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Identification of Neuro-Fuzzy Hammerstein Model Based on Probability Density Function

Identification of Neuro-Fuzzy Hammerstein Model Based on Probability Density Function
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摘要 A new identification method of neuro-uzzy Hammerstein model based on probability density function(PDF) is presented,which is different from the idea that mean squared error(MSE) is employed as the index function in traditional identification methods.Firstly,a neