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Fault detection based on belief rule base with online updating attribute weight

机译:基于信念规则库和在线更新属性权重的故障检测

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In engineering practice, fault detection for complex system is becoming more and more difficult, because enough quantitative observation data can not be obtained. Hence, it is necessary to combine the experts' knowledge and historical data. Belief rule based expert systems have shown excellent performance in modeling complicated relationships with different types of information. However, in current studies, the attribute weights in belief rule base (BRB) are usually determined by experts or system designers. When the engineering environment changes, the attribute weights can not be updated online and this will lose some environment information. In order to solve this problem, this paper aims to propose a BRB model with online updating attribute weight. For the calculation method, the coefficient of variation-based weighting (CVBW) method has been used to calculate the attribute weight and when the new input data are available, the attribute weight can be updated online. A case study for pipeline leak detection has been studied to validate the efficiency of the online updating attribute weight and the experiment has shown that BRB with online updating attribute weight can estimate the leak size and time of pipeline accurately.
机译:在工程实践中,由于无法获得足够的定量观测数据,因此复杂系统的故障检测变得越来越困难。因此,有必要结合专家的知识和历史数据。基于信念规则的专家系统在对具有不同类型信息的复杂关系进行建模时表现出出色的性能。但是,在当前的研究中,信念规则库(BRB)中的属性权重通常由专家或系统设计人员确定。当工程环境更改时,无法在线更新属性权重,这将丢失一些环境信息。为了解决这个问题,本文旨在提出一种具有在线更新属性权重的BRB模型。对于此计算方法,已使用基于变异系数的加权(CVBW)方法来计算属性权重,当有新的输入数据可用时,可以在线更新属性权重。以管道泄漏检测为例,验证了在线更新属性权重的有效性,实验表明,具有在线更新属性权重的BRB可以准确估计管道的泄漏量和泄漏时间。

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