城市化
环境科学
水准点(测量)
兴趣点
工业化
航程(航空)
余热
中国
城市热岛
遥感
计算机科学
气象学
地理
地图学
热交换器
市场经济
材料科学
物理
考古
经济增长
经济
复合材料
热力学
作者
Qian Chen,Xuchao Yang,Zutao Ouyang,Naizhuo Zhao,Qinghong Jiang,Tingting Ye,Qi Jun,Wenze Yue
标识
DOI:10.1016/j.envpol.2020.115183
摘要
Rapid urbanization and industrialization in China stimulated the great increase of energy consumption, which leads to drastic rise in the emission of anthropogenic waste heat. Anthropogenic heat emission (AHE) is a crucial component of urban energy budget and has direct implications for investigating urban climate and environment. However, reliable and accurate representation of AHE across China is still lacking. This study presented a new machine learning-based top–down approach to generate a gridded anthropogenic heat flux (AHF) benchmark dataset at 1 km spatial resolution for China in 2010. Cubist models were constructed by fusing points-of-interest (POI) data of varying categories and multisource remote sensing data to explore the nonlinear relationships between various geographic predictors and AHE from different heat sources. The strategy of developing specific models for different components and exploiting the complementary features of POIs and remote sensing data generated a more reasonable distribution of AHF. Results showed that the AHF values in urban centers of metropolises over China range from 60 to 190 W m−2. The highest AHF values were observed in some heavy industrial zones with value up to 415 W m−2. Compared with previous studies, the spatial distribution of AHF from different heating components was effectively distinguished, which highlights the potential of POI data in improving the precision of AHF mapping. The gridded AHF dataset can serve as input of urban numerical models and can help decision makers in targeting extreme heat sources and polluters in cities and making differentiated and tailored strategies for emission mitigation.
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