A novel ensemble model using PLSR integrated with multiple activation functions based ELM: Applications to soft sensor development

Chemometrics and Intelligent Laboratory Systems - Tập 183 - Trang 147-157 - 2018
Xiaohan Zhang1,2, Qunxiong Zhu1,2, Zhi-Ying Jiang1,2, Yanlin He1,2, Yuan Xu1,2
1College of Information Science & Technology, Beijing University of Chemical Technology, Beijing 100029, China
2Engineering Research Center of Intelligent PSE, Ministry of Education of China, Beijing 100029, China

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