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HMM based Modeling and Health Condition Assessment for Degradation Process

机译:基于HMM的降解过程建模与健康状况评估

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The modeling and health condition assessment for degradation process are crucial to the effective machine fault diagnosis and prognosis.They provide a potent tool for operators in decision-making by specifying the present machine state and estimating the remaining useful life (RUL).In this paper,the health conditions of degradation process are modeled as a hidden Markov chain and the physical outputs are modeled as the stochastic events whose probability depends on the Markov chain state.The expectation maximization (E-M) algorithm is proposed to learn parameters of the modeled hidden Markov model (HMM) and the iteration convergence is demonstrated.A maximum a posteriori (MAP) current health condition assessment approach is also proposed.
机译:退化过程的建模和健康状况评估对于有效的机器故障诊断和预测至关重要,它们可以通过指定当前机器状态并估计剩余使用寿命(RUL)为操作员提供强大的决策工具。 ,将退化过程的健康状况建模为隐马尔可夫链,将物理输出建模为随机事件,其概率取决于马尔可夫链状态。提出了期望最大化算法,以学习建模的隐马尔可夫参数提出了一种最大后验(MAP)当前健康状况评估方法。

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