基于空间统计的污水管网风险检测方法

Yangjie Zhang, H. Mu, X. Yi
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引用次数: 1

摘要

本文提出了一种基于风险的优化管网不同检测区域的方法,为决策者提供合理、定量的风险信息。该方法建立了一种新颖的风险模型,将空间统计技术与风险评估模型相结合,模拟管网各部分的风险水平,从而优先对管网进行检查。在该方法中,管网不同区域的风险是由失效概率和失效严重程度的乘积得出的。以某城市污水管网为例,对该方法进行了优先级检测,验证了该方法的可行性。
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A Spatial Statistical Approach for Risk-based Inspection of Sewer Network
In this paper, a developed risk-based methodology for optimizing the different inspected regions of pipeline networks is proposed to provide the reasonable and quantitative risk information for decision makers. This method established a novel risk model, which combines spatial statistical technology and risk assessment model to simulate the risk level of all parts of pipeline network, so as to give priority to pipeline network inspection. The risk in different regions of the pipeline network is derived from the product of failure probability and failure severity in our approach. As a case study, the inspection priority of a city's sewer network is carried out according to our method and, consequently, the feasibility of this method is verified.
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