An intelligent diagnostic and prognostic framework for large-scale rotating machinery in the presence of scarce failure data
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Xiaoyu Yang | David Mba | Yingjie Yang | Xiaochuan Li | Ian Bennett | Xiaoyu Yang | D. Mba | I. Bennett | Xiaochuan Li | Yingjie Yang
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