Full text: XIXth congress (Part B7,1)

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4 STATISTIC AND GEOSTASTIC ANALYSIS 
4.1 Statistical analysis of the survey data 
One of the objectives of this study is to gain insight in the spatial distribution of surface temperature in the area and 
whether significant differences exist between the surface temperatures of the land cover types. This question can be 
answered with the temperature data derived from the DAIS image. For each land cover type, the surface temperature is 
derived by digitizing polygons on the DAIS thermal image and sampling the temperature values. These temperature 
values and their statistical properties are then analysed. Figure 2 displays the difference in mean temperature per land 
cover type. 
  
  
  
  
  
  
  
  
  
  
  
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vineyard grassland maquis garrigue 
bare soil pine forest water 
Land Cover 
  
  
  
Figure 2: Average temperatures and standard deviations for each land cover type (derived from DAIS). 
4.2 Geostatistical analysis of the field data 
The three measured soil parameters: soil moisture content, porosity and bulk density are input parameters for the surface 
temperature model. The purpose of this model is to gain information on the spatial distribution of the surface temperature in 
time. In order to calculate the spatial distribution, continues maps of the soil parameters are required. These continues maps 
are derived by interpolation of the point samples with the conditional simulation interpolation technique. The main 
advantages of this technique are that insight in the prediction variance for each pixel (spatial) is obtained, as well as insight 
in the model’s response to the input range. 
For each of the variables, two variograms have been computed: one variogram for the cultivated (southern) area and the 
other for the uncultivated (northern) area. Exactly 500 realisations have been computed with the conditional simulation 
technique. Resulting maps of the mean value and the standard deviation for soil moisture content are given in figure 3. The 
mean gives a good impression of the spatial distribution of the variable under consideration. The standard deviation gives an 
impression of the range of possible results. 
    
  
Legend 
Standard 
Legend Deviation of the 
Se meine soil moisture 
; fraction. 
   
   
Figure 3: Regional distribution of A soil moisture content and B standard deviation of the soil moisture content 
  
International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B7. Amsterdam 2000. 351 
 
	        
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