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Article

Quantitative Analysis of Different Environmental Factor Impacts on Land Cover in Nisos Elafonisos, Crete, Greece

1
Department of Hydrology and Water Resources Management, Faculty of Meteorology, Environment and Arid Land Agriculture, King Abdulaziz University, Jeddah 21589, Saudi Arabia
2
Department of Applied Geosciences, Faculty of Science, German University of Technology in Oman, Muscat 1816, Oman
3
Department of Ecology and Environmental Protection, Faculty of Biology, Sofia University, 1164 Sofia, Bulgaria
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2020, 17(18), 6437; https://doi.org/10.3390/ijerph17186437
Submission received: 5 August 2020 / Revised: 26 August 2020 / Accepted: 27 August 2020 / Published: 4 September 2020

Abstract

:
Land Cover monitoring is an essential task for a better understanding of the ecosystem’s dynamicity and complexity. The availability of Remote Sensing data improved the Land Use Land Cover mapping as it is routine work in ecosystem management. The complexity of the Mediterranean ecosystems involves a complexity of the surrounding environmental factors. An attempt to quantitatively investigate the interdependencies between land covers and affected environmental factors was conducted in Nisos Elafonisos to represent diverse and fragile coastal Mediterranean ecosystems. Sentinel-2 (MSI) sensor and ASTER Digital Elevation Model (DEM) data were used to classify the LULC as well as to draw different vegetation conditions over the designated study area. DEM derivatives were conducted and incorporated. The developed methodology is intended to assess the land use land cover for different practices under the present environmental condition of Nisos Elafonisos. Supervised classification resulted in six different land cover clusters and was tested against three different environmental clusters. The findings of the current research pointed out that the environmental variables are independent and there is a vertical distribution of the vegetation according to altitude.

1. Introduction

Studying and understanding the vegetation and land use pattern is of great importance for the understanding of many ecological processes and the functioning of complicated systems such as landscape. Verburg et al. [1] found that the land use pattern of a region has a strong influence on a variety of ecological phenomena such as net primary production. The Land Use Land Cover (LULC) pattern creates new processes, influencing, for example, horizontal movement and distribution of animal populations [2,3], water runoff and erosion (e.g., [4], the spread of disturbance [5,6], and fluxes of materials and energy [7] or boundary phenomena in general [8]).
The LULC composition and changes are important factors that affect the ecosystem’s condition and its functionality. These factors are frequently used to generate landscape-based metrics and to assess landscape conditions and monitor status and trends over a specified time interval [9]. The use of optical remote sensing imagery has been widely applied to provide a cost-effective means to develop LULC coverage’s over large geographic regions [10,11].
One important method of understanding ecological dynamics, such as natural and human disturbances, ecological succession, and recovery from previous disturbances, is the analysis of changing landscape patterns [12,13]. Satellite imagery and aerial photography that have been classified by vegetation type provide an excellent source of data for performing structural studies of a landscape [14,15].
Simple measurements of patterns, such as the number, size, and shape of patches, can indicate more about the functionality of a land cover type than the total area of cover alone [16,17]. When fragmentation statistics are compared across time, they are useful in describing the type of landscape change and indicating the resulting impact on the surrounding habitat [18,19].
Vegetation indices are optical remote sensing offshoots to assess and to monitor the vegetation vigorously on a regional scale. There are over 20 vegetation indexes developed to estimate the vegetation conditions from different aspects and for different purposes [20,21]. Optical remote sensing data obtained from Sentinel-2 Multispectral Instrument (MSI) has the lead in vegetation indices estimation due to the red edge channel [21,22]. Sentinel-2 Red Edge Position Index (S2REP) is one of the most advanced indices in assessing the vegetation conditions under the linear interpolation of MSI red-edge bands 5 and 6 [23,24]. According to Birgin and Martínez [25], this method has the key benefit over the Lagrangian method of reflectance measurements at the inflection point due to the limited number of spectral bands [26,27,28].
Quantitative analysis is used to delineate the relationships between environmental factors and Land Use Land Cover units. They are clearly displayed in matrices which contain the description of objects, at the same time or at different times by variables that might have been measured in different scales and clusters. This level of classification detail presents opportunities for analyzing landscape change patterns at a structural scale [29,30]. Cluster analysis and discrimination analysis techniques are used to explore the similarities between objects and to define groups of objects by considering simultaneously all the measured variables [31,32]. There are two major thrusts in mathematical modeling within GIS environments: Optimization and simulation [33,34]. Each represents a fundamentally different approach to problem-solving. Broadly speaking, the output of optimization models is a prescription of strategy. Simulation, on the other hand, is a descriptive approach.
The use of geoformation tools to envisage the interpretation of spatial relationships between environmental parameters as independent variables and Land Use Land Cover units as dependent variables were developed under the Geographical Information System (GIS) environment. Geostatistical, density, and buffer analysts were the most exercised tools in environmental management issues when natural resources were specifically considered [35,36].
The landscape of Nisos Elafonisos is of a high aesthetic and great natural ecosystem. The various ecotopes coexist and complete each other creating a diverse entity. Human intervention is obvious all over the surrounding area. The tourist development started three decades ago. Some projects are referring to the parts of the area or the whole of it but none of them studies the area from a landscape point of view, as an entity of the four dominant landscapes [37]. Therefore, the main objective of the current study is to understand the combined influences of the environmental factors, and the human intervention has determined the vegetation distribution using the enclosed environmental factors and the Land Use Land Cover variabilities. A study like this would be very useful in order to create a general image of the particular area as a fully integrated landscape and to reveal the changes and the trends of the landscape through time. The study can be used for future research in conservation and planning of the land uses of the area.

