发明名称 Hidden markov models for fault detection in dynamic systems
摘要 The invention is a system failure monitoring method and apparatus which learns the symptom-fault mapping directly from training data. The invention first estimates the state of the system at discrete intervals in time. A feature vector x of dimension k is estimated from sets of successive windows of sensor data. A pattern recognition component then models the instantaneous estimate of the posterior class probability given the features, p(wi|/x), 1</=i</=m. Finally, a hidden Markov model is used to take advantage of temporal context and estimate class probabilities conditioned on recent past history. In this hierarchical pattern of information flow, the time series data is transformed and mapped into a categorical representation (the fault classes) and integrated over time to enable robust decision-making.
申请公布号 US5465321(A) 申请公布日期 1995.11.07
申请号 US19930047135 申请日期 1993.04.07
申请人 THE UNITED STATES OF AMERICA AS REPRESENTED BY THE ADMINISTRATOR OF THE NATIONAL AERONAUTICS AND SPACE ADMINISTRATION 发明人 SMYTH, PADHRAIC J.
分类号 G06F11/25;G06K9/62;(IPC1-7):G06F15/80 主分类号 G06F11/25
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