A HMM-based fault detection method for piecewise stationary industrial processes

Stefan Windmann, F. Jungbluth, O. Niggemann
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引用次数: 11

Abstract

In this paper, fault detection in piecewise stationary industrial processes is investigated. Such processes can be modeled as sequences of distinct system modes in which the respective expectation values and variances of process variables do not change. In particular, piecewise stationary processes with autonomous transitions between system modes are considered in this work, i.e. processes without observable trigger events such as on/off signals. A Hidden Markov Model (HMM) is employed as underlying system model for such processes. System modes are modeled as hidden state variables with given transition probabilities. Continuous process variables are assumed to be Gaussian distributed with constant second order statistics in each system mode. A novel HMM-based fault detection method is proposed which incorporates the Viterbi algorithm into a fault detection method for hybrid industrial processes. Experimental results for the proposed fault detection method are presented for a module of the Lemgo Smart Factory.
基于hmm的分段平稳工业过程故障检测方法
本文研究了分段平稳工业过程中的故障检测问题。这样的过程可以被建模为一系列不同的系统模式,其中各自的期望值和过程变量的方差不会改变。特别是,在本工作中考虑了具有系统模式之间自主转换的分段平稳过程,即没有可观察到的触发事件(如开/关信号)的过程。隐马尔可夫模型(HMM)被用作这些过程的底层系统模型。系统模式被建模为具有给定转移概率的隐藏状态变量。假定连续过程变量为高斯分布,在各系统模式下二阶统计量为常数。提出了一种新的基于hmm的故障检测方法,将Viterbi算法融入到混合工业过程的故障检测方法中。针对Lemgo智能工厂的一个模块给出了该故障检测方法的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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