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This document surveys various techniques for stock market forecasting, including traditional and recent methods using machine learning and artificial intelligence. It discusses techniques like artificial neural networks, hidden Markov models, support vector regression, and deep learning. It also reviews several research papers that have applied methods like ARIMA models, improved Levenberg-Marquardt training for neural networks, feedforward neural networks for the Stock Exchange of Thailand index, improved multiple linear regression in an Android app, support vector regression with windowing operators on the Dhaka Stock Exchange, hidden Markov models compared to neural networks and support vector machines, a hybrid support vector regression and filtering model, and using J48 decision trees and random forests with preprocessing.
This document presents a literature review and proposed framework for stock market prediction. It discusses using long short-term memory (LSTM), support vector regression (SVR), linear regression, and sentiment analysis models individually and in a hybrid ensemble model. The models are trained on historical stock price and sentiment data to predict future stock trends. Results show the hybrid model achieves higher prediction accuracy than individual models. Visualizations of predicted versus actual prices are generated to evaluate model performance. The proposed framework aims to help investors make more informed buy, sell, and hold decisions.
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This document discusses various machine learning algorithms that have been used for stock market prediction, including CNN, ARIMA, LSTM, random forests, and support vector machines. It provides a literature review of past research applying these algorithms to predict stock prices using historical data. The document concludes that LSTM and ARIMA models generally provide the best predictions based on evaluating various algorithms on large datasets of historical stock market data.
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This document discusses using machine learning techniques to predict stock market prices. It proposes building a machine learning model that uses historical stock data to predict future stock prices. The model would go through preprocessing, processing, and regression analysis of the dataset to make predictions. Predicting stock market movements accurately is challenging, but this model aims to generate results using machine learning and deep learning algorithms on the dataset to help investors make trading decisions.
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This document summarizes various time series forecasting techniques discussed in literature, including ARIMA, Prophet, and LSTM models. It reviews their applications in weather forecasting, analyzing COVID-19 data, real estate prices, bitcoin values, and more. The key techniques are compared based on their forecasting accuracy on different datasets. ARIMA is generally good at capturing trends but requires stationary data, while Prophet and LSTM can handle non-stationary data and seasonal effects better. Prophet achieved 91% accuracy on a COVID dataset, outperforming ARIMA. LSTM achieved 76% accuracy for rainfall forecasting. The document concludes different approaches are still being developed to address the unique challenges of weather data forecasting.
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Price prediction has become a major task due to the explosive increase in the number of investors. The price prediction task has various types such as shares, stocks, foreign exchange instruments, and cryptocurrency. The literature includes several models for price prediction that can be classified based on the utilized methods into three main classes, namely, deep learning, machine learning, and statistical. In this context, we proposed several models’ architectures for price prediction. Among them, we proposed a hybrid one that incorporates long short-term memory (LSTM) and Convolution neural network (CNN) architectures, we called it CNN-LSTM. The proposed CNNLSTM model makes use of the characteristics of the convolution layers for extracting useful features embedded in the time series data and the ability of LSTM architecture to learn long-term dependencies. The proposed architectures are thoroughly evaluated and compared against state-of-the-art methods on three different types of financial product datasets for stocks, foreign exchange instruments, and cryptocurrency. The obtained results show that the proposed CNN-LSTM has the best performance on average for the utilized evaluation metrics. Moreover, the proposed deep learning models were dominant in comparison to the state-of-the-art methods, machine learning models, and statistical models.
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This document surveys various techniques for stock market forecasting, including traditional and recent methods using machine learning and artificial intelligence. It discusses techniques like artificial neural networks, hidden Markov models, support vector regression, and deep learning. It also reviews several research papers that have applied methods like ARIMA models, improved Levenberg-Marquardt training for neural networks, feedforward neural networks for the Stock Exchange of Thailand index, improved multiple linear regression in an Android app, support vector regression with windowing operators on the Dhaka Stock Exchange, hidden Markov models compared to neural networks and support vector machines, a hybrid support vector regression and filtering model, and using J48 decision trees and random forests with preprocessing.