2. Materials and Methods

2.1. Study Area Description

The study area, Nisos Elafonisos, is located in Southwest of Crete and covers an area of about 4317.21 ha; as is enclosed by the red box illustrated in Figure 1. The area is affected by Mediterranean weather conditions. There are two main seasons: Dry hot summer and rainy cold winter. The rain season starts in October and ends in April of the next year. The dry season starts in June and ends in September of the same year. The average temperature recorded from 1972 to 2012 is about 18 °C. The mean annual rainfall is about 750 mm. The topography of the area is considered to be moderate lowlands. Sclerophyllous vegetation is the dominant land cover with a small area used for olive groves. The study area experienced heavy tourism activities throughout the last decade.

2.2. Data Processing

The process of evaluating the land clusters is adopted from the FAO framework developed by Verheye, Koohafkan [38]. The method to be proposed is intended to design for assessing land for different practices under the present condition in Nisos Elafonisos. In order to develop a set of themes for evaluation and ultimately to produce a suitability map, the condition requirement in terms of land qualities and land topography was reviewed [39].
Cluster analysis aims to place objects into groups or clusters suggested by the dataset, not defined a priori. Consequently, the objects in each cluster tend to be similar, and objects in different clusters tend to be dissimilar. For the purpose of this study, a hierarchical cluster procedure which attempts to identify relatively homogeneous groups of cases based on selected variables, more specifically, Ward’s method, based on the sum of the squared differences between the values for the items, is applied to classify the designated study area. The results of the classification are then displayed in the form of maps that show the spatial distribution of the Operational Geographic Unit (OGU) classes. According to Murtagh and Legendre [40], Ward’s Error sum of squares method was conducted as follows:
E S S = i Є q d 2 ( i , q )
where
  • d is the absolute distance between to the two events i,q.
The temporal data set was downloaded from the European Space Agency (ESA) data hub. The first dataset was acquired in March 2014 and the second dataset was acquired in March 2019. The remote sensing data were radiometrically and atmospherically corrected according to [41,42]. Support Vector Machine (SVM) classifier was exercised on the temporal data sets to obtain to Land Clover Land Use classes according to Chavez [43] in a very simplified form as follows:
K ( x i , x j ) = t a n h ( g x i T x j + r   )
where:
  • g is the kernel function gamma term for all kernel types except linear
  • r is the kernel function bias term for the polynomial and sigmoid kernels.
  • T is the kernel Trick (the bridge from linearity to non-linearity to any algorithm).
To assess the vegetation cover of the study area temporally, Sentinel-2 Red-Edge Position Index algorithm was applied according to Frampton et al., as follows:
S 2 R E P = 705 + 35 ( B 4 + B 7 2 B 5 ) B 6 B 5
where B is the band information shown in Central Sentinel-2 wavelength/Bandwidth
  • B7 = 783 nm (15 nm),
  • B6 = 740 nm (15 nm),
  • B5 = 705 nm (15 nm),
  • B4 = 665 nm (30 nm).
Classification accuracy assessment was carried out according to Congalton and Mead [44] as follows:
K h a t = N i = 1 r x i i i = 1 r ( x i j x j i ) N 2 i = 1 r ( x i j x j i )
where
  • r, is the number of rows in the error matrix
  • xii, is the number of observations in row i and column i (the diagonal cells)
  • xi+, is the total observations of row i
  • x+I, is the total observations of column i
  • N, is the total of observations in the matrix
The land qualities to be used in this evaluation thus include several land characteristics layers, for this study area soil-geology, slope, precipitation, temperature, and S2REP change detection layer from the temporal satellite images in addition to the DEM layer (Table 1). Each land characteristic is considered a thematic layer under the GIS environment. In order to create an environmental dataset, the following steps have been performed.
In order to create the dependence matrix of Land Use Land Cover dataset, almost the same procedure was repeated by cross tabulating land cover with land units and taking, as a result, a matrix with land cover types in one side and the land units in the other side and then they were standardized in percentage (%) as shown in Table 3.
By joining all the reclassified maps with the land cover types, the matrix which includes dependent and independent variables was ready, and every land unit was given this information. The geographic units were classified twice; depending on the land cover types (6 groups) and depending on environmental parameters (3 groups) as listed in Table 4.
Finally, the two matrices were tabulated to draw some conclusions. To make the analysis clear, one tabulation step takes place between the groups, and another one between the variables themselves was done. The number of clusters of the land cover is expanded because they are too heterogeneous, so six clusters are created for the land cover which is described by 15 land cover/land use types. Now, these six clusters must be characterized according to the environmental variables.

