Spatiotemporal variations, influence factors, and simulation of global cooling degree days

被引:0
作者
Yuanzheng Li
Tian He
Yuchan Wang
Linan Sun
Yi Yan
Guosong Zhao
机构
[1] Henan University of Economics and Law,School of Resources and Environment
[2] Henan University of Economics and Law,Academician Laboratory for Urban and Rural Spatial Data Mining of Henan Province
[3] Zhengzhou University,School of Earth Science and Technology
[4] Northern Federal University,Faculty of Economics
[5] South-Central Minzu University,Key Laboratory of Resources Conversion and Pollution Control of the State Ethnic Affairs Commission, College of Resources and Environmental Science
[6] China University of Geosciences,School of Geography and Information Engineering
来源
Environmental Science and Pollution Research | 2023年 / 30卷
关键词
Cooling degree days; Climate change; Energy consumption; Thermal environment; PM; GIS; Relative importance analysis; General regression neural network;
D O I
暂无
中图分类号
学科分类号
摘要
The cooling degree days (CDDs) can indicate the hot climatic impacts on energy consumption and thermal environment comfort effectively. Nevertheless, seldom studies focused on the spatiotemporal characteristics, influence factors, and simulation of global CDDs. This study analyzed the spatial–temporal characteristics of global CDDs from 1970 to 2018 and in the future, explored five determinants, and simulated CDDs and their interannual changing rates. The results showed that the global CDDs were generally higher at lower latitudes and altitudes. Many places experienced significant positive changes of CDDs (p < 0.05), and the rates became larger at lower latitudes and attitudes. In the future, most CDDs had the sustainability trends. Besides, significant negative partial correlations existed between not only CDDs but also their variation rates with latitude, altitude, and average enhanced vegetation index in the summer, while positive with the annual PM2.5, distance to large waterbodies (p = 0.000). Moreover, the values and variation rates of CDDs can be deduced using the generalized regression neural network method. The root-mean-square errors were 231.73 °C * days and 1.71 °C * days * year−1, respectively. These conclusions were helpful for the energy-saving for cooling with the climate change and optimization of thermal environment.
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页码:26625 / 26635
页数:10
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