A novel fault diagnosis method based on optimal relevance vector machine
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Youxian Sun | Jiangang Lu | Shiming He | Weihua Gui | Yalin Wang | Chunhua Yang | Xinggao Liu | Long Xiao | W. Gui | Youxian Sun | Chunhua Yang | Xinggao Liu | Yalin Wang | Jiangang Lu | Long Xiao | Shimin He
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