3. Results

GIS environment was used to reclassify the grouped landscape units to see the spatial relationship between these clusters for both data sets and they were cross-tabulated to see the overlap (Common area). The variables of six clusters are grouped depending on environmental variables. Two maps were created which were classified into three classes for the environmental clusters and in six classes for land cover variables.
Figure 2 and Figure 3 showed the map of the study area classified into groups according to the dependent and independent variables. To get the description of each land cover cluster according to environmental factors, the percentages of the overlap between land cover and environmental clusters were calculated as shown in Table 5.
The fuzzy set represents the membership of an object to a specific cluster, which leads to differentiate the clusters according to the objects falling in each of them. This membership defined by the distance between an object from the centers of the clusters. Using the similarity matrices of dependent and independent variables, the variability of the dependent variables based on the independent variables can be described. The geographic units in the matrix of the independent variables were rearranged according to the clusters of the land cover matrix. The structure of the matrix of similarity based on environmental variables according to Land Use Land Cover is illustrated in Table 6.
Matching to the maps in Figure 2 and Figure 3 and the values in Table 6 the following clusters could be concluded according to the scattergram matrix (Figure 4):
Distances are computed among the considered objects, based on the standardized values of all the parameters, the standardization method removes the effects of the scale and the measure of the data. After performing the join between the created database, containing the cluster’s membership scores, and the communes map, the range of solutions, are visualized under GIS environment, and regarding the previous knowledge from data correlation and other analysis, the solution of 6 clusters is chosen:
First cluster:
The first land cover cluster overlaps with the first cluster of environmental variables by 91.70%. Thus, a strong relationship exists between this land cove type and environmental variables. It can be noticed that this land cover group consists mainly of shrubs and grassland vegetation distributed in the regions with the following environmental conditions:
  • Mainly in SE-SW and NE-NW aspects,
  • High elevation; greater than 1000 m,
  • Steep slope about 33°, and
  • Increase in S2REP values.
Second cluster:
Of the second land covers cluster, 98.7% overlap with the first cluster of environmental variables while the remaining 1.3% is located in the second one. According to the tables in the appendix, this group mainly consists of broad leaves and mixed forest located in the following environmental conditions:
  • SE_SW aspects,
  • High elevation (greater than 1000 m) with a considerable percent about 91%,
  • Wide range slope starting with flat areas to steep ones, and
  • Increase in S2REP values.
Third cluster:
The third cluster consists of industrial, heterogeneous agriculture, and shrubs areas with an overlap of about 23.87% and 76.13% with the first and the second environmental clusters, respectively. This area is valuable with an environmental perspective because of the following properties:
  • Low elevation,
  • Low slope from 0 to 10°, and
  • A decrease in S2REP values.
Fourth cluster:
The fourth land cover cluster is not strongly correlated with any environmental cluster. However, it is distributed in the first, second, and third environmental clusters with 12.65%, 29.82%, and 57.53%, respectively. It occupied mainly by broad-leaved forest and partially by shrublands with the following environmental parameters:
  • SE-SW aspects,
  • Medium elevation,
  • Moderate climatic conditions, and
  • Moderate slope.
Fifth cluster:
This cluster is mainly occupied by arable land and it strongly overlaps with the second environmental cluster with 63.24%. The following environmental conditions can be noticed