This document presents a literature review and proposed framework for stock market prediction. It discusses using long short-term memory (LSTM), support vector regression (SVR), linear regression, and sentiment analysis models individually and in a hybrid ensemble model. The models are trained on historical stock price and sentiment data to predict future stock trends. Results show the hybrid model achieves higher prediction accuracy than individual models. Visualizations of predicted versus actual prices are generated to evaluate model performance. The proposed framework aims to help investors make more informed buy, sell, and hold decisions.
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This document discusses various machine learning algorithms that have been used for stock market prediction, including CNN, ARIMA, LSTM, random forests, and support vector machines. It provides a literature review of past research applying these algorithms to predict stock prices using historical data. The document concludes that LSTM and ARIMA models generally provide the best predictions based on evaluating various algorithms on large datasets of historical stock market data.
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This document discusses using machine learning techniques to predict stock market prices. It proposes building a machine learning model that uses historical stock data to predict future stock prices. The model would go through preprocessing, processing, and regression analysis of the dataset to make predictions. Predicting stock market movements accurately is challenging, but this model aims to generate results using machine learning and deep learning algorithms on the dataset to help investors make trading decisions.
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This document discusses using a Long Short-Term Memory (LSTM) model to predict stock market prices. It begins by introducing the problem of predicting stock markets and how machine learning techniques like LSTM can help. It then discusses collecting stock price data and designing an LSTM model in Python using Keras and other libraries. The model is trained on historical stock price data to identify patterns and predict future prices. The document suggests LSTM models are well-suited for this due to their ability to use past data in predictions. It evaluates the model's predictions against actual prices to determine accuracy.
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Stock Price Prediction Using Sentiment Analysis and Historic Data of StockIRJET Journal
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This document discusses using machine learning techniques to predict stock market prices. Specifically, it evaluates using support vector machines, random forests, and regression models. It finds that support vector regression with an RBF kernel performed best compared to other models at accurately predicting stock prices based on historical data. The paper also reviews several related works applying machine learning methods like neural networks and support vector machines to financial time series data for stock prediction.
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The document discusses predicting stock market prices using machine learning algorithms. It reviews past research applying algorithms like KNN, neural networks, ARIMA and random forest to stock price prediction. The paper aims to compare the performance of supervised learning algorithms like logistic regression, KNN and random forest on stock market datasets to determine the most accurate for predicting future prices. It reviews literature on the topic and discusses the methodology and algorithms that will be used to make predictions on datasets from five companies.
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This document discusses using machine learning algorithms like LSTM and linear regression to predict stock market prices. It proposes using techniques like stacked LSTM on historical stock data to make predictions. The document outlines collecting data, preprocessing it, training models on training data and evaluating them on test data. It suggests comparing the accuracy of linear regression, stacked LSTM and other models to determine the most accurate for predicting 30 days of future stock prices. The goal is to reduce investment risk through more accurate machine-learned stock predictions.
Turnover Prediction of Shares Using Data Mining Techniques : A Case Study csandit
Predicting the Total turnover of a company in the ever fluctuating Stock market has always proved to be a precarious situation and most certainly a difficult task at hand. Data mining is a
well-known sphere of Computer Science that aims at extracting meaningful information from large databases. However, despite the existence of many algorithms for the purpose of
predicting future trends, their efficiency is questionable as their predictions suffer from a high
error rate. The objective of this paper is to investigate various existing classification algorithms
to predict the turnover of different companies based on the Stock price. The authorized datasetfor predicting the turnover was taken from www.bsc.com and included the stock market valuesof various companies over the past 10 years. The algorithms were investigated using the ‘R’
tool. The feature selection algorithm, Boruta, was run on this dataset to extract the important
and influential features for classification. With these extracted features, the Total Turnover of
the company was predicted using various algorithms like Random Forest, Decision Tree, SVM and Multinomial Regression. This prediction mechanism was implemented to predict the turnover of a company on an everyday basis and hence could help navigate through dubious
stock markets trades. An accuracy rate of 95% was achieved by the above prediction process.
Moreover, the importance of the stock market attributes was established as well.
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Stock Market Prediction Using Deep LearningIRJET Journal
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Performance Comparisons among Machine Learning Algorithms based on the Stock ...IRJET Journal
This document compares the performance of various machine learning algorithms for predicting stock market performance based on stock market data and news data. It applies algorithms like linear regression, random forest, decision tree, K-nearest neighbors, logistic regression, linear discriminant analysis, XGBoost classifier, and Gaussian naive Bayes to datasets containing stock market values, news articles, and Reddit posts. It evaluates the algorithms based on metrics like accuracy, recall, precision and F1 score. The results suggest that linear discriminant analysis achieved the best performance at predicting stock market values based on the given datasets and evaluation metrics.
