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Estimating construction waste generation in the Greater Bay Area, China using machine learning

机译:利用机器学习估算大湾区建筑废弃物生成

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摘要

Reliable construction waste generation data is a prerequisite for any evidence-based waste management effort, but such data remains scarce in many developing economies owing to their rudimentary recording systems. By referring to several models proposed for estimating waste generation, this study aims to develop a reliable and accessible method for estimating construction waste generation based on limited publicly available data. The study has two objectives. Firstly, it aims to estimate construction waste generation by focusing on the Greater Bay Area (GBA) in China, one of the world's most thriving regions in terms of construction activities. Secondly, it aims to compare the strengths and weaknesses of various waste quantification models. 43 sets of annual socio-economic, construction-related and C&D waste generation data ranging from 2005 to 2019 were collected from the local government authorities. By analyzing the data using four types of machine learning models, namely multiple linear regression, decision tree, grey models, and artificial neural network, it is found that all calibrated models, with their respective strengths and weaknesses, can produce acceptable results with the testing R~2 ranging from 0.756 to 0.977. This study also reveals that the 11 cities in the GBA produced a total of about 364 million m3 of construction waste in 2018. The result can be used for monitoring the urban metabolism, quantifying carbon emission, developing a circular economy, valorizing recycled materials, and strategic planning of waste management facilities in the GBA. The research findings also contribute to the methodologies for estimating waste generation using limited data.
机译:可靠的建筑废物生成数据是任何基于证据的废物管理工作的先决条件,但由于其基本的记录系统,许多发展中经济体仍然稀缺。通过参考若干建议用于估计废物产生的模型,本研究旨在开发基于有限的公开可用数据来估算建筑垃圾产生的可靠和可访问的方法。这项研究有两个目标。首先,它旨在通过专注于中国的大湾地区(GBA)来估算建设废物,这是世界上最繁荣的地区的建筑活动。其次,它旨在比较各种废物量化模型的优势和弱点。从当地政府机构收集了2005年至2019年的每年社会经济,与C&D浪费生成数据的43套​​。通过使用四种类型的机器学习模型分析数据,即多个线性回归,决策树,灰色模型和人工神经网络,发现所有校准的模型,具有各自的优点和缺点,可以通过测试产生可接受的结果R〜2范围从0.756到0.977。本研究还揭示了GBA中11个城市在2018年共产生了约36400万立方米的建筑垃圾。结果可用于监测城市新陈代谢,量化碳排放,制定循环经济,储存回收材料,以及GBA中废物管理设施的战略规划。研究结果还有助于使用有限数据估算浪费的方法。

著录项

  • 来源
    《Waste Management》 |2021年第10期|78-88|共11页
  • 作者单位

    Department of Real Estate and Construction Faculty of Architecture The University of Hong Kong Pokfulam Hong Kong Special Administrative Region;

    Department of Real Estate and Construction Faculty of Architecture The University of Hong Kong Pokfulam Hong Kong Special Administrative Region 7/F Knowles Building The University of Hong Kong Pokfulam Road Hong Kong Special Administrative Region;

    Department of Real Estate and Construction Faculty of Architecture The University of Hong Kong Pokfulam Hong Kong Special Administrative Region;

    Department of Real Estate and Construction Faculty of Architecture The University of Hong Kong Pokfulam Hong Kong Special Administrative Region;

    Department of Real Estate and Construction Faculty of Architecture The University of Hong Kong Pokfulam Hong Kong Special Administrative Region;

    Faculty of Built Environment University of New South Wales Sydney Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Construction waste; Waste quantification; Greater Bay Area; China; Machine learning;

    机译:建筑垃圾;浪费量化;大湾区;中国;机器学习;

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