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Rule-based versus probabilistic approaches to the diagnosis of faults in wastewater treatment processes

机译:基于规则和概率的方法来诊断废水处理过程中的故障

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摘要

The need for computer-based diagnostic tools in wastewater management is outlined. Rule-based and probabilistic approaches to the development of diagnostic expert systems are critically reviewed, and it is demonstrated that the rule-based approach has serious limitations which make it unsuitable for diagnostic tasks under conditions of uncertainty. It is shown that Bayesian belief networks (BBNs), a probabilistic approach, has none of these limitations and is well-suited to diagnosis under uncertainty. The theory and application of BBNs are outlined and illustrated by a simple example based on a wastewater treatment plant. A brief case study is presented of the development of a full-scale BBN for the diagnosis of faults in a wastewater treatment plant. It is concluded that BBNs are far superior to rule-based systems in their ability to diagnose faults in complex systems like wastewater treatment processes, whose behaviour is inherently uncertain.
机译:概述了废水管理中对基于计算机的诊断工具的需求。严格审查了基于规则和概率的诊断专家系统的开发方法,并且证明了基于规则的方法具有严重的局限性,使其不适合在不确定条件下进行诊断任务。结果表明,贝叶斯信念网络(BBNs)是一种概率方法,没有这些局限性,非常适合不确定性情况下的诊断。 BBN的理论和应用通过一个基于废水处理厂的简单示例进行了概述和说明。简要介绍了用于诊断废水处理厂故障的全尺寸BBN的开发案例。结论是,BBN在诊断复杂系统(如废水处理过程)中的故障方面具有远远优于基于规则的系统的能力,这些系统的行为本质上是不确定的。

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