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基于局部PLS的多输出过程自适应软测量建模方法(英文) 被引量:2

Local Partial Least Squares Based Online Soft Sensing Method for Multi-output Processes with Adaptive Process States Division
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摘要 Local learning based soft sensing methods succeed in coping with time-varying characteristics of processes as well as nonlinearities in industrial plants. In this paper, a local partial least squares based soft sensing method for multi-output processes is proposed to accomplish process states division and local model adaptation,which are two key steps in development of local learning based soft sensors. An adaptive way of partitioning process states without redundancy is proposed based on F-test, where unique local time regions are extracted.Subsequently, a novel anti-over-fitting criterion is proposed for online local model adaptation which simultaneously considers the relationship between process variables and the information in labeled and unlabeled samples. Case study is carried out on two chemical processes and simulation results illustrate the superiorities of the proposed method from several aspects. Local learning based soft sensing methods succeed in coping with time-varying characteristics of processes as well as nonlinearities in industrial plants. In this paper, a local partial least squares based soft sensing method for multi-output processes is proposed to accomplish process states division and local model adaptation, which are two key steps in development of local learning based soft sensors. An adaptive way of partitioning process states without redundancy is proposed based on F-test, where unique local time regions are extracted. Subsequently, a novel anti-over-fitting criterion is proposed for online local model adaptation which simulta- neously considers the relationship between process variables and the information in labeled and unlabeled samples. Case study is carried out on two chemical processes and simulation results illustrate the superiorities of the proposed method from several aspects.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2014年第7期828-836,共9页 中国化学工程学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61273160) the Fundamental Research Funds for the Central Universities(14CX06067A,13CX05021A)
关键词 软测量方法 输出过程 自适应过程 最小二乘法 在线 局部模型 状态划分 非线性问题 Local learning Online soft sensing Partial least squares F-test Multi-output process Process state division
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