  • A low slope or nearly flat areas,
  • Low elevation, and
  • A decrease in S2REP values.
Sixth cluster:
In this cluster, the wetland area with very little vegetation can be found, and it strongly correlated to the second environmental clusters. The elevation in this area is considered low.

4. Discussion

Mapping the environmental factors in accordance with the Land Use Land Cover dynamicity is a mandate to sustain the fragile ecosystem of Nisos Elafonisos. Such balance will be generally based on the vast unpredictability of the primary elements of the designated ecological system [45,46]. The environmental restoration of natural areas will be possible when their natural and biological capacities are regularly monitored [47]. Consequently, several zoning/clustering approaches have been formulated and implemented along the past decades as the methods developed synchronously with the advancement of science and technology development [48,49].
Understanding Land Use Land Cover change requires an integrated investigation of human and ecological driving processes and responses to change. Patterns of land-use/cover change result from the interactions between human and natural factors and imprint their legacies on the landscape in patterns that are distinctive and detectable. According to Blaschke [50], human land use has influenced most landscapes, resulting in a landscape mosaic of natural and human-managed patches that vary in size, shape, and arrangement. Remote sensing and Geographic Information Systems (GIS) are valuable tools for detecting, monitoring, and modeling landscape changes. On the other hand, indices of landscape structure and function provide important information about the development and dynamics of landscape patterns and how they relate to ecological phenomena. Some common questions are focused upon the relationship between the changes that occur in the landscape and the spatial configuration of landscape attributes. Numerical and spatial data processing is needed to quantify and analyze these historical spatial patterns of Land Use Land Cover.
Clustering proceeds by pairing nearest objects, which are the most similar, to build up a group of objects until all have been grouped into clusters Classical clustering approaches generate partitions such that each object is assigned to exactly one cluster. Often, however, objects cannot adequately be assigned to strictly one cluster (because they are located “between” clusters). In these cases, fuzzy clustering methods provide a more adequate tool for representing data structures [51].
In the numerical and spatial analyses of land mosaic, two types of information are processed: The patch attributes such as size, shape, and spatial arrangements and the landscape attributes [52]; and the analyses for understanding the complexity of the land mosaic. Some of the basic measures of patch characteristics are patch size, patch perimeter, and patch shape. According to Perry et al. [53] and Elhag [54], the shape, format, and size of patterns most likely reflect the ecological status of a place and therefore represent an easy and certain way to distinguish areas on the earth.
Chamapira, and Taghavi [55] suggested that the Operational Geographic Unit dimension captured some aspect of the surface roughness that was unique. A spatial roughness pattern could be derived directly from the spectral imagery and it should be useful for further spatial analysis within GIS environments. Several different methods including the dividers method, cell (box) counting method, and variogram method were compared for determining the Operational Geographic Unit dimension of topographic surfaces [56,57]. They concluded that it provided a fairly complete descriptor for some landscapes although it couldn’t be considered a universal model It would appear that the variability in Operational Geographic Unit dimension is more a function of the methods used to obtain the unit dimension than it is a reflection of any theoretical inadequacy of self-similar units model [58,59].

