College of Civil and Transportation Engineering, Shenzhen University, Shenzhen 518060, China; Sino-Australia Joint Research Centre in BIM and Smart Construction, Shenzhen University, Shenzhen 518060, China.
College of Civil and Transportation Engineering, Shenzhen University, Shenzhen 518060, China; Department of Real Estate and Construction, The University of Hong Kong, Pokfulam Road, Hong Kong, China.
Waste Manag. 2024 Jul 15;184:109-119. doi: 10.1016/j.wasman.2024.05.042. Epub 2024 May 28.
In recent years, construction and demolition waste (CDW) landfills landslide accidents have occurred globally, with consequences varying due to surrounding environmental factors. Risk monitoring is crucial to mitigate these risks effectively. Existing studies mainly focus on improving risk assessment accuracy for individual landfills, lacking the ability to rapidly assess multiple landfills at a regional scale. This study proposes an innovative approach utilizing deep learning models to quickly locate suspected landfills and develop risk assessment models based on surrounding environmental factors. Shenzhen, China, with significant CDW disposal pressure, is chosen as the empirical research area. Empirical findings from this study include: (1) the identification of 52 suspected CDW landfills predominantly located at the administrative boundaries within Shenzhen, specifically in the Longgang, Guangming, and Bao'an districts; (2) landfills at the lower risk of landslides are typically found near the northern borders adjacent to cities like Huizhou and Dongguan; (3) landfills situated at the internal administrative junctions generally exhibit higher landslide risks; (4) about 70 % of these landfills are high-risk, mostly located in densely populated areas with substantial rainfall and complex topographies. This study advances landfill landslide risk assessments by integrating computer vision and environmental analysis, providing a robust method for governments to rapidly evaluate risks at CDW landfills regionally. The adaptable models can be customized for various urban and broadened to general landfills by adjusting specific indicators, enhancing environmental safety protocols and risk management strategies effectively.
近年来,全球范围内发生了多起因建筑和拆除废物(CDW)填埋场滑坡而引发的事故,其后果因周围环境因素而异。风险监测对于有效降低这些风险至关重要。现有研究主要集中于提高单个填埋场的风险评估准确性,而缺乏快速评估区域尺度多个填埋场的能力。本研究提出了一种利用深度学习模型快速定位疑似填埋场并基于周围环境因素开发风险评估模型的创新方法。中国深圳面临着巨大的 CDW 处置压力,被选为实证研究区域。本研究的实证结果包括:(1)识别出 52 个疑似 CDW 填埋场,主要位于深圳的行政边界内,特别是在龙岗、光明和宝安等区;(2)位于靠近惠州和东莞等城市北部边界的填埋场,滑坡风险较低;(3)位于内部行政交界处的填埋场通常具有较高的滑坡风险;(4)约 70%的填埋场属于高风险,主要位于人口密集、降雨量较大且地形复杂的地区。本研究通过将计算机视觉和环境分析相结合,推进了填埋场滑坡风险评估,为政府提供了一种快速评估 CDW 填埋场区域风险的强大方法。通过调整特定指标,这些适应性强的模型可以针对各种城市和更广泛的一般填埋场进行定制,从而有效地增强环境安全协议和风险管理策略。