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A Bayesian Fault Diagnosis Method Incorporating Background Knowledge of Abnormality Signs

机译:兼容异常迹象背景知识的贝叶斯故障诊断方法

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In process industries, fault diagnosis is to isolate the problem source that degrades control loop performance. In order to reduce dependence on the amount of historical data, this paper focuses on the use of background knowledge and incorporating it into Bayesian diagnosis. We formulated a kind of knowledge, known as Abnormality Signs, as constraints on the underlying probabilities and introduced those constraints into Bayesian diagnosis framework. In this way, the observation space dimensionality can be reduced. The proposed approach is evaluated by an application to a diagnosis problem of a simulated oil sand slurry handling system. The advantage of combining background knowledge with historical data is achieved even when the abnormality is sparse.
机译:在流程产业中,故障诊断是分离降低控制循环性能的问题来源。为了减少对历史数据量的依赖,本文侧重于使用背景知识并将其纳入贝叶斯诊断。我们制定了一种知识,称为异常迹象,作为对潜在概率的限制,并将这些限制引入贝叶斯诊断框架。以这种方式,可以减少观察空间维度。所提出的方法是通过应用于模拟油砂浆处理系统的诊断问题的应用来评估。即使异常稀疏,也可以实现与历史数据结合背景知识的优点。

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