5. Conclusions and Recommendations

Environmental variables were used as the independent variables because they determine mainly the vegetation distribution and land use of the area, which can further be changed by human intervention. The environmental variables are independent because they are stable for long periods and are not sensitive to human interference. These variables were grouped into three classes according to their similarity. The land cover was the dependent variable, the one that we were trying to analyze through some other independent variables known as the Environmental variables. The land cover was better discriminated in six clusters. By using the summarized information for each class, we can draw the following conclusion: There is a vertical distribution of the vegetation according to altitude. From these analyses, we can conclude that the areas that are covered by forests are small, compared to the whole area. The forests are mainly found in the first three clusters located in high altitudes, far from human interference. It can be noticed that stands of coniferous forest cover only a very small percentage of the area. Moving from high elevation to low elevation there is a clear change in land cover. In high elevation most of the area is occupied by shrubs and forest, with some open spaces. The human interference is low in high elevation due to the environmental limitation, only in the case of the open spaces: This probably comes as a result of clear-cutting of forests. The physical limitations of the environment confine somehow the human interference as a result of high altitudes, a long distance from the urban areas, high slopes and a decrease in S2REP values which make these areas unsuitable for human activities such as cultivation or industry. But moving from upper to lower elevation, it starts to appear the human interference, the arable land appears in the second cluster but belonging to this cluster in a very small percentage and anyway in low elevation. The vegetation cover is reduced with altitude; in lower elevations, the mixed forest disappears, while it starts to be more frequent on the arable land. This is explained by favorable environmental conditions: Low slopes, and low elevation, which makes easy the cultivation of such areas.

Author Contributions

Conceptualization, M.E. methodology, M.E. validation, M.E., and S.B. formal analysis, M.E., and S.B. writing—original draft preparation, M.E. writing—review and editing, M.E., and S.B. funding acquisition, M.E. All authors have read and agreed to the published version of the manuscript.

Funding

This project was funded by the Deanship of Scientific Research (DSR), King Abdulaziz University, Jeddah, under grant no. (DF-085-155-1441).

Acknowledgments

This project was funded by the Deanship of Scientific Research (DSR), King Abdulaziz University, Jeddah, under grant no. (DF-085-155-1441). The authors, therefore, acknowledge with thanks, DSR technical and financial support.