The International Journal of Engineering and Science (IJES)theijes
The International Journal of Engineering & Science is aimed at providing a platform for researchers, engineers, scientists, or educators to publish their original research results, to exchange new ideas, to disseminate information in innovative designs, engineering experiences and technological skills. It is also the Journal's objective to promote engineering and technology education. All papers submitted to the Journal will be blind peer-reviewed. Only original articles will be published.
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The document discusses using three machine learning algorithms - K-nearest neighbors (KNN), rule-based classification, and deep learning - to predict if the NASDAQ stock market will increase in a given month. KNN achieved an accuracy of 71.28%, rule-based classification achieved 74.49% accuracy, and deep learning achieved the highest accuracy of 76.03%. Therefore, the document concludes deep learning is best suited for this stock market prediction task.
This document provides details about a project aimed at predicting stock market values using Hidden Markov Models. It includes an introduction describing the problem of stock market prediction and the suitability of HMMs for tackling the time-dependent nature of the problem. The document outlines the approach taken, which involves using the daily fractional change in stock value and fractional deviation of intra-day high and low values to train separate HMMs for different stocks. It then discusses testing the models on various stocks and comparing performance to other existing methods. Tables and figures are provided to illustrate the experimental setup, results, and risk analysis.
This document describes using a Long Short-Term Memory (LSTM) machine learning algorithm to predict future stock prices. It begins with an introduction to stock price prediction and the challenges involved. It then discusses the proposed system, which uses LSTM to more accurately predict stock prices compared to existing methods like sliding window algorithms. The system architecture involves downloading stock price data, preprocessing it, training an LSTM model, and visualizing the predictions. LSTM is well-suited for this task since it can learn from experiences with long time lags between important events. The document concludes the LSTM approach helps investors and analysts by providing a precise forecasting model for stock market prediction.
STOCK PRICE PREDICTION AND RECOMMENDATION USINGMACHINE LEARNING TECHNIQUES AN...IRJET Journal
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IRJET- Data Visualization and Stock Market and PredictionIRJET Journal
This document discusses using machine learning techniques like LSTM neural networks to predict stock market prices. It summarizes the following:
1) Traditional stock prediction methods like fundamental and statistical analysis have limitations, while machine learning approaches like LSTM networks can better capture long-term temporal dependencies in stock price data.
2) The document outlines collecting stock price history, preprocessing the data, and using an LSTM model in Keras to predict future stock prices based on historical closing prices and trading volumes.
3) The model was able to accurately predict stock prices on unseen Facebook data, demonstrating the robustness of the machine learning approach over traditional methods for this challenging problem.
1) The document analyzes trends in the stock market using machine learning techniques like XGBoost, random forests and regression.
2) It collects stock market data using Python APIs and performs feature engineering and sentiment analysis on tweets to predict stock price patterns.
3) It finds that XGBoost achieves good accuracy without overfitting due to feature engineering and evaluation of parameter settings like term lengths.
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This document discusses using machine learning and robotic process automation (RPA) to predict house prices. Specifically, it proposes using the CatBoost algorithm and RPA to extract real-time data for house price prediction. RPA involves using software robots to automate data extraction, while CatBoost will be used to predict prices based on the extracted dataset. The system aims to reduce problems faced by customers by providing more accurate price predictions compared to relying solely on real estate agents. It will extract data using RPA, clean the data, then apply machine learning algorithms like CatBoost to predict house prices based on various attributes.
This document discusses using machine learning techniques to predict stock market prices. It begins with an introduction to existing stock prediction methods like fundamental and technical analysis. The proposed system would use machine learning models to analyze historical stock price data and sentiment analysis of news articles to predict future stock prices, volatility, and market trends. The methodology section outlines different models, including using only historical prices, classifying sentiment of news, and aspect-based sentiment analysis. Features like stock price volatility, momentum, and index momentum would be used. The conclusion states that accurately predicting the complex stock market requires considering various factors.
