Spatial heterogeneity of urban residential carbon emissions in China

Jinping Zhang, Yaochen Qin
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引用次数: 1

Abstract

This paper uses data from Chinese prefecture-level administrative unit to examine the extent of spatial variability of the impact that population, income, and climate have on urban residential carbon emissions. The residuals of OLS estimation of urban residential carbon emissions exhibit a significant spatial association according to the value of the Moran's I statistic. GWR model effectively reduces the spatial autocorrelation of residuals by considering spatial effect. Not only does it enhance the explanatory power of the model, but also gets local estimates of the parameters. Results show that, there is strong evidence of spatial heterogeneity for impacts of three independent variables: (1) local regression coefficients of population and income are both positive in the OLS and GWR models, but spatial variability of the effect of income is greater in the GWR model; (2) the coefficient estimate of the climate variable in the OLS model is negative, however, the direction is both positive and negative in the GWR model with the magnitude of the effect varying within and across the 302 prefecture-level administrative units in China; (3) one should carefully check the reasonableness of policy recommendations made based on global linear regression models that ignore or failed to properly assess the spatial dependence.
中国城市居民碳排放的空间异质性
本文以中国地级市为研究对象,考察了人口、收入和气候对城市居民碳排放影响的空间变异程度。根据Moran’s I统计量的值,城市居民碳排放OLS估计的残差表现出显著的空间关联。GWR模型考虑了空间效应,有效地降低了残差的空间自相关性。它不仅增强了模型的解释力,而且得到了参数的局部估计。结果表明,3个自变量的影响具有明显的空间异质性:(1)OLS和GWR模型中人口和收入的局部回归系数均为正,但GWR模型中收入影响的空间变异性更大;(2) OLS模型对气候变量的系数估计值为负,而GWR模型对气候变量的系数估计值方向为正、负,且影响程度在中国302个地级市内和地级市间存在差异;(3)基于全局线性回归模型提出的政策建议忽视或未能正确评估空间相关性,应仔细检查其合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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