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A Bayesian Approach to Control Loop Performance Diagnosis Incorporating Background Knowledge of Response Information

机译:结合响应信息背景知识的贝叶斯控制回路性能诊断方法

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摘要

To isolate the problem source degrading the control loop performance, this work focuses on how to incorporate background knowledge into Bayesian inference. In an effort to reduce dependence on the amount of historical data available, we consider a general kind of background knowledge which appears in many applications. The knowledge, known as response information, is about what faults can possibly affect each of the monitors. We show how this knowledge can be translated to constraints on the underlying probability distributions and introduced in the Bayesian diagnosis. In this way, the dimensionality of the observation space is reduced and thus the diagnosis can be more reliable. Furthermore, for the judgments to be consistent, the set of posterior probabilities of each possible abnormality that are computed from different observation subspaces is synthesized to obtain the partially ordered posteriors. The eigenvalue formulation is used on the pairwise comparison matrix. The proposed approach is applied to a diagnosis problem on an oil sand solids handling system, where it is shown how the combination of background knowledge and data enhances the control performance diagnosis even when the abnormality data are sparse in the historical database.
机译:为了隔离导致控制回路性能下降的问题源,本工作着重于如何将背景知识纳入贝叶斯推理中。为了减少对可用历史数据量的依赖,我们考虑了出现在许多应用程序中的一般背景知识。被称为响应信息的知识是关于哪些故障可能会影响每个监视器。我们将展示如何将此知识转换为对潜在概率分布的约束,并引入贝叶斯诊断中。以此方式,减小了观察空间的尺寸,因此诊断可以更加可靠。此外,为了使判断一致,将从不同的观察子空间计算出的每个可能异常的后验概率集合合成,以获得部分有序的后验。特征值公式用于成对比较矩阵。所提出的方法被应用于油砂固体处理系统的诊断问题,其中显示了背景知识和数据的组合如何增强控制性能的诊断,即使在历史数据库中稀疏异常数据的情况下也是如此。

著录项

  • 来源
    《Journal of control science and engineering》 |2017年第2期|9517385.1-9517385.10|共10页
  • 作者

    Sun Zhou; Yiming Wang;

  • 作者单位

    Department of Automation, Xiamen University, Xiamen 361005, China;

    Department of Automation, Xiamen University, Xiamen 361005, China;

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  • 正文语种 eng
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