The Analysis of Share Market using Random Forest & SVMIRJET Journal
The document discusses using machine learning algorithms like random forest and support vector machines (SVM) to predict stock market movement and values. Specifically, it aims to develop a more accurate technique for forecasting stock behavior by applying these algorithms to preprocessed historical stock data from Yahoo Finance. Random forest and SVM will be used to generate precise predictions. The goal is to build an effective machine learning model that can provide real-world solutions for issues faced by stockholders and market organizations.
ELASTIC PROPERTY EVALUATION OF FIBRE REINFORCED GEOPOLYMER COMPOSITE USING SU...IRJET Journal
This document discusses using machine learning algorithms like random forest and support vector machines to predict stock market prices more accurately. It analyzes using these algorithms on historical stock price data from Yahoo Finance to train models. Specifically, it trains random forest and SVM models on 80% of the data and tests them on the remaining 20% to predict future stock prices. The goal is to develop a more effective technique for stock price forecasting using artificial intelligence methods.
IRJET - Stock Market Prediction using Machine Learning AlgorithmIRJET Journal
This document discusses using machine learning algorithms to predict stock market prices. Specifically, it analyzes using Support Vector Machine (SVM) and linear regression (LR) algorithms to predict stock prices. It finds that linear regression provides more accurate predictions than SVM when tested on the same stock data. The methodology trains models on historical stock data using these algorithms and predicts future prices, achieving up to 98% accuracy when testing linear regression predictions on Google stock prices. It concludes that input data and machine learning techniques can effectively predict stock market movements.
TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...IRJET Journal
1) The document discusses the Sungal Tunnel project in Jammu and Kashmir, India, which is being constructed using the New Austrian Tunneling Method (NATM).
2) NATM involves continuous monitoring during construction to adapt to changing ground conditions, and makes extensive use of shotcrete for temporary tunnel support.
3) The methodology section outlines the systematic geotechnical design process for tunnels according to Austrian guidelines, and describes the various steps of NATM tunnel construction including initial and secondary tunnel support.
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTUREIRJET Journal
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Turnover Prediction of Shares Using Data Mining Techniques : A Case Study csandit
Predicting the Total turnover of a company in the ever fluctuating Stock market has always proved to be a precarious situation and most certainly a difficult task at hand. Data mining is a
well-known sphere of Computer Science that aims at extracting meaningful information from large databases. However, despite the existence of many algorithms for the purpose of
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error rate. The objective of this paper is to investigate various existing classification algorithms
to predict the turnover of different companies based on the Stock price. The authorized datasetfor predicting the turnover was taken from www.bsc.com and included the stock market valuesof various companies over the past 10 years. The algorithms were investigated using the ‘R’
tool. The feature selection algorithm, Boruta, was run on this dataset to extract the important
and influential features for classification. With these extracted features, the Total Turnover of
the company was predicted using various algorithms like Random Forest, Decision Tree, SVM and Multinomial Regression. This prediction mechanism was implemented to predict the turnover of a company on an everyday basis and hence could help navigate through dubious
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This document discusses using machine learning algorithms to predict stock market prices. Specifically, it analyzes using Support Vector Machine (SVM) and linear regression (LR) algorithms to predict stock prices. It finds that linear regression provides more accurate predictions than SVM when tested on the same stock data. The methodology trains models on historical stock data using these algorithms and predicts future prices, achieving up to 98% accuracy when testing linear regression predictions on Google stock prices. It concludes that input data and machine learning techniques can effectively predict stock market movements.
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TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...IRJET Journal
1) The document discusses the Sungal Tunnel project in Jammu and Kashmir, India, which is being constructed using the New Austrian Tunneling Method (NATM).
2) NATM involves continuous monitoring during construction to adapt to changing ground conditions, and makes extensive use of shotcrete for temporary tunnel support.
3) The methodology section outlines the systematic geotechnical design process for tunnels according to Austrian guidelines, and describes the various steps of NATM tunnel construction including initial and secondary tunnel support.
