Ying Zhao, Zhe Tao, Ying Li, Huige Sun, Jingrui Tang, Qianya Wang, Liang Guo, Weiwei Song, Bailian Larry Li
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引用次数: 0
摘要
城市固体废物(MSW)产生量的预测在有效的废物管理中起着至关重要的作用。本研究的主要目的是建立准确预测城市固体废物产生量(MSWG)的模型,并分析主要变量对 MSWG 的影响。为提高模型的预测准确性,从 12 个类别中筛选出 50 多个城市变量作为原始变量。根据筛选结果,主导变量分为四类:城市绿化、人口规模和居住密度、区域经济发展和居民收支。在七种机器学习方法中,反向传播(BP)神经网络的模型评价效果最好。江苏省、浙江省和山东省 BP 神经网络模型的 R2 分别为 0.969、0.941 和 0.971。山东省的预测精度(93.8%)最好,其次是江苏省(92.3%)和浙江省(72.7%)。通过对主导变量与社会消费品零售总额之间的相关性进行挖掘,发现地区 GDP 和社会消费品零售总额是影响社会消费品零售总额的最重要的主导变量。此外,城市可用水量与人口数量和居住密度并不绝对相关。本研究中使用的方法是区域/地方废物管理和 MSWG 控制政策制定者的实用工具。
Prediction of municipal solid waste generation and analysis of dominant variables in rapidly developing cities based on machine learning - a case study of China.
Prediction of municipal solid waste (MSW) generation plays an essential role in effective waste management. The main objectives of this study were to develop models for accurate prediction of MSW generation (MSWG) and analyze the influence of dominant variables on MSWG. To elevate the model's prediction accuracy, more than 50 municipal variables were considered original variables, which were selected from 12 categories. According to the screening results, the dominant variables are classified into four categories: urban greening, population size and residential density, regional economic development and resident income and expenditure. Among the seven machine learning methods, back propagation (BP) neural network has the best model evaluation effect. The R2 of the BP neural network model of Jiangsu, Zhejiang and Shandong provinces were 0.969, 0.941 and 0.971 respectively. The prediction accuracy of Shandong province (93.8%) was the best, followed by Jiangsu province (92.3%) and Zhejiang province (72.7%). The correlation between dominant variables and the MSWG was mined, suggesting that regional GDP and the total retail sales of consumer goods were the most important dominant variables affecting MSWG. Moreover, the MSWG might not absolutely associate with the population size and residential density. The method used in this study is a practical tool for policymakers on regional/local waste management and MSWG control.
期刊介绍:
Waste Management & Research (WM&R) publishes peer-reviewed articles relating to both the theory and practice of waste management and research. Published on behalf of the International Solid Waste Association (ISWA) topics include: wastes (focus on solids), processes and technologies, management systems and tools, and policy and regulatory frameworks, sustainable waste management designs, operations, policies or practices.