Conflicts of Interest

The authors declare no conflict of interest

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Figure 1. The location of the study area in Crete Island, Greece.
Figure 1. The location of the study area in Crete Island, Greece.
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Figure 2. Supervised Land Cover Land Use classes of the designated study area.
Figure 2. Supervised Land Cover Land Use classes of the designated study area.
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Figure 3. Environmental clusters of the designated study area.
Figure 3. Environmental clusters of the designated study area.
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Figure 4. The scattergram matrix environmental variables.
Figure 4. The scattergram matrix environmental variables.
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Table 1. Reclassification of the natural parameters into different classes.
Table 1. Reclassification of the natural parameters into different classes.
Variable Classes
Vegetation1Natural grasslands
2Complex cultivation patterns
3Sclerophyllous vegetation
Habitats4Agricultural land
5Formations composed mostly or predominantly of annuals, in particular, Chenopodiaceae
6Juniper formations of Mediterranean coastal dune slacks and slopes, J. communis formations
7Large indentations of the coast where, in contrast to estuaries, influence by freshwater is limited
8Low, thorny formations of hemispherical shrubs of the coastal thermo-Mediterranean zone
9The Mediterranean and thermo-Atlantic woods of thermophilous pines
10Mediterranean humid grasslands of tall grasses and brushes
11Meso- and thermo-Mediterranean xerophile, short-grass annual grasslands rich in therophytes
12Moving sand dunes, formed in the line of undulation or coastal sand dunes systems
13Sclerophyllous scrubs established on dunes of the Mediterranean regions
14Tamarisk, oleander and chaste tree galleries and similar low ligneous formations of permanent
15Thermo-Mediterranean woodland dominated by arborescent Olea europaea ssp. sylvestris
16Vegetated cliffs and rocky shores of the Mediterranean
17Vegetation found in calcareous declivities
18Very shallow temporary ponds (a few cms deep) which exist only in winter or late spring
19Woods, often riparian, formed by the palm Phoenix theophrasti, restricted to sandy coastal valleys
20Woody coppice mainly consisting of Juniperus phoenicea.
Geology21Mixed formation
22Stavros-Seli schists
23Dolomites, dolomitic limestones, limestones
24Flysch
25Limestones
26Recrystallized limestones and dolomites
27Talus cones and scree
28Transition beds
29Undivided neogene formations
Soil30Arenosoils
31Cambisoils
32Gleysoils
33Lithosoils
34Luvisoils
35Rankers
36Regosoils
37Solonetz
38Terra rossa
39Vertisoils
Elevation4020
4160
42100
43140
44180
Slope °450
4610
4720
4840
4960
Aspect50North
51Northeast
52East, northwest
53West, southeast
54Southwest
55South
Temperature5619
5720
5821
5922
Consequently, cross-tabulation of DEM derivations with the S2REP temporal values was conducted resulting in a matrix with environmental variables for each unit. The variables are standardized into percentages (%). Environment variables are in the columns versus landscape units in the rows as shown in Table 2.
Table 2. Cross-tabulation of Digital Elevation Model (DEM) products and Sentinel-2 Red Edge Position Index (S2REP).
Table 2. Cross-tabulation of Digital Elevation Model (DEM) products and Sentinel-2 Red Edge Position Index (S2REP).
Elevation (m)SlopeAspectS2REP
>100100–350350–700<70015°35°60°NNE–NWE–WSE–SWS−ve+ve
0.000.000.001.000.040.180.680.100.140.250.290.130.200.001.00
0.000.000.001.000.070.180.680.070.170.090.250.210.290.001.00
0.000.000.170.830.080.210.620.090.210.120.210.220.240.140.86
0.000.010.160.840.080.190.580.150.230.080.150.200.340.070.93
