Figure 8. Coefficients contribution of Distance from coast in
daytime model 04/17/06
The local comparisons of the relative magnitudes of CC
among environmental variables are carried out to investigate
the relative contributions of the independent variables to
local surface temperature variation. The local dominant
factors which contribute most to location specific surface
temperature variation represented with the factor possessing
the site specific biggest CC can be mapped and compared to
differentiate the relative contribution of environmental
factors. It was found that the local dominant factors to
surface temperature variation are varying in space and
time.This uncovered the local disparities of surface heating
mechanism, which also indicates the dynamics of local effect
of environmental factors on local surface heating in space
and time, at one specific location, the order in relative
magnitudes of environmental indicators contributing to local
surface temperature variation is varied with geographical
location and time. Especially in urban area it is difficult to
generate a local pattern regarding the relative importance of
environmental factor on site specific surface temperature due
to the highly variation of the local dominant factors, which
may in part due to the relative low resolution in sampling and
measurement of some factors like population density and
road density comparing with the intensive variation of urban
landscape.
The varying relationships between urban surface temperature
and local environmental setting in space and time represented
with the referred environmental factors made the emerged
pattern of local dominant factors in terms of component
contribution (CC) challenging to be interpreted and explained
which may be due to limitations in the definition and
measure of environmental indicators (Holt and Lo, 2008). It
also made the clear delineation in the relative importance of
environmental indicators on surface temperature variation, in
particular surface warming difficult due to the complexity
induced by the local varying effect in space and time.
5. CONCLUSIONS
In this research, GWR analysis proved that the spatial
variation in relationships between environmental setting and
surface temperature was significant with Monte Carlo
significance test and distinctive in day-night change. the site
specific relation patterns related to each environmental
parameter are mapped and compared in order to analyze the
local impact of each factor on surface temperature
variation .Through analysis, we found that the local dominant
factor accounted for most to the site specific surface
temperature variation was highly varied in space and time
which prevented a general delineation of the relative
association among environment factors to surface
temperature disparities. This implied that the effective
adaptive measures should be devised locally with reference
to day-night needs in the identification of this feature.
Comparatively, GWR facilitated the site specific
investigation based on local statistical technique. The
inference based on GWR model provided enriched
information regarding the spatial variation of local
environment effect on surface temperature variation which
global model cannot approach.
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Fotheringham, A.S., Brunsdon, C. and Chartlon, M., 2002.
Geographically Weighted Regression: the analysis of
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Holt, J. B. and Lo, C. P., 2008. The geography of mortality
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