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Inference and learning methodology of belief-rule-based expert system for pipeline leak detection

机译:基于信念规则的管道泄漏检测专家系统的推理与学习方法

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摘要

Belief rule based expert systems are an extension of traditional rule based systems and are capable of representing more complicated causal relationships using different types of information with uncertainties. This paper describes how the belief rule based expert systems can be trained and used for pipeline leak detection. Pipeline operations under different conditions are modelled by a belief rule base using expert knowledge, which is then trained and fine tuned using pipeline operating data, and validated by testing data. All training and testing data are collected and scaled from a real pipeline. The study demonstrates that the belief rule based system is flexible, can be adapted to represent complicated expert systems, and is a valid novel approach for pipeline leak detection.
机译:基于信念规则的专家系统是传统基于规则的系统的扩展,并且能够使用具有不确定性的不同类型的信息来表示更复杂的因果关系。本文描述了如何训练基于信念规则的专家系统并将其用于管道泄漏检测。信念规则库使用专家知识对不同条件下的管道运行进行建模,然后使用管道运行数据对管道进行训练和微调,并通过测试数据进行验证。所有培训和测试数据都是从真实管道中收集和缩放的。研究表明,基于信念规则的系统具有灵活性,可以适应于表示复杂的专家系统,是一种有效的管道泄漏检测新方法。

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