Land Cover Impacts on Surface Temperatures: Evaluation and Application of a Novel Spatiotemporal Weighted Regression Approach

C. Fan, Xiang Que, Zhe Wang, Xiaogang Ma
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引用次数: 2

Abstract

The urban heat island (UHI) effect is an important topic for many cities across the globe. Previous studies, however, have mostly focused on UHI changes along either the spatial or temporal dimension. A simultaneous evaluation of the spatial and temporal variations is essential for understanding the long-term impacts of land cover on the UHI. This study presents the first evaluation and application of a newly developed spatiotemporal weighted regression framework (STWR), the performance of which was tested against conventional models including the ordinary least squares (OLS) and the geographically weighted regression (GWR) models. We conducted a series of simulation tests followed by an empirical study over central Phoenix, AZ. The results show that the STWR model achieves better parameter estimation and response prediction results with significantly smaller errors than the OLS and GWR models. This finding holds true when the regression coefficients are constant, spatially heterogeneous, and spatiotemporally heterogeneous. The empirical study reveals that the STWR model provides better model fit than the OLS and GWR models. The LST has a negative relationship with GNDVI and LNDVI and a positive relationship with GNDBI for the three years studied. Over the last 20 years, the cooling effect from green vegetation has weakened and the warming effect from built-up features has intensified. We suggest the wide adoption of the STWR model for spatiotemporal studies, as it uses past observations to reduce uncertainty and improve estimation and prediction results.
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土地覆盖对地表温度的影响:一种新型时空加权回归方法的评价与应用
城市热岛效应是全球许多城市关注的重要问题。然而,以前的研究主要集中在城市热岛在空间或时间维度上的变化。同时评价时空变化对于理解土地覆盖对城市热岛的长期影响至关重要。本文首次对新开发的时空加权回归框架(STWR)进行了评价和应用,并对常规模型(包括普通最小二乘法(OLS)和地理加权回归(GWR)模型)进行了性能测试。我们进行了一系列的模拟测试,并在亚利桑那州菲尼克斯市中心进行了实证研究。结果表明,STWR模型比OLS和GWR模型具有更好的参数估计和响应预测效果,且误差显著小于OLS和GWR模型。当回归系数恒定、空间异质性和时空异质性时,这一发现成立。实证研究表明,与OLS和GWR模型相比,STWR模型具有更好的模型拟合效果。在研究的3年中,地表温度与GNDVI和LNDVI呈负相关,与GNDBI呈正相关。近20年来,绿色植被的降温作用减弱,建筑地物的增温作用增强。我们建议在时空研究中广泛采用STWR模型,因为它使用过去的观测数据来减少不确定性并改善估计和预测结果。
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