0.000.000.090.910.110.140.560.190.160.150.210.190.290.150.85
0.000.000.170.830.040.090.590.280.150.110.200.240.300.080.92
0.000.000.190.810.060.210.680.050.300.060.130.150.360.001.00
0.000.000.180.820.080.260.630.040.250.060.150.200.340.020.98
0.000.000.230.770.040.190.720.050.240.020.100.220.420.010.99
0.000.030.240.730.040.120.610.230.120.150.290.230.220.090.91
0.000.030.270.700.090.160.560.190.080.150.300.250.220.170.83
E is East, W is West, SE is Southern East, SW is Southern West, S is South -ve is a negative S2REP value, +ve is a positive S2REP value.
Table 3. Cross-tabulation of Land Cover Land Use classes.
Table 3. Cross-tabulation of Land Cover Land Use classes.
Land Use Land Cover
ShrublandBeachBare LandOlive GroveUrban AreaGrasslandArable LandWetlandIndustrialComplex VegetationMixed ForestPastureScrubland
0.060.400.110.290.110.020.000.000.000.000.150.180.00
0.040.150.290.240.050.130.030.010.000.000.230.290.01
0.200.180.100.300.060.070.010.000.000.000.200.260.01
0.070.120.190.360.020.050.010.000.000.000.260.340.01
0.100.040.040.010.010.200.120.010.010.000.160.200.01
0.020.090.420.070.030.110.100.000.060.000.130.140.01
0.050.000.000.000.000.000.000.190.250.170.140.230.01
0.080.000.000.000.000.000.000.100.210.220.160.260.01
0.060.120.000.000.000.000.000.160.240.220.560.640.01
0.370.010.020.010.000.010.050.130.210.210.220.290.02
0.070.000.010.010.000.000.000.070.170.210.150.180.00
Table 4. Dependent and independent variables enclosed within the study area.
Table 4. Dependent and independent variables enclosed within the study area.
Dependent VariablesIndependent Variable
>100Shrubland
100–350Beach
350–700Barren land
<700Olive groves
Urban
15°Grassland
33°Arable land
60°Wetland
NorthIndustrial area
North-East, North-westComplex vegetation
East, WestMixed forest
South-East, South-westPastures
SouthScrub and/or herbaceous vegetation associations
Decrease in S2REP
Increase in S2REP
Table 5. The overlap percentages between the environmental cluster and Land Use Land Cover classes.
Table 5. The overlap percentages between the environmental cluster and Land Use Land Cover classes.
ClassesEnvironmental Cluster-1Environmental Cluster-2Environmental Cluster-3
Land Cover-191.76.51.8
Land Cover-298.71.30
Land Cover-323.8776.130
Land Cover-412.6529.8257.53
Land Cover-563.2436.760
Land Cover-601000
Table 6. The Land Use Land Cover similarity matrix.
Table 6. The Land Use Land Cover similarity matrix.
No. of PolygonArable LandBare LandBeechGrasslandOlive GrovesShrub LandUrbanWet Land
610.7999060.587180.4310120.7681290.6741340.6321610.7773780.55758
390.6371070.2595160.1173140.3198120.5121190.3485230.4499730.357792arable
540.825310.5886210.3933530.7138880.7069970.625850.783940.667842
430.6098530.4004270.2256730.4585720.5302360.4547960.5392790.572374
460.8066030.5460660.3843740.717050.6643340.6048310.7523920.542179
310.7901580.5919770.411670.7096960.6783830.6119340.7737550.619639
570.4560220.6609310.5806970.7260480.4808240.6014690.6003240.437603
320.5621770.6768420.5514950.7187560.5909760.6194610.6140930.579831
450.4675440.4230030.2143240.4210360.4295890.4376540.489430.587629
530.4747220.6654980.622880.7149230.5346930.5787430.5719370.486884bare land
300.6349270.5520870.38970.6211880.5504850.52260.7037320.584108
240.4901680.6442480.6876650.7808710.5167430.5904390.6322920.414108
210.4829450.6182250.5620280.5972820.4365750.619450.5988410.475398
190.3965440.5008520.4141020.3927780.3851380.4652850.3984640.404823
90.4231740.553380.6120840.6976430.4290350.5151470.5410460.351185
160.2114420.4746920.5901020.4572640.2687520.4101990.3358010.252881
20.3735470.6092120.6717090.7152950.4458920.5287030.5426520.33978
120.4535580.4054630.3071760.4876750.377860.4610180.5193160.374904beech
140.2217460.445960.539730.3556410.2701430.3648640.310370.171797
60.3780310.4945130.5734690.6145190.4759920.4741820.4423440.375249
130.3474120.5188110.477770.3901870.3480450.4506570.4139340.379168
