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Reasoning under Uncertainty for Knowledge-Based Fault Diagnosis: A Comparative Study

机译:基于知识的故障诊断不确定性下的推理:一个比较研究

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This paper addresses reasoning under uncertainty for knowledge-based fault diagnosis. We illustrate how the fault diagnosis task is influenced by uncertainty. Furthermore, we compare how the diagnosis task is solved in the Bayesian and the Dempster-Shafer reasoning framework, in terms of both diagnostic performance and additional objectives, like transparency, adaptability, and computational efficiency. Since the diagnosis problem is influenced by different kinds of uncertainty, it is not straightforward to determine the optimal reasoning method. First, the different uncertain influences all have their own characteristics, asking for different reasoning approaches. So, to solve the whole problem in one reasoning framework, approximations and trade-offs need to be made. Second, which types of uncertainty are present and to what extent, is highly application-specific. Therefore, the best framework can only be assigned after the problem, the uncertainty characteristics, and the user requirements are known.
机译:本文讨论了基于知识的故障诊断中不确定性下的推理。我们说明了故障诊断任务如何受到不确定性的影响。此外,我们在诊断性能和其他目标(如透明度,适应性和计算效率)方面,比较了在贝叶斯和Dempster-Shafer推理框架中如何解决诊断任务。由于诊断问题受到各种不确定性的影响,因此确定最佳推理方法并不容易。首先,不同的不确定因素都有各自的特点,要求采用不同的推理方法。因此,为了在一个推理框架中解决整个问题,需要进行近似和权衡。其次,存在哪些类型的不确定性以及在何种程度上存在不确定性,这与应用程序高度相关。因此,只有在知道问题,不确定性特征和用户需求之后才能分配最佳框架。

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