Multi-rate hidden Markov models and their application to machining tool-wear classification

ICASSP '04). IEEE International Conference(2004)

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摘要
The paper introduces a multi-rate hidden Markov model (multi-rate HMM) for multi-scale stochastic modeling of non-stationary processes. The multi-rate HMM decomposes the process variability into scale-based components, and characterizes both the intra-scale temporal evolution of the process and the inter-scale interactions. Applying these models to the machine tool-wear classification problem in a titanium milling task shows that multi-rate HMMs outperform HMMs in terms of both accuracy and confidence of predictions.
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关键词
decision theory,hidden Markov models,machining,pattern classification,signal processing,wear,machining tool-wear classification,multi-rate HMM,multi-rate hidden Markov models,multi-scale stochastic modeling,nonstationary processes,signal processing,titanium milling task
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