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTUREIRJET Journal
This study examines the effect of response reduction factors (R factors) on reinforced concrete (RC) framed structures through nonlinear dynamic analysis. Three RC frame models with varying heights (4, 8, and 12 stories) were analyzed in ETABS software under different R factors ranging from 1 to 5. The results showed that displacement increased as the R factor decreased, indicating less linear behavior for lower R factors. Drift also decreased proportionally with increasing R factors from 1 to 5. Shear forces in the frames decreased with higher R factors. In general, R factors of 3 to 5 produced more satisfactory performance with less displacement and drift. The displacement variations between different building heights were consistent at different R factors. This study evaluated how R factors influence
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...IRJET Journal
This study compares the use of Stark Steel and TMT Steel as reinforcement materials in a two-way reinforced concrete slab. Mechanical testing is conducted to determine the tensile strength, yield strength, and other properties of each material. A two-way slab design adhering to codes and standards is executed with both materials. The performance is analyzed in terms of deflection, stability under loads, and displacement. Cost analyses accounting for material, durability, maintenance, and life cycle costs are also conducted. The findings provide insights into the economic and structural implications of each material for reinforcement selection and recommendations on the most suitable material based on the analysis.
Effect of Camber and Angles of Attack on Airfoil CharacteristicsIRJET Journal
This document discusses a study analyzing the effect of camber, position of camber, and angle of attack on the aerodynamic characteristics of airfoils. Sixteen modified asymmetric NACA airfoils were analyzed using computational fluid dynamics (CFD) by varying the camber, camber position, and angle of attack. The results showed the relationship between these parameters and the lift coefficient, drag coefficient, and lift to drag ratio. This provides insight into how changes in airfoil geometry impact aerodynamic performance.
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...IRJET Journal
This document reviews the progress and challenges of aluminum-based metal matrix composites (MMCs), focusing on their fabrication processes and applications. It discusses how various aluminum MMCs have been developed using reinforcements like borides, carbides, oxides, and nitrides to improve mechanical and wear properties. These composites have gained prominence for their lightweight, high-strength and corrosion resistance properties. The document also examines recent advancements in fabrication techniques for aluminum MMCs and their growing applications in industries such as aerospace and automotive. However, it notes that challenges remain around issues like improper mixing of reinforcements and reducing reinforcement agglomeration.
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...IRJET Journal
This document discusses research on using graph neural networks (GNNs) for dynamic optimization of public transportation networks in real-time. GNNs represent transit networks as graphs with nodes as stops and edges as connections. The GNN model aims to optimize networks using real-time data on vehicle locations, arrival times, and passenger loads. This helps increase mobility, decrease traffic, and improve efficiency. The system continuously trains and infers to adapt to changing transit conditions, providing decision support tools. While research has focused on performance, more work is needed on security, socio-economic impacts, contextual generalization of models, continuous learning approaches, and effective real-time visualization.
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...IRJET Journal
This document summarizes a research project that aims to compare the structural performance of conventional slab and grid slab systems in multi-story buildings using ETABS software. The study will analyze both symmetric and asymmetric building models under various loading conditions. Parameters like deflections, moments, shears, and stresses will be examined to evaluate the structural effectiveness of each slab type. The results will provide insights into the comparative behavior of conventional and grid slabs to help engineers and architects select appropriate slab systems based on building layouts and design requirements.
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...IRJET Journal
This document summarizes and reviews a research paper on the seismic response of reinforced concrete (RC) structures with plan and vertical irregularities, with and without infill walls. It discusses how infill walls can improve or reduce the seismic performance of RC buildings, depending on factors like wall layout, height distribution, connection to the frame, and relative stiffness of walls and frames. The reviewed research paper analyzes the behavior of infill walls, effects of vertical irregularities, and seismic performance of high-rise structures under linear static and dynamic analysis. It studies response characteristics like story drift, deflection and shear. The document also provides literature on similar research investigating the effects of infill walls, soft stories, plan irregularities, and different
This document provides a review of machine learning techniques used in Advanced Driver Assistance Systems (ADAS). It begins with an abstract that summarizes key applications of machine learning in ADAS, including object detection, recognition, and decision-making. The introduction discusses the integration of machine learning in ADAS and how it is transforming vehicle safety. The literature review then examines several research papers on topics like lightweight deep learning models for object detection and lane detection models using image processing. It concludes by discussing challenges and opportunities in the field, such as improving algorithm robustness and adaptability.
