标题: 地下储槽渗漏监测系统可靠度评估与最佳化设计原则之探讨
Reliability Assessment and Optimization of Leak Detection System of Underground Storage Tank
作者: 单信瑜
SHAN HSIN-YU
国立交通大学土木工程学系(所)
关键字: 地下储槽;渗漏侦测;数值模拟;资料探勘;可靠度;机器学习;Underground Storage Tank (UST);Leak Detection Monitoring;Numerical Simulation;Reliability;Data Mining;Machine Learning
公开日期: 2009
摘要: 地下储槽及管线,因材质发生锈蚀或老化的材料受应力扭曲,极易造成破损泄漏。国内的加油站数量庞大,经证实或疑似污染事件层出不穷。虽然历年来政府颁布加油站地下储槽与管线管理的相关法令,但是由环保署调查资料显示,许多加油站的渗漏监测仍无法符合法令的标准。此外,由于政府管理措施未臻完善,国内许多业者经由监测发现有疑似污染时,大多自行采许取整治措施,政府部门无从介入瞭解实际污染状况。目前台湾与世界各国加油站监测的方法虽以采行多年,但是除了监测仪器本身的精确度经过验证之外,诸如土壤气体监测、地下水监测等监测成效和现场水文地质条件以及设施配置紧密相关的方法,其可靠度均未经过详细之研究。因此在各国的法令规章中,对于土壤气体和地下水监测的结果判定均无明确的标准可循。因此,虽然土壤气体和地下水监测为成本最低且最符合环境监测定义、且全台湾加油站最普遍采用的监测方法,但其监测之有效性却是监测方法中可靠度最被质疑的。本研究将针对包括土壤气体与地下水监测的各种不同的渗漏侦测方法利用资料分析和数值模式模拟加以评估。根据大量模拟加油站储槽与管线配置时,现地水文地质条件参数的合理变化范围下取得加油站范围内三维土壤气体与油品分布。利用所得结果,可以计算出在加油站范围内各网格上设置不同深度和井筛长度的土壤气体监测井和地下水监测井可以得知之油气浓度和浮油厚度,建立虚拟加油站渗漏土壤气体浓度与地下水监测浮油厚度资料库。之后,利用资料探勘与机器学习方式,进行渗漏监测可靠度因子分析以及预测模式,并可据以建立决策支援模式。并利用类神经网路或机器学习方法萃取模拟结果,所得之线性或非线性方程式可供提出加油站监测之最佳化原则。
Although leak detection methods for underground storage tanks and pipelines have been in use for many years, their reliability was never rigorously assessed. There are well established precision standards for the sensors used for monitoring, but appropriateness of the vapor or ground water monitoring wells in which they are installed or applied has not been subject to scrutiny. Furthermore, the criteria for determination of a possible leak are purely empirical. There are a large percentage of gasoline stations in Taiwan that installed soil vapor extraction systems simply to control the concentration of volatile organic chemicals in soil vapor without knowing for sure whether the underground storage tanks and pipelines are leaking or not. The first objective of the study is to assess the reliability of leak detection methods, especially, soil vapor and ground water monitoring under various hydrogeological conditions. The evaluation of each method will be based on the relationship between the time lag from leakage occurs till detection is confirmed. Reliable criteria for determining the occurrence of leak can be established based on the results of the simulations. A large number of simulations with various site layout and hydrogeological conditions will make up the ‘virtual’ databank for data mining. The second objective of the study is to perform a system optimization analysis. Since the soil and ground water monitoring system layout is complex and non-linear, its optimization must rely on advanced methodologies. This study proposes using data mining with machine learning tools such as artificial neural network or support vector machine to analyze the results of a large number of numerical simulations and develop linear or nonlinear equations. The results could be used to perform optimization and decision support of leak detection monitoring system design based on reliability and cost.
官方说明文件#: NSC98-2221-E009-133
URI: http://hdl.handle.net/11536/101430
https://www.grb.gov.tw/search/planDetail?id=1897807&docId=314243
显示于类别:Research Plans


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