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源于Wiener非线性模型的软仪表系统建模及其辨识(英文) 被引量:2

Soft Sensor Model Derived from Wiener Model Structure: Modeling and Identification
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摘要 The processes of building dynamic and static relationships between secondary and primary variables are usually integrated in most of nonlinear dynamic soft sensor models. However, such integration limits the estimation accuracy of soft sensor models. Wiener model effectively describes dynamic and static characteristics of a system with the structure of dynamic and static submodels in cascade. We propose a soft sensor model derived from Wiener model structure, which is an extension of Wiener model. Dynamic and static relationships between secondary and primary variables are built respectively to describe the dynamic and static characteristics of system. The feasibility of this model is verified. Then the expression of discrete model is derived for soft sensor system. Conjugate gradient algorithm is applied to identify the dynamic and static model parameters alternately. Corresponding update method for soft sensor system is also given. Case studies confirm the effectiveness of the proposed model, alternate identification algorithm, and update method. The processes of building dynamic and static relationships between secondary and primary variables are usually integrated in most of nonlinear dynamic soft sensor models. However, such integration limits the estimation accuracy of soft sensor models. Wiener model effectively describes dynamic and static characteristics of a system with the structure of dynamic and static submodels in cascade. We propose a soft sensor model derived from Wiener model structure, which is an extension of Wiener model. Dynamic and static relationships between secondary and primary variables are built respectively to describe the dynamic and static characteristics of system. The feasibility of this model is verified. Then the expression of discrete model is derived for soft sensor system. Conjugate gradi-ent algorithm is applied to identify the dynamic and static model parameters alternately. Corresponding update method for soft sensor system is also given. Case studies confirm the effectiveness of the proposed model, alternate identification algorithm, and update method.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2014年第5期538-548,共11页 中国化学工程学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61104218,21006127) the National Basic Research Program of China(2012CB720500) the Science Foundation of China University of Petroleum(YJRC-2013-12)
关键词 软测量模型 模型结构 WIENER模型 静态特性 软测量系统 辨识 建模 共轭梯度算法 soft sensor, Wiener model, modeling, alternate identification
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