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...IRJET Journal
The document analyzes temperature and precipitation trends in Asosa District, Benishangul Gumuz Region, Ethiopia from 1993 to 2022 based on data from the local meteorological station. The results show:
1) The average maximum and minimum annual temperatures have generally decreased over time, with maximum temperatures decreasing by a factor of -0.0341 and minimum by -0.0152.
2) Mann-Kendall tests found the decreasing temperature trends to be statistically significant for annual maximum temperatures but not for annual minimum temperatures.
3) Annual precipitation in Asosa District showed a statistically significant increasing trend.
The conclusions recommend development planners account for rising summer precipitation and declining temperatures in
P.E.B. Framed Structure Design and Analysis Using STAAD ProIRJET Journal
This document discusses the design and analysis of pre-engineered building (PEB) framed structures using STAAD Pro software. It provides an overview of PEBs, including that they are designed off-site with building trusses and beams produced in a factory. STAAD Pro is identified as a key tool for modeling, analyzing, and designing PEBs to ensure their performance and safety under various load scenarios. The document outlines modeling structural parts in STAAD Pro, evaluating structural reactions, assigning loads, and following international design codes and standards. In summary, STAAD Pro is used to design and analyze PEB framed structures to ensure safety and code compliance.
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...IRJET Journal
This document provides a review of research on innovative fiber integration methods for reinforcing concrete structures. It discusses studies that have explored using carbon fiber reinforced polymer (CFRP) composites with recycled plastic aggregates to develop more sustainable strengthening techniques. It also examines using ultra-high performance fiber reinforced concrete to improve shear strength in beams. Additional topics covered include the dynamic responses of FRP-strengthened beams under static and impact loads, and the performance of preloaded CFRP-strengthened fiber reinforced concrete beams. The review highlights the potential of fiber composites to enable more sustainable and resilient construction practices.
Survey Paper on Cloud-Based Secured Healthcare SystemIRJET Journal
This document summarizes a survey on securing patient healthcare data in cloud-based systems. It discusses using technologies like facial recognition, smart cards, and cloud computing combined with strong encryption to securely store patient data. The survey found that healthcare professionals believe digitizing patient records and storing them in a centralized cloud system would improve access during emergencies and enable more efficient care compared to paper-based systems. However, ensuring privacy and security of patient data is paramount as healthcare incorporates these digital technologies.
Review on studies and research on widening of existing concrete bridgesIRJET Journal
This document summarizes several studies that have been conducted on widening existing concrete bridges. It describes a study from China that examined load distribution factors for a bridge widened with composite steel-concrete girders. It also outlines challenges and solutions for widening a bridge in the UAE, including replacing bearings and stitching the new and existing structures. Additionally, it discusses two bridge widening projects in New Zealand that involved adding precast beams and stitching to connect structures. Finally, safety measures and challenges for strengthening a historic bridge in Switzerland under live traffic are presented.
React based fullstack edtech web applicationIRJET Journal
The document describes the architecture of an educational technology web application built using the MERN stack. It discusses the frontend developed with ReactJS, backend with NodeJS and ExpressJS, and MongoDB database. The frontend provides dynamic user interfaces, while the backend offers APIs for authentication, course management, and other functions. MongoDB enables flexible data storage. The architecture aims to provide a scalable, responsive platform for online learning.
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...IRJET Journal
This paper proposes integrating Internet of Things (IoT) and blockchain technologies to help implement objectives of India's National Education Policy (NEP) in the education sector. The paper discusses how blockchain could be used for secure student data management, credential verification, and decentralized learning platforms. IoT devices could create smart classrooms, automate attendance tracking, and enable real-time monitoring. Blockchain would ensure integrity of exam processes and resource allocation, while smart contracts automate agreements. The paper argues this integration has potential to revolutionize education by making it more secure, transparent and efficient, in alignment with NEP goals. However, challenges like infrastructure needs, data privacy, and collaborative efforts are also discussed.
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.IRJET Journal
This document provides a review of research on the performance of coconut fibre reinforced concrete. It summarizes several studies that tested different volume fractions and lengths of coconut fibres in concrete mixtures with varying compressive strengths. The studies found that coconut fibre improved properties like tensile strength, toughness, crack resistance, and spalling resistance compared to plain concrete. Volume fractions of 2-5% and fibre lengths of 20-50mm produced the best results. The document concludes that using a 4-5% volume fraction of coconut fibres 30-40mm in length with M30-M60 grade concrete would provide benefits based on previous research.
