利用深度学习技术评估雨水管网状况

IF 3.6 2区 工程技术 Q1 ENGINEERING, CIVIL
Abdulgani Nur Yussuf, Nilmini Pradeepika Weerasinghe, Haosen Chen, Lei Hou, Damayanthi Herath, Mohammad Rashid, Guomin Zhang, Sujeeva Setunge
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引用次数: 0

摘要

由于雨水管网地域广阔、结构复杂,对其进行检查和状态监测变得越来越重要。无人管理的管道存在重大风险,如漏水和洪水,对城市基础设施构成威胁。然而,只有一小部分管道进行了年度检查。目前的 CCTV 检查方法耗费大量人力和时间,而且缺乏判断的一致性。因此,本研究旨在提出一种经济高效的半自动化方法,将计算机视觉技术与深度学习(DL)算法相结合。本研究使用 YOLOv8 开发了一个深度学习模型,通过实例分割来识别《澳大利亚供水服务协会(WSA)准则》中描述的六种类型的缺陷。Banyule 市议会的闭路电视录像被纳入该模型,边界框的平均精度 (mAP@0.5) 为 0.92,掩膜的平均精度为 0.90。为评估所提议方法的经济可行性,进行了成本效益分析。尽管初始开发成本较高,但据观察,每年的持续成本降低了 50%。该模型可以获得更快、更准确和更一致的结果,从而每年可以检测更多的管道。该模型可作为每个地方议会对澳大利亚雨水管道工程进行状态监测评估的工具,最终提高基础设施资产管理的弹性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Leveraging deep learning techniques for condition assessment of stormwater pipe network

Leveraging deep learning techniques for condition assessment of stormwater pipe network

Inspections and condition monitoring of the stormwater pipe networks have become increasingly crucial due to their vast geographical span and complex structure. Unmanaged pipelines present significant risks, such as water leakage and flooding, posing threats to urban infrastructure. However, only a small percentage of pipelines undergo annual inspections. The current practice of CCTV inspections is labor-intensive, time-consuming, and lacks consistency in judgment. Therefore, this study aims to propose a cost-effective and efficient semi-automated approach that integrates computer vision technology with Deep Learning (DL) algorithms. A DL model is developed using YOLOv8 with instance segmentation to identify six types of defects as described in Water Services Association (WSA) Code of Australia. CCTV footage from Banyule City Council was incorporated into the model, achieving a mean average precision (mAP@0.5) of 0.92 for bounding boxes and 0.90 for masks. A cost–benefit analysis is conducted to assess the economic viability of the proposed approach. Despite the high initial development costs, it was observed that the ongoing annual costs decreased by 50%. This model allowed for faster, more accurate, and consistent results, enabling the inspection of additional pipelines each year. This model serves as a tool for every local council to conduct condition monitoring assessments for stormwater pipeline work in Australia, ultimately enhancing resilient and safe infrastructure asset management.

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来源期刊
Journal of Civil Structural Health Monitoring
Journal of Civil Structural Health Monitoring Engineering-Safety, Risk, Reliability and Quality
CiteScore
8.10
自引率
11.40%
发文量
105
期刊介绍: The Journal of Civil Structural Health Monitoring (JCSHM) publishes articles to advance the understanding and the application of health monitoring methods for the condition assessment and management of civil infrastructure systems. JCSHM serves as a focal point for sharing knowledge and experience in technologies impacting the discipline of Civionics and Civil Structural Health Monitoring, especially in terms of load capacity ratings and service life estimation.
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