Improved canonical correlation analysis-based fault detection methods for industrial processes
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Steven X. Ding | Zhiwen Chen | Zhikun Hu | Yuri A.W. Shardt | Yuri A. W. Shardt | Kai Zhang | S. Ding | Kai Zhang | Zhi-wen Chen | Zhi-kun Hu
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