2017
DOI: 10.1109/tpel.2016.2608842
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A Data-Driven Fault Diagnosis Methodology in Three-Phase Inverters for PMSM Drive Systems

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Cited by 392 publications
(176 citation statements)
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“…The advantage with respect to a classical probabilistic temporal model like Markov chains is that the dynamic Bayesian networks are stochastic transition models factored over a number of random variables, over which a set of conditional dependency assumption is defined [4][5][6]. We adopt dynamic Bayesian networks to predict the future state of variables taking into consideration the observation of variables up to now.…”
Section: Series Parallel and Voting Systemmentioning
confidence: 99%
“…The advantage with respect to a classical probabilistic temporal model like Markov chains is that the dynamic Bayesian networks are stochastic transition models factored over a number of random variables, over which a set of conditional dependency assumption is defined [4][5][6]. We adopt dynamic Bayesian networks to predict the future state of variables taking into consideration the observation of variables up to now.…”
Section: Series Parallel and Voting Systemmentioning
confidence: 99%
“…PCA is able to use multivariate data for sensor selection of BN input . Related works used this integration by modeling causal dependencies among the principal components (PCs) for prognostics and diagnostics . They used PCA to reduce dimensions of BN into PCA‐BN model for inferring the accidental consequences of an abnormality in the works.…”
Section: Introductionmentioning
confidence: 99%
“…Traditional risk modeling approaches are designed based on the Newtonian paradigm in which it is believed that systems can be easily understood by breaking them down to their smallest elements and describing how these elements interact . Most published risk and reliability analysis methods are based on statistical models of time‐to‐failure data assuming that systems' behavior is stable enough to accurately predict over their lifetime . The past cannot be compared well to current circumstances, and there is no coherent statistical model of system failure time that is proven to accurately predict the behavior of a system over its lifetime.…”
Section: Introductionmentioning
confidence: 99%