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The majority of India’s architectural heritage and sites are unprotected. They constitute a unique civilisational legacy..This unprotected heritage embodies values of enduring relevance to contemporary Indian society.The objective of conservation is to maintain the significance of the architectural heritage or site.
Significance is constituted in both the tangible and intangible forms. The tangible heritage includes historic buildings of all periods,their setting in the historic precincts of cities and their
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DISSERTATION- TRADITIONAL CONSTRUCTION MATERIALS OF RAJASTHANDipesh Jain
DISSERTATION
TRADITIONAL MATERIAL IN RAJASTHAN
INFORMATION
ACKNOLEDGEMENT
ABSTRACT
INTRODUCTION
BACKGROUND
NEED FOR STUDY
AIM
OBJECTIVE
SCOPE
LIMITATION
BOOK CASE STUDY
LIVE CASE STUDY
LITERATURE REVIEW
BOOK REVIEW
REFERENCE
CONCLUSION
DESIGN
DATA COLLECTION
ANALYSIS
RESEARCH DESIGN
FIGURES
TABLES
NEED FOR STUDY
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DISSERTATION- TRADITIONAL CONSTRUCTION MATERIALS OF RAJASTHANDipesh Jain
DISSERTATION
TRADITIONAL MATERIAL IN RAJASTHAN
INFORMATION
ACKNOLEDGEMENT
ABSTRACT
INTRODUCTION
BACKGROUND
NEED FOR STUDY
AIM
OBJECTIVE
SCOPE
LIMITATION
BOOK CASE STUDY
LIVE CASE STUDY
LITERATURE REVIEW
BOOK REVIEW
REFERENCE
CONCLUSION
DESIGN
DATA COLLECTION
ANALYSIS
RESEARCH DESIGN
FIGURES
TABLES
NEED FOR STUDY
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Dsp thrissur ch5
1. << CHAPTER 4 < CONTENTS >
District Spatial Plan - Thrissur LAND USE 71
Chapter –5
LAND USE
Use of a percent of land is indicated by the pre- analysis limited to that extent.
dominant activity be it agriculture, residential, com-
5.1 LAND USE PATTERN OF KERALA STATE
mercial, forest etc, for which the land is put to. Hence
the analysis of the existing land use is inevitable to Based on the land use data of the Natural Re-
understand the predominant economic activities of an sources and Enviornmental Data Base the Land use of
area as well as the availability of vacant land for future Kerala can be categorized under 9 Major categories and
economic activities. In order to spatially analyze the the percentage share of these categories is shown in
land use pattern and economic activity as well as link- Table (5.1) and Fig 5.1. Accordingly predominant land
ages between them land use survey in all the 99 LSGs in use of the state is a mix of residential and agricultural
the district has to be completed. However this will take which constitute 48.38 % total Land area. It can be fur-
considerable time period. The source of the data is from ther seen that Forest area of the state contribute nearly
Satellite Data from IRS P6 LISS-IV Mx/ LISS- III/ 23.18 % of the total area making the forest land use as
PAN 2003-‘04 (India Satellite Data). The Data forms part second highest land use of the state. The Agricultural
of the Natural Resources and Environmental Data Base Land use and plantation land use together constitute
(NREDB). The Data on Land Use has been procured from 20.18% (Agricultural 10.17% and plantation 10.01%) of
Kerala State Land use Board. The above data base is total area. The above analysis further support the real
predominantly agriculture oriented and as such the to ground peculiar scenario of the state in terms of ur-
Table 5.1: Land use break-up – Kerala State
SI No Land use Category % Of Total Area
1 Forest 23.18
2 Water bodies 2.92
3 Marshy Land 0.28
4 Residential 3.45
5 Agriculture 10.17
6 Plantation 10.01
7 Res/Agr Mix 41.38
8 Other Built up Land Use 0.48
9 Others 8.13
Total 100.00
Source: Natural resources and enviornmental data base of Kerala
Department of Town & Country Planning, Kerala
2. 72 LANDUSE District Spatial Plan - Thrissur
ban rural continuum, highly scattered settlement pat- of land under intense residential land use. Water bod-
tern, and traditional homestead type of development ies and forest also has a significant share (88.58 and
8.13%
23.18%
41.38
x
10.17%
10.01%
Source: Natural resources and enviornmental data base of Kerala
Fig 5.1: Land use breakup – Kerala State
individual house surrounded by agricultural 772.86 sq km respectively) in the land use of the dis-
land mainly of mixed crop cultivation. trict.
5.2 LAND USE BREAK UP OF THRISSUR
DISTRICT
Total area of the district is 3035 Sq.km.
The breakup of land use area of the District
with its percentage to total area of the Dis-
trict is shown in Table 5.2 and Fig. 5.2. The
land use map of the district is shown in Fig.
5.3 The highest percentage of land use falls
under the category Residential / Agricultural
mix, which include mainly dry agriculture
lands where in residential developments are
co-existent. The district consists of 353.65 sq
km of pacca agricultural land and 31.53 sq km
Fig 5.2 : Percentage of land use breakup
Department of Town & Country Planning, Kerala
3. District Spatial Plan - Thrissur LANDUSE 73
Table 5.2: Land use breakup – Thrissur District
SI No. Land use Area (Sqkm) Percentage
1 Forest 772.86 25.46
2 Water bodies 88.58 2.92
3 Kole Land 32.62 1.07
4 Residential 31.53 1.04
5 Agriculture 353.65 11.65
6 Plantation 159.35 5.25
7 Res/Agr Mix 1544.90 50.89
8 Other Built up Land Use 19.67 0.65
9 Others 32.46 1.07
Total 3035.63 100.00
Generated from NREDB of the State
Map Generated for IDDP by TCPD, Thrissur Unit
Fig 5.3: Land use map – Thrissur District
From the analysis of land use of the district it is %) and agriculture (11.65 %). The glaring aspect of the
clear that, the major portion of the total land area of land use is that the district is blessed with potential
the District is coming under three major uses– Resi- resources such as agricultural land and forest.
dential / Agricultural mix (50.89 %), forest land (25.46
Department of Town & Country Planning, Kerala
4. 74 LANDUSE District Spatial Plan - Thrissur
5.3 REGIONAL LAND USE STUDY district the predominant land use is mix of residential
Clearly the process of land use analysis of Thrissur and agriculture. The comparison of category wise land
District shall starts with an insight to the whole Kerala use with that of Kerala shows that the share of total
state and neighboring Districts (Malappuram, Palakkad Kole land in Kerala is high in Thrissur District. The share
and Ernakulam). In this section an attempt has been of Residential / Agricultural land use category is also on
made compare the land use pattern of Thrissur District the higher compared to state.
with the state as well as with surrounding districts of The comparison of Land use pattern of Thrissur
Palakkad, Ernakulam and Malappuram. Land use pat- District with neighbouring Districts (Malappuram,
tern of Thrissur in comparison with Kerala state is shown Palakkad and Ernakulam), is shown in Table 5.3.
in Table 5.3. From the table, it is clear that within the
Table 5.3 Comparison of Land use break up of Thrissur District and Kerala state
SI No Land use Area % of Percentage of the
( sqkm) total corresponding area
in the Dist. in the state
1 Forest 772.86 25.46 23.18
2 Water bodies 88.58 2.92 2.92
3 Marshy Land 32.62 1.07 0.28
4 Residential 31.53 1.04 3.45
5 Agriculture 353.65 11.65 10.17
6 Plantation 159.35 5.25 10.01
7 Res/Agr Mix 1544.90 50.89 41.38
8 Other Built up Land Use 19.67 0.65 0.48
9 Others 32.46 1.07 8.13
Generated from NREDB of the State
Table 5.4 Land use break - comparison with Neighbouring Districts
SI No LAND USE Ernakulam Thrissur Palakkad Malappuram
1 Forest 661.02 772.86 1263.90 643.13
2 Water bodies 174.58 88.58 123.42 57.05
3 Kole Land 0.00 32.62 4.58 11.87
4 Residential 233.53 31.53 12.05 18.14
5 Agriculture 275.26 353.65 755.55 252.27
6 Plantation 174.82 159.35 208.59 138.19
7 Res/Agr Mix 1483.61 1544.90 1813.06 2159.13
8 Other Built up Land Use 3.40 19.67 56.75 19.79
9 Others 37.87 32.46 231.08 252.30
Total 3044.09 3035.63 4468.98 3551.87
Generated from NREDB of the State
Department of Town & Country Planning, Kerala
5. District Spatial Plan - Thrissur LANDUSE 75
Comparison of the percentage of share Forest
land use of Thrissur District and neighbouring three
Districts shown in Fig. 5.4. The figure clearly shows
that Palakkad District has the highest share where as
Thrissur is placed in the second position.
Fig 5.6 Comparison of the percentage share of land marked as
Marshy Land of the state in Thrissur and surrounding district
Fig 5.4 Comparison of the percentage share of Forest Land
use of the state in surrounding districts
The percentage of Forest Land Use of each dis-
trict is shown in Fig.5.5 . Palakkad district shows high-
est percentage (28.28%) followed by Thrissur. (25.46%).
Ernakulam and Malappuram shows less percentage of
forest land comparing to Thrissur Dist.
Fig 5.7 Percentage share of Marshy Land - Comparison with
surrounding districts
Residential land use which include landuses
categorised as Mixed Built-up/Mixed Built-up con-
verted from paddy, Residential, and Residential (Con-
verted from Paddy) shows higher concentration in
Ernakulam District with 18.62% of the total area under
this category in the state. The corresponding share of
Thrissur District is only 2.51%. At the same time it is
Fig 5.5 Forest Land use comparison with surrounding districts higher than the corresponding shares of Palakkad and
In case of land depicted as Marshy land in the Malappuram District (fig. 5.8).
data base Ernakulam has no land under this category
where as Thrissur shows highest contribution of about
31.82% of the total area under this category in the state
(fig. 5.6).
The percentage of Marshy land of each district is
shown in fig. 5.7 The figure shows that Thrissur district
shows highest percentage (1.07 %). It is observed that
the Kole lands of the district is categorised as Marshy
land as per NREDB. Hence the percentage share of
Fig 5.8 Comparison of the percentage share of Residential
marshy land in Thrissur district is reported to be high. Land Use in district of Kerala - Thrissur and Surrounding District
Department of Town & Country Planning, Kerala
6. 76 LANDUSE District Spatial Plan - Thrissur
The percentage of Residential Land use of
Thrissur & Surrounding Districts is shown in Fig. 5.9 The
figure shows that Ernakulam district shows highest per-
centage (7.67%) followed by Thrissur. (1.04%).
Malappuram and Palakkad shows lowest percentages.
Fig 5.11 Percentage share of Agriculture land use - Thrissur &
Surrounding district
The percentage share of Plantation Land Use in
Thrissur & surrounding districts is shown in Fig. 5.12.
The figure shows that Ernakulam district shows highest
Fig 5.9 Comparison of Percentage share of Residential land
use in Thrissur & Surrounding Districts percentage (5.74%) . Among the near by district Thrissur
In case of wet agriculture land use Palakkad shows fall under 2nd position.
dominance (20.45%) within whole Kerala State and
Thrissur has a share of 9.57% of agricultural land in the 5.74%
5.25% 4.67%
state Fig. 5.10
38 %
.9
Fig 5.12 Comparison of Plantation Land use Thrissur &
Surrounding district
Res / Agri mix category mainly include dry agri-
culture land uses. Comparing to the other districts of
Kerala, Thrissur and surrounding three districts show
highest (Fig. 5.13) concentration of mix of residential
Fig 5.10 Comparison of the percentage share of Agricultural and agricultural land uses.
Land use of the State - Thrissur & surrunding district
The comparison of percentage of Agriculture
Land Use of each district is shown in Fig.5.11. The fig-
ure shows that Palakkad district shows highest per-
centage (16.91%) and Thrissur District is in second po-
sition (11.65%) followed by Ernakulam and
Malappuram.
Fig 5.13 Comparison of the percentage share of State Res/Agr
Department of Town & Country Planning, Kerala Mix land use of the state in Thrissur & Surrounding district
7. District Spatial Plan - Thrissur LANDUSE 77
The percentage share of Forest Land Use of each Using the above method concentration index of
district is shown in Fig. 5.14. The figure shows that 9 categories of Land use (which are Forest, Water Bod-
Malappuram district shows highest percentage (60.79%) ies, Marshy Land, Residential, Agriculture, Plantation,
followed by Thrissur (50.89%), Ernakulam shows Resi/Agri Mix, Other built up land use and Others) are
(48.74%), Palakkad shows less percentage (40.57%) of analysed.
Resi / Agri mix land.
The regional land use study shows a general ob-
servation that Thrissur stand in the second or third po-
sition with respect to surrounding district in the case of
urban components of landuse (residential, mixed
builtup, resi/agri mix etc., other built up etc.) and rural
components of the landuse ( Agriculture, plantation
etc.)
5.4.1 Agricultural land use
The Agricultural land use consists of Cashew/or-
ange/pepper/pineapple, Viruppu (1st Crop)/
Fig 5.14 Percentage of Res / Agr mix land use in the district
Mundakan, Land without scrub, Double Crop/Triple
5.4 CONCENTRATION PATTERN OF LAND USE crop, Agriculture farm, Agriculture farm (Orchads)/and
Mixed trees catagories of land use as demarketed in
The concentration pattern of a land uses gives an
the landuse map generatedout of NREDB. The concen-
idea about where that particular land use is concen-
tration pattern of agricultural land use (Figure-5.15)
trated within the District.
shows that agricultural area of the District is mainly con-
The Concentration Index value may be greater
centrated in the central, and some of the up land re-
than one, equal to one or less than one. LSGS
gions of the District. The pattern also reveals that the
with Concentration Index greater than one indicates
concentration pattern of agricultural land use is also
that the land use under consideration is concentrated
influenced by the location of water bodies.
more than the other LSGS in the district.
Fig. 5.15 : The concentration pattern of agricultural land use
Department of Town & Country Planning, Kerala
8. 78 LANDUSE District Spatial Plan - Thrissur
Fig. 5.16 : The concentration Intex of agricultural land use
The variation of concentration index of Agricul- concentration of agricultural land use within the dis-
tural land use among the LSGs where concentration trict is seen in Grama Panchayats of Kuzhur, Poyya,
index of agricultural land use is greater than 1 is shown Alagappanagar, Arimpur, Mullassery, Chowannoor,
in fig 5.16. The list of LSGs with concentration index of Vallathole Nagar of the district.
agricultural land use is given in Annexe 5. The highest
Fig 5.17 : Concentration pattern of the Other Built up Land Use
Department of Town & Country Planning, Kerala
9. District Spatial Plan - Thrissur LANDUSE 79
5.4.2 Other Built up Land Use 5.4.3 Forest Land Use
Other built up land use include Commercial, In- Forest Land use contains land use categories of
dustrial /Industrial Park and Educational Institutions. Dense Mixed Forest, Dense Mixed Forest (R.F)/Forest
Figure 5.17 shows the distribution of the concentration Blank, Dense mixed forest mainly bamboo, Dense
pattern of the Other Built up Land Use. From the figure mixed forest mainly bamboo & teak (R.F), Dense mixed
it is clear that the concentration index of the Other Built forest mainly bamboo (R.F), Dense mixed forest mainly
up Land Use in urban LSGs and in those LSGs along the teak or cashew, Bamboo (R.F), Barren Rocky/ Stone
major transport corridors are higher than that in other waste/ sheet rock (RF), Open mixed forest/Open mixed
LSGs. Also it is observed that high land area of the dis- forest (RF), Scrub forest, Degraded grass land (RF),
trict has lesser concentration of Other Built up Land Uses Dense mixed forest mainly rubber, Under utilized /
even in LSGs along main transportation corridors indi- degraded notified forest and Dense Grassland/De-
Fig 5.18: The variation of concentration pattern of Other builtup land use among LSGS of Thrissur Dist.
cating that the economic activity of hill areas is not con- graded grass land.
siderably dependent on secondary / tertiary sectors.
The concentration pattern of forest land use
The list of LSGs with concentration index of the Other
shows (Figure 5.19) that forest area of the District is
Built up Land Use is given in Annexe 6 and the list of
mainly concentrated in the South - Eastern part of the
LSGs with high concentration of the Other Built up Land
District. Total area of active forest land of the district is
Use (i.e. concentration index of other built up land use
927.25 sq km which is about 30.55% of the total area of
greater than one) is shown in Annexe 6. The variation
the district. The forest land of the district is concen-
of concentration index of Other builtup land use among
trated in 11 LSGs namely Grama Panchayat of Athirapalli,
the LSGs where concentration index of other builtup
Kodassery, Mattathur, Varantharapalli, Puthur,
land use is greater than one is shown in Fig 5.18.
Pananchery, Pazhayannur, Chelakkara, Erumapetty ,
Department of Town & Country Planning, Kerala
10. 80 LANDUSE District Spatial Plan - Thrissur
Varavoor and Mullurkkara. The forest land is seen in among the LSGs is shown in Fig 5.20
the high land and upland regions of the district. The
The LSGs wise concentration index of Forest land
variation of concentration index of Forest Land use
use is given in Annexe 6.
Fig 5.19: Concentration patern of forest land use in LSGs of Thrissur Dist.
Fig 5.20: Variation of concentration pattern of forest land use among LSGS
Department of Town & Country Planning, Kerala
11. District Spatial Plan - Thrissur LANDUSE 81
5.4.4 Residential Land Use The LSGs wise concentration index of Residen-
The concentration pattern of Residential land use tial land use and list of LSGs where residential land use
shows (Figure 5.21) that Residential area of the District is concentrated are given in Annexe - 6. The variation of
is mainly concentrated in the coastal LSGs of the dis- concentration index of Residential land use among the
trict. Orumanayur is characterised with the highest con- LSGs where concentration index of Residential land
centration index for residential land use (16.66). use is greater than one is shown in Fig 5.22
Fig 5.21: Concentration pattern of Residential land use
Fig 5.22: Variation of concentration index of Residential land use
Department of Town & Country Planning, Kerala
12. 82 LANDUSE District Spatial Plan - Thrissur
5.4.5 Residential / Agriculture mixed Land use ber, Mixed and Tapioca as per the land use data of
Resi/Agri mixed land use consists of land use cat- NREDB. Resi / Agri land use is concentrated in the coastal
egories of Arecanut, Banana, Banana & Tapioca, Coco- areas of the district. The concetration patter of Resi/
nut/coconut & arecanut/cocconut & tapioca, Coconut Agri land use is shown in Fig. 5. 23. The pattern also
dominant mixed crop, Current fallow, Mixed Crop, Rub- reveals that the concentration of Res/Agr Land use is in
Fig 5.23: Concentration pattern of Res/Agri mixed land use
Fig 5.24: Concentration pattern of water body
Department of Town & Country Planning, Kerala
13. District Spatial Plan - Thrissur LANDUSE 83
coastal and midland regions of the district. and Back waters. The land use is concentrated among
the major river basis which are Chalakkudy Puzha,
5.4.6 Water bodies Karuvannur puzha, Kanjira puzha and small portions of
Water bodies include perennial, Reservoir/Canal, Bharatha puzha and Periyar.
Reservoir Bed/River bed/River island, Water Bodies,
Fig. 5.24 shows concentration index based on
Fig 5.25: Distribution of concentration - Index of Plantation land use
Fig 5.26: Distribution of concentration - Index of Kole land use
Department of Town & Country Planning, Kerala
14. 84 LANDUSE District Spatial Plan - Thrissur
extend of land under water bodies in LSGs of Thrissur. Cardomom(RF), Teak, Teak & Softwood (R.F), Teak (R.F)/
Cashew (RF), Eucalyptus (R.F)/ Eucalptus and soft wood
5.4.7 Plantations (RF)/Sof wood (silver oak), Oil Palm and Oil Palm (R.F)
This category of Land use include land use cat- as per land use data of NREDB.
egories of Rubber (R.F), Tea/Cofee/cardomom/
Plantations are spreaded in most of the north
Eucalptus, Tea & Eucalyptus, Tea (R.F)/Cofee (RF)/
east / south east areas of the district. The concetration
Fig 5.27: Concentration pattern of Other land use
Table 5.5: Break up of Agricultural land use, Thrissur District, 2008
Sl.No. Type Area (sqkm) %
1 Coconut Dominant Mixed Crop 751.45 38.55
2 Mixed Crop 484.27 24.84
3 Paddy 333.49 17.11
4 Rubber 208.51 10.70
5 Coconut 65.8 3.38
6 Perennial 54.37 2.79
7 Current Fallow 29.61 1.52
8 Land without scrub 9.23 0.47
9 Banana 1.97 0.10
10 Mixed trees 0.99 0.05
11 Plantation 9.31 0.48
12 Coffee 0.2 0.01
13 Arecanut 0.02 0.00
14 Banana Tapioca 0.09 0.00
Total 1949.31 100.00
Department of Town & Country Planning, Kerala Source: Census 2001
15. District Spatial Plan - Thrissur LANDUSE 85
pattern of Plantations is shown in Fig.5.25.. 5.5 ANALYSIS OF AGRICULTURAL LAND USE
The agricultural land use is analyzed further for
5.4.8 Marshy Land / Kole Land
all crops within the district. The total agricultural area
Land parcels which are categorised as Temporarily of the district is 1949.31sq km. The breakup of the agri-
marshy land / Marshy land/Permanently marshy land is cultural land use of Thrissur District is shown in Table
per NREDB is included under Marshy land / Kole land. 5.5 and Figure 5.28. Dry Agriculture contribute an area
Distribution of concentration - Index of Kole land use of 1616 sqkms and wet agriculture contribute an area of
is shown in Figure 5.26 333.5 sqkms. The LSG wise break up of the agricultural
land use is shown in Figure 5.29.
5.4.9 Other Land Use
From the above analysis it is found that major
Following land use of NREDB are grouped to
contributor among various crops in Thrissur District is
form the category Other Land use - Barren Rocky/ Stone
coconut (42%), followed by mixed crops (25%), paddy
waste/ sheet rock, Coastal Sand, Sands/ riverine/Flood (17%) and rubber (10%). Other crops contribute only
plain, Beaches, Harbour / Port, Mining / Industrial waste 5.5%. So the agricultural land use is analyzed further
land, Airport, Playground, Dam wall, Mining. Other Land considering these four main crops (Coconut, Mixed
uses are spreaded near by coastal areas and in the North Crops, Paddy and Rubber). The breakup of the agricul-
and Western region of the district. The concetration tural land use of Thrissur District considering these main
pattern of Other land use is shown in Fig. 5.27. crops is shown in Table 5.6 , Figure 5.30 and Figure 5.31
Source: Census 2001
Fig 5.28 Break up of agricultural land use Thrissur Dist.
Department of Town & Country Planning, Kerala
16. 86 LANDUSE District Spatial Plan - Thrissur
Fig 5.29 : LSG wise break up of agricultural land use
Table 5.6 : Break up of Agricultural land use, Thrissur District, 2008
Major Land use Sub Land use Area SqKm. % Total%
Coconut Coconut Dominant Mixed Crop 751.45 38.55 42.00
Coconut 65.8 3.38
Mixed Crop Mixed Crop 484.27 24.84 24.84
Paddy Paddy 333.49 17.11 17.11
Rubber Rubber 208.51 10.7 10.7
Others Perennial 54.37 2.79 5.42
Current Fallow 29.61 1.52
Land without scrub 9.23 0.47
Banana 1.97 0.10
Mixed trees 0.99 0.05
Plantation 9.31 0.48
Coffee 0.2 0.01
Arecanut 0.02 0.00
Banana Tapioca 0.09 0.00
Total 1949.31 100.00 100.00
Source: Census 2001
Department of Town & Country Planning, Kerala
17. District Spatial Plan - Thrissur LANDUSE 87
Paddy Rubber Mixed Crop Others Coconut
5%
Fig 5. 30: Break up of agricultural land use in to five classes
Fig 5.31 : Spatial patterm of agricultural land use
Department of Town & Country Planning, Kerala
18. 88 LANDUSE District Spatial Plan - Thrissur
5.5.1 Concentration Pattern of Agriculture land one indicating poor land cover of coconut.
use
5.5.1.2 Mixed crop
The concentration pattern of Agricultural land use
gives an idea about where that particular Agriculture is Figure 5.33 shows the distribution of the concen-
concentrated. For major agriculture viz: Coconut, Mixed tration index of the mixed crop land use. From the fig-
crop, Paddy and rubber - that dominant in Thrissur dis- ure it is clear that the high concentration of mixed crop
trict are analyzed here. is found in LSGs located nearby main transportation
corridors of the district.
5.5.1.1 Concentration Pattern of Coconut land use
Considering the unique scattered or dispersed
Figure 5.32 shows the distribution of the concen- settlement pattern prevailing in Kerala the LSGs located
tration index of the coconut land use. From the figure it near by the major transportation corridors usually have
is clear that the high concentration of coconut land use small land holdings together with built up land use
Fig 5.32 : Distribution of concentration - Index of Coconut
lying along Coastal belt, so we can say beach sand is which lead to mixed crop cultivation instead special-
very supporting to enrichment of coconut and coconut ized single crop cultivation. In other words the urban
dominant mixed crops. Second highest concentration and semi urban areas support mixed crop cultivation.
of coconut is also lying neighboring LSGs of coastal belt. Highland areas have less concentration of Mixed crops.
High and up land have concentration index less than
Department of Town & Country Planning, Kerala
19. District Spatial Plan - Thrissur LANDUSE 89
Fig 5.33: Distribution of concentration - Index of Mixed Crop
Fig 5.34: Concentration pattern of Paddy lands
Department of Town & Country Planning, Kerala
20. 90 LANDUSE District Spatial Plan - Thrissur
5.5.1.3 Paddy upland areas have very poor concentration of paddy
Figure 5.34 shows the distribution of the concen- lands.
tration index of the Paddy land use. Highest concentra-
5.5.1.4 Rubber
tion index of the paddy area is found in LSGs in mid and
up land areas. It may be due to good drainage catch- Figure 5.35 shows the distribution of the con-
ment area that support paddy cultivation. Coastal and centration index of the Rubber land use. North – East-
Fig 5.35: Concentration pattern of Rubber
Fig 5.36: Concentration Pattern of Agriculture
Department of Town & Country Planning, Kerala
21. District Spatial Plan - Thrissur LANDUSE 91
ern parts of the district have the highest concentration (Athirapalli and Puthoor) do not exhibit any
of Rubber land use. Most of the LSGs on highland re- specialisation in agriculture activities. It may be due
gions are showing a clear dominance to Rubber. As pro- the forest land cover of that LSGs.
ceeding from highland area to low land area of the dis-
5.6.1 Major agriculture activities including Plan-
trict value of concentration index of rubber is descend-
tation
ing. Coastal areas have very little concentration of Rub-
ber. From the analysis of major agricultural activities
it is found that two Grama Panchayats (Athirapalli and
5.6 MAJOR AGRICULTURAL ACTIVITIES Puthoor) do not exhibit any agriculture activities, but
In the above paragraphs, the areas of concentra- as per real to ground scenario these areas are active in
tion of the major agriculture land uses in the District is primary sector activities. Hence the analysis is further
delineated taking land put to crops viz coconut, mixed extended including ‘others category’ especially for
crop, paddy and rubber. By combining the concentra- Plantation.
tion pattern of major agricultural land uses spatially and Figure 5.37 shows the distribution of the concen-
by analyzing the resulting pattern, areas of major agri- tration index of the Plantation land use. Highest con-
cultural (based on the existing land use) activity can be centration of plantation is Thrikkur area. Athirapalli,
delineated. Varantharapalli, Thiruvilwamala and Pazhayaanoor are
The area of specialization of each LSG of the dis- also showing clear dominant of Plantations. So it is clear
trict against agriculture land use is given in Annexe 7. that Athirapalli have a clear land cover for plantations.
Figure 5.36. shows the concentration pattern of all the Figure 5.38 shows the concentration of all the
four major agriculture land uses together. From the fig- four major agriculture land uses together with planta-
ure, the areas of Specialization can be delineated. From tion . From the figure, the areas of Specialization, based
the figure it is found that only two Grama Panchayats on the agricultural land use analysis, can be delineated.
Fig 5.37: Concentration Pattern of Plantations
Department of Town & Country Planning, Kerala
22. 92 LANDUSE District Spatial Plan - Thrissur
Fig 5.38: Concentration Pattern of Agriculture Including Plantations
Table 5.7: Grouping of land use classifications
Sl land use Catagories grouped
Major Land use
No.
1 Non Agriculture (Urban Other builtup + Others+
land use) Residential ( Plot size <50
Scents
2 Agriculture Agri + Resi /
Agri+Residential (
Plot size >50 Scents
3 Forest All components of Forest
land use
4 Plantation All components of Plantation
land use
Department of Town & Country Planning, Kerala
23. District Spatial Plan - Thrissur LANDUSE 93
The area of specialization of each LSGs of the district Athirapalli Grama Panchayat dominance of Plantation.
against agriculture including plantation land use is given Still Puthoor show no dominance to any agricultural ac-
in Annexe 7. From the figure and table it is found that tivities.
Fig 5.39 a: The concentration pattern of Non- Agricultural land use
Fig 5.39b: The concentration pattern of Agricultural land use
Department of Town & Country Planning, Kerala
24. 94 LANDUSE District Spatial Plan - Thrissur
5.7 ACTIVITY ZONES BASED LAND USE CONCENTRA- taking each land uses separately. By combining the con-
TION PATTERN centration pattern of the major land uses spatially and
In the previous sections, the areas of concentra- by analyzing the resulting pattern, activity pattern of
tion of the major land uses in the District is delineated LSGs (based on the existing land use) can be evolved.
Fig 5.39c: The concentration pattern of Forest land use
Fig 5.39d: The concentration pattern of Plantations
Department of Town & Country Planning, Kerala
25. District Spatial Plan - Thrissur LANDUSE 95
In order to evolve the activity pattern the nine spectively. Based on the pattern, the activity of the LSGs
categories of land uses are grouped into 4 categories is evolved as per the criteria shown in Table. 5.8
which are Non agricultural, Agricultural, Forest and Plan-
Activity based on land use evolved based on the
tation as given in Table 5.7.
above criteria for each LSG is shown in
The concentration index of these major land use Annexe - 8. The activity pattern based on the land use
catogories is shown in Annexe - 7. The concentration is shown in Figure. 40.
patterns are shown in Fig. 5.39a, 5.39b, 5.39c, 5.39d re-
Table 5.8: Criteria for determination of activity based on Land use
SI No Activity based on
Land use Criteria
1. Urban CI* Urban > CI Agri / CI Plantation / CI Forest
2. Agricultural CI* Agri > CI Urban /CI Plantation
3. Plantation CI* Plantation > CI Forest /CI Urban / CI Agri
4. Forest` CI Forest > CI Plantation /CI Urban / CI Agri
* CI - Concentration index of
Urban
Fig 5.40 Land use concentration pattern of LSGS
Department of Town & Country Planning, Kerala
26. 96 LANDUSE District Spatial Plan - Thrissur
The analysis of land use concentration pattern whole District can be divided into four Activity zones
shows that most of the plantation / forest activities are namely Agricultural, Non-Agricultural/Urban, Planta-
concentrated on the highland region of the district. The tion, Plantation/Forest. The analysis of land use con-
urban activity is found to be mainly concentrated in centration pattern shows that most of the plantation /
coastal regions and along the major transportation cor- forest activities are concentrated on the highland re-
ridors. The agricultural activities are predominantly con- gion of the district. The urban activity is found to be
centrated in the midland region of the district. mainly concentrated in coastal regions and along the
major transportation corridors. The agricultural activi-
5.8 INFERENCE ties are predominantly concentrated in the midland
From the above details we can conclude that the region of the district.
Department of Town & Country Planning, Kerala
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