Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, 100094, China; University of Chinese Academy of Sciences, Beijing, 100094, China.
Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, 100094, China; University of Chinese Academy of Sciences, Beijing, 100094, China; Key Laboratory of Earth Observation of Hainan Province, Hainan Research Institute, Aerospace Information Research Institute, Chinese Academy of Sciences, Sanya, 572029, China.
Environ Pollut. 2022 Apr 15;299:118917. doi: 10.1016/j.envpol.2022.118917. Epub 2022 Jan 28.
Anthropogenic heat emission (AHE) is an important driver of urban heat islands (UHIs). Further, both urban thermal environment research and sustainable development planning require an efficient estimation of anthropogenic heat flux (AHF). Therefore, this study proposed an improved multi-source AHF model, which was constructed using diverse data sources and small-scale samples, to better represent the spatiotemporal distribution of AHF. The performances of three machine learning algorithms (Cubist, gradient boosting decision tree, and simple linear regression) were quantitatively evaluated, and the impact of spatiotemporal heterogeneity on AHF estimation was considered for the first time. The results showed that multi-source datasets and sophisticated algorithms could more effectively reduce the estimation error and improve the accuracy of the spatiotemporal distribution of AHF than simple linear regression. In practical applications, the Cubist model performed better, with prediction errors being less than 0.9 W⋅m. Further, the characteristics of different heat sources from the model outputs varied widely, and the building metabolic heat exhibited significant seasonal spatiotemporal variations, which were largely determined by the regional climate. In contrast, industrial and transportation heat showed marginal monthly fluctuations. Similarly, spatiotemporal heterogeneity significantly affected the estimation of building metabolic heat (0.62 W⋅m), but it did not affect other heat sources. The proposed improved AHF model was verified to effectively capture the spatiotemporal variations of building heat and solve the issue of overestimation of industrial heat in urban regions. This study provides new methods and ideas for the accurate spatiotemporal quantification of AHF that can supplement future studies on climate warming, UHI, and air pollution.
人为热排放 (AHE) 是城市热岛 (UHI) 的重要驱动因素。此外,城市热环境研究和可持续发展规划都需要高效估计人为热通量 (AHF)。因此,本研究提出了一种改进的多源 AHF 模型,该模型使用多种数据源和小样本构建,以更好地表示 AHF 的时空分布。定量评估了三种机器学习算法 (Cubist、梯度提升决策树和简单线性回归) 的性能,首次考虑了时空异质性对 AHF 估计的影响。结果表明,多源数据集和复杂算法比简单线性回归更有效地降低估计误差,提高 AHF 时空分布的准确性。在实际应用中,Cubist 模型表现更好,预测误差小于 0.9 W⋅m。此外,模型输出的不同热源特征差异很大,建筑代谢热表现出显著的季节性时空变化,主要由区域气候决定。相比之下,工业和交通热仅表现出微小的月度波动。同样,时空异质性显著影响建筑代谢热的估计 (0.62 W⋅m),但对其他热源没有影响。验证表明,所提出的改进 AHF 模型能够有效捕捉建筑热量的时空变化,解决城市区域工业热量高估的问题。本研究为 AHF 的精确时空量化提供了新的方法和思路,可补充未来关于气候变暖、UHI 和空气污染的研究。