Adaptive-VDHMM for prognostics in tool condition monitoring

Wu Yue, Y. S. Wong, G. Hong
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引用次数: 2

Abstract

Among techniques used in condition monitoring, those for prognostics are the most challenging. This paper presents a Hidden Markov Model (HMM) based approach for prognostics in TCM. A HMM model usually employs a typical working condition for establishing and verifying the model. However, in tool condition monitoring (TCM), the cutting tool encounters a range of cutting conditions. It is not economical to establish a HMM for every cutting condition. Therefore, an adaptive-Variable Duration Hidden Markov Model (VDHMM) is proposed whereby the training information is adapted to a target test under different cutting conditions to those for establishing the initial model. It is found that with an appropriately selected feature set and state number, the proposed algorithm can significantly reduce the mean absolute percentage error (MAPE).
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刀具状态监测中的自适应vdhmm预测
在状态监测中使用的技术中,预测技术是最具挑战性的。提出了一种基于隐马尔可夫模型(HMM)的中医预后预测方法。HMM模型通常采用典型工况来建立和验证模型。然而,在刀具状态监测(TCM)中,刀具会遇到一系列的切削条件。为每一种切削工况建立HMM是不经济的。为此,提出了一种自适应变时长隐马尔可夫模型(VDHMM),将训练信息适应于不同切割条件下的目标测试,而不是用于建立初始模型。结果表明,在适当选择特征集和状态数的情况下,该算法可以显著降低平均绝对百分比误差(MAPE)。
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