Chemical process modelling using the extracted informative data sets based on attenuating excitation inputs

Li-Kun Yuan1, Bao-Chang Xu1, Zhi-Shan Liang1, Ya-Xin Wang1
1Department of Automation, College of Information Science and Engineering, China University of Petroleum Beijing, Beijing 102249, China

Tài liệu tham khảo

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