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Big data analytics to identify illegal construction waste dumping: A Hong Kong study

机译:大数据分析识别非法建筑废物倾销:香港研究

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Illegal dumping, referring to the intentional and criminal abandonment of waste in unauthorized areas, has long plagued governments and environmental agencies worldwide. Despite the tremendous resources spent to combat it, the surreptitious nature of illegal dumping indicates the extreme difficulty in its identification. In 2006, the Construction Waste Disposal Charging Scheme (CWDCS) was implemented, regulating that all construction waste must be disposed of at government waste facilities if not otherwise properly reused or recycled. While the CWDCS has significantly improved construction waste management in Hong Kong, it has also triggered illegal dumping problems. Inspired by the success of big data in combating urban crime, this paper aims to identify illegal dumping cases by mining a publicly available data set containing more than 9 million waste disposal records from 2011 to 2017. Using behavioral indicators and up-to-date big data analytics, possible drivers for illegal dumping (e.g., long queuing times) were identified. The analytical results also produced a list of 546 waste hauling trucks suspected of involvement in illegal dumping. This paper contributes to the understanding of illegal dumping behavior and joins the global research community in exploring the value of big data, particularly for combating urban crime. It also presents a three-step big data-enabled urban crime identification methodology comprising 'Behavior characterization', Sig data analytical model development', and 'Model training, calibration, and evaluation'.
机译:非法倾销,指在未经授权地区的故意和刑事遗弃废物中,在全球范围内长期困扰各国政府和环境机构。尽管花费了巨大的资源,但非法倾销的秘密性质表明其识别中的极度困难。 2006年,实施建筑废物处理收费计划(CWDC),规范所有建筑垃圾必须在政府废物设施中处置,如果没有另外重复使用或回收。虽然CWDC在香港的建筑废物管理方面具有显着改善,但它也引发了非法倾销问题。通过打击城市犯罪的大数据成功的启发,本文旨在通过挖掘从2011年至2017年的超过900万废物处置记录的公开数据集来确定非法倾销案件。使用行为指标和最新的大数据分析,识别非法倾倒(例如,长排队时间)的可能驱动程序。分析结果还制作了涉嫌参与非法倾销的546次废物牵引车的清单。本文有助于了解非法倾销行为,加入全球研究界探索大数据的价值,特别是对抗城市犯罪。它还介绍了一个三步大数据的城市犯罪识别方法,包括“行为表征”,SIG数据分析模型开发“和”模型培训,校准和评估“。

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