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...IRJET Journal
The document discusses optimizing business management processes through automation using Microsoft Power Automate and artificial intelligence. It provides an overview of Power Automate's key components and features for automating workflows across various apps and services. The document then presents several scenarios applying automation solutions to common business processes like data entry, monitoring, HR, finance, customer support, and more. It estimates the potential time and cost savings from implementing automation for each scenario. Finally, the conclusion emphasizes the transformative impact of AI and automation tools on business processes and the need for ongoing optimization.
Multistoried and Multi Bay Steel Building Frame by using Seismic DesignIRJET Journal
The document describes the seismic design of a G+5 steel building frame located in Roorkee, India according to Indian codes IS 1893-2002 and IS 800. The frame was analyzed using the equivalent static load method and response spectrum method, and its response in terms of displacements and shear forces were compared. Based on the analysis, the frame was designed as a seismic-resistant steel structure according to IS 800:2007. The software STAAD Pro was used for the analysis and design.
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...IRJET Journal
This research paper explores using plastic waste as a sustainable and cost-effective construction material. The study focuses on manufacturing pavers and bricks using recycled plastic and partially replacing concrete with plastic alternatives. Initial results found that pavers and bricks made from recycled plastic demonstrate comparable strength and durability to traditional materials while providing environmental and cost benefits. Additionally, preliminary research indicates incorporating plastic waste as a partial concrete replacement significantly reduces construction costs without compromising structural integrity. The outcomes suggest adopting plastic waste in construction can address plastic pollution while optimizing costs, promoting more sustainable building practices.
Literature Review Basics and Understanding Reference Management.pptxDr Ramhari Poudyal
Three-day training on academic research focuses on analytical tools at United Technical College, supported by the University Grant Commission, Nepal. 24-26 May 2024
International Conference on NLP, Artificial Intelligence, Machine Learning an...gerogepatton
International Conference on NLP, Artificial Intelligence, Machine Learning and Applications (NLAIM 2024) offers a premier global platform for exchanging insights and findings in the theory, methodology, and applications of NLP, Artificial Intelligence, Machine Learning, and their applications. The conference seeks substantial contributions across all key domains of NLP, Artificial Intelligence, Machine Learning, and their practical applications, aiming to foster both theoretical advancements and real-world implementations. With a focus on facilitating collaboration between researchers and practitioners from academia and industry, the conference serves as a nexus for sharing the latest developments in the field.
Optimizing Gradle Builds - Gradle DPE Tour Berlin 2024Sinan KOZAK
Sinan from the Delivery Hero mobile infrastructure engineering team shares a deep dive into performance acceleration with Gradle build cache optimizations. Sinan shares their journey into solving complex build-cache problems that affect Gradle builds. By understanding the challenges and solutions found in our journey, we aim to demonstrate the possibilities for faster builds. The case study reveals how overlapping outputs and cache misconfigurations led to significant increases in build times, especially as the project scaled up with numerous modules using Paparazzi tests. The journey from diagnosing to defeating cache issues offers invaluable lessons on maintaining cache integrity without sacrificing functionality.
Harnessing WebAssembly for Real-time Stateless Streaming PipelinesChristina Lin
Traditionally, dealing with real-time data pipelines has involved significant overhead, even for straightforward tasks like data transformation or masking. However, in this talk, we’ll venture into the dynamic realm of WebAssembly (WASM) and discover how it can revolutionize the creation of stateless streaming pipelines within a Kafka (Redpanda) broker. These pipelines are adept at managing low-latency, high-data-volume scenarios.
Comparative analysis between traditional aquaponics and reconstructed aquapon...bijceesjournal
The aquaponic system of planting is a method that does not require soil usage. It is a method that only needs water, fish, lava rocks (a substitute for soil), and plants. Aquaponic systems are sustainable and environmentally friendly. Its use not only helps to plant in small spaces but also helps reduce artificial chemical use and minimizes excess water use, as aquaponics consumes 90% less water than soil-based gardening. The study applied a descriptive and experimental design to assess and compare conventional and reconstructed aquaponic methods for reproducing tomatoes. The researchers created an observation checklist to determine the significant factors of the study. The study aims to determine the significant difference between traditional aquaponics and reconstructed aquaponics systems propagating tomatoes in terms of height, weight, girth, and number of fruits. The reconstructed aquaponics system’s higher growth yield results in a much more nourished crop than the traditional aquaponics system. It is superior in its number of fruits, height, weight, and girth measurement. Moreover, the reconstructed aquaponics system is proven to eliminate all the hindrances present in the traditional aquaponics system, which are overcrowding of fish, algae growth, pest problems, contaminated water, and dead fish.
ACEP Magazine edition 4th launched on 05.06.2024Rahul
This document provides information about the third edition of the magazine "Sthapatya" published by the Association of Civil Engineers (Practicing) Aurangabad. It includes messages from current and past presidents of ACEP, memories and photos from past ACEP events, information on life time achievement awards given by ACEP, and a technical article on concrete maintenance, repairs and strengthening. The document highlights activities of ACEP and provides a technical educational article for members.
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...IJECEIAES
Medical image analysis has witnessed significant advancements with deep learning techniques. In the domain of brain tumor segmentation, the ability to
precisely delineate tumor boundaries from magnetic resonance imaging (MRI)
scans holds profound implications for diagnosis. This study presents an ensemble convolutional neural network (CNN) with transfer learning, integrating
the state-of-the-art Deeplabv3+ architecture with the ResNet18 backbone. The
model is rigorously trained and evaluated, exhibiting remarkable performance
metrics, including an impressive global accuracy of 99.286%, a high-class accuracy of 82.191%, a mean intersection over union (IoU) of 79.900%, a weighted
IoU of 98.620%, and a Boundary F1 (BF) score of 83.303%. Notably, a detailed comparative analysis with existing methods showcases the superiority of
our proposed model. These findings underscore the model’s competence in precise brain tumor localization, underscoring its potential to revolutionize medical
image analysis and enhance healthcare outcomes. This research paves the way
for future exploration and optimization of advanced CNN models in medical
imaging, emphasizing addressing false positives and resource efficiency.
Advanced control scheme of doubly fed induction generator for wind turbine us...IJECEIAES
This paper describes a speed control device for generating electrical energy on an electricity network based on the doubly fed induction generator (DFIG) used for wind power conversion systems. At first, a double-fed induction generator model was constructed. A control law is formulated to govern the flow of energy between the stator of a DFIG and the energy network using three types of controllers: proportional integral (PI), sliding mode controller (SMC) and second order sliding mode controller (SOSMC). Their different results in terms of power reference tracking, reaction to unexpected speed fluctuations, sensitivity to perturbations, and resilience against machine parameter alterations are compared. MATLAB/Simulink was used to conduct the simulations for the preceding study. Multiple simulations have shown very satisfying results, and the investigations demonstrate the efficacy and power-enhancing capabilities of the suggested control system.
Use PyCharm for remote debugging of WSL on a Windo cf5c162d672e4e58b4dde5d797...shadow0702a
This document serves as a comprehensive step-by-step guide on how to effectively use PyCharm for remote debugging of the Windows Subsystem for Linux (WSL) on a local Windows machine. It meticulously outlines several critical steps in the process, starting with the crucial task of enabling permissions, followed by the installation and configuration of WSL.
The guide then proceeds to explain how to set up the SSH service within the WSL environment, an integral part of the process. Alongside this, it also provides detailed instructions on how to modify the inbound rules of the Windows firewall to facilitate the process, ensuring that there are no connectivity issues that could potentially hinder the debugging process.
The document further emphasizes on the importance of checking the connection between the Windows and WSL environments, providing instructions on how to ensure that the connection is optimal and ready for remote debugging.
It also offers an in-depth guide on how to configure the WSL interpreter and files within the PyCharm environment. This is essential for ensuring that the debugging process is set up correctly and that the program can be run effectively within the WSL terminal.
Additionally, the document provides guidance on how to set up breakpoints for debugging, a fundamental aspect of the debugging process which allows the developer to stop the execution of their code at certain points and inspect their program at those stages.
Finally, the document concludes by providing a link to a reference blog. This blog offers additional information and guidance on configuring the remote Python interpreter in PyCharm, providing the reader with a well-rounded understanding of the process.