependent on the junction of
the operations and cycle of both crops, so that both
can take advantage of the best possible climatic
conditions of each agricultural year.
Acknowledging that all models already have their
own uncertainties (e.g, parameters and processes
estimations) (Seidel et al., 2018), for future studies
providing best agreement between experimental
and simulated conditions, the following points are
highlighted (i) make use of as much local soil
parameters as possible, avoiding models’
estimations, especially regarding water holding
capacity; (ii) make use of additional experimental
years, in order to add more climate variability on
model adjustment and evaluation and (iii) make use
of greater variety of experimental data (i.e., growth
and development) during crops’ cycle.
CONCLUSIONS
It was demonstrated that CSM-CROPGRO-
Soybean and CSM-CERES-Maize performed
satisfactorily regarding simulated phenology,
development and grain yields of soybean and maize
in a Central-Southern region, of predominantly
tropical environmental characteristics, in Mato
Grosso state, Brazil. The model demonstrated
sensibility to water deficit when simulating yields
and yield components of soybean and maize for
different genetic material across usual local sowing
dates, especially when in the context of accentuated
water deficit. In the rainy (first) agricultural season,
the model predicted overall higher and less variable
yields when compared to observed ones. In the dry
(second) agricultural season, the model predicted
overall variable but lower than observed maize
yields, evidencing the important role of that water
deficit takes place in the model and the importance
of detailing soil water parameters in depth on crop
simulations.
ACKNOWLEDGEMENTS
Maria Carolina da Silva Andrea, PNPD-CAPES
(Post-doctoral scholarship from Coordenação de
Aperfeiçoamento de Pessoal de Nível Superior);
João Danilo Barbieri (CAPES).
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