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Bayesian Approach for Real-Time Probabilistic Contamination Source Identification

机译:实时概率污染源识别的贝叶斯方法

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摘要

Drinking water distribution system models have been increasingly utilized in the development and implementation of contaminant warning systems. This study proposes a Bayesian approach for probabilistic contamination source identification using a beta-binomial conjugate pair framework to identify contaminant source locations and times and compares the performance of this algorithm to previous work based on a Bayes' rule approach. The proposed algorithm is capable of directly assigning a probability to a potential source location and updating the probability through the use of a backtracking algorithm and Bayesian statistics. The evaluation of the performance associated with the two algorithms was conducted by a simple comparison, as well as a simulation study in terms of a conservative chemical intrusion event through both a small skeletonized network and a large all-pipe distribution system network. Results from the simple comparison showed that the beta-binomial approach was more responsive to changes in sensor signals. In terms of intrusion events, the beta-binomial approach was more selective than the Bayes' rule approach in identifying potential source node-time pairs and provided the flexibility to account for multiple possible injection locations.
机译:饮用水分配系统模型已越来越多地用于污染物预警系统的开发和实施中。这项研究提出了一种贝叶斯方法,用于使用β-二项式共轭对框架识别概率性污染源的位置和时间,以概率概率识别污染源,并将该算法的性能与基于贝叶斯规则方法的先前工作进行比较。所提出的算法能够直接将概率分配给潜在的源位置,并通过使用回溯算法和贝叶斯统计信息来更新概率。通过简单的比较以及通过小型骨架网络和大型全管道分配系统网络进行的保守化学入侵事件的模拟研究,对这两种算法的性能进行了评估。简单比较的结果表明,β-二项式方法对传感器信号的变化更敏感。就入侵事件而言,在识别潜在的源节点-时间对时,β-二项式方法比贝叶斯规则方法更具选择性,并提供了解决多个可能的注入位置的灵活性。

著录项

  • 来源
    《Journal of Water Resources Planning and Management》 |2014年第8期|04014019.1-04014019.11|共11页
  • 作者单位

    Environmental Engineering Program, Dept. of Biomedical, Chemical and Environmental Engineering, Univ. of Cincinnati, 701 Engineering Research Center, P.O. Box 210012, Cincinnati, OH 45221-0012;

    Environmental Engineering Program, Dept. of Biomedical, Chemical and Environmental Engineering, Univ. of Cincinnati, 701 Engineering Research Center, P.O. Box 210012, Cincinnati, OH 45221-0012;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Intrusion; Source identification; Backtracking; Bayesian; Conjugate pair; Bayes' rule;

    机译:入侵;来源识别;回溯;贝叶斯共轭对;贝叶斯法则;

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