220.2850160.5481510.6576740.6275690.3767130.4680190.4393610.291821
100.2511680.475570.6303010.5677220.3647150.4104190.3851390.285138
480.6376080.6659960.5976090.836620.6001850.6520880.7372450.506114
490.6197420.6228230.4560740.7270370.5631170.6319640.705030.668353grass
50.4173480.5991190.6802110.7419760.5057270.5544370.5486860.375903
70.7834010.5985030.4498910.754810.683590.6363820.758970.542353
270.7118670.3586720.2555480.4832570.6152330.4470770.5619280.445182
280.7838880.527980.3932210.7098040.6556160.5822540.7412280.494745
290.7245230.4989350.3003990.5692560.6467850.5276270.6617450.650207
30.6680830.6355370.5212350.7990180.6405350.640430.716670.533046
260.6895740.5629150.385150.6330560.6228160.5528370.7046790.625085olive
590.6719630.5660920.4367320.6572790.6643350.5955570.6438790.523582
400.5788960.2593430.1367840.3321470.4952070.3518130.4398670.467936
340.4700440.4910170.3971320.5293580.5088690.5167810.4578460.52119
350.288090.4860380.5905080.58360.4276120.4584060.4191140.281162
360.4859220.4698530.3792730.5153770.5633290.4811190.4708940.377599
470.7936690.4622660.2857830.6014850.6460860.5287050.6842990.436621
80.6658870.5688860.3944320.6442210.5778520.5444510.7248590.606636
10.808770.5469460.3885030.7181460.6644210.604240.7585710.534088
330.5109070.521170.3690830.5452090.5362630.5479290.4912830.532157
410.6695630.4830780.3355850.5793240.5616640.577610.6100080.841363
420.4461690.4006980.2328080.410440.4197690.470520.4720190.930396
230.7640110.6600520.5460880.8240370.6900940.6700850.7936490.550561shrub
440.6312980.5756340.414550.6272740.5640260.557020.6946630.584694
200.3697160.4897870.3945490.4182660.355740.533980.4441830.396975
180.2672130.3706110.3704940.3388190.2181640.426470.3405870.248719
370.5499230.5977240.4923080.6832220.5976820.6240280.5876830.568144
170.3357320.5097630.5546620.5340410.3477680.5275490.4858790.374163
150.4964850.5919860.5030820.6334790.428890.5791770.5976850.517594
500.5824590.6274290.5360240.710990.6359810.6059420.6399720.48305
510.5670690.6883310.6030610.7969080.6016870.6472350.6757540.502034
520.649570.6982180.610860.8418930.6427480.6744970.7352870.541804
40.6594640.5963940.5255220.7908240.5826320.6033650.7383620.513628
550.8144060.5003420.3330340.6481590.69180.5704920.7153620.476914urban
560.823690.593850.422540.7488380.6948050.6341280.7920090.5898
250.6408660.5557250.3906370.6103720.5668580.529680.694210.616016
580.6626490.6027150.4515240.6676310.6631720.6354980.6437280.692736
110.4325020.5187080.4386120.5551040.381480.5351410.5820060.454979
600.7225930.6652420.4947670.7914530.6350080.6553090.801940.681049
380.5529010.4962980.3135470.5231810.4969160.5432670.5750171wet
Different colors correspond to different environmental cluster, environmental cluster-1 represented by (Pink), environmental cluster-2 represented by (Yellow), environmental cluster-3 represented by (Cyan).

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Elhag, M.; Boteva, S. Quantitative Analysis of Different Environmental Factor Impacts on Land Cover in Nisos Elafonisos, Crete, Greece. Int. J. Environ. Res. Public Health 2020, 17, 6437. https://doi.org/10.3390/ijerph17186437

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Elhag M, Boteva S. Quantitative Analysis of Different Environmental Factor Impacts on Land Cover in Nisos Elafonisos, Crete, Greece. International Journal of Environmental Research and Public Health. 2020; 17(18):6437. https://doi.org/10.3390/ijerph17186437

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Elhag, Mohamed, and Silvena Boteva. 2020. "Quantitative Analysis of Different Environmental Factor Impacts on Land Cover in Nisos Elafonisos, Crete, Greece" International Journal of Environmental Research and Public Health 17, no. 18: 6437. https://doi.org/10.3390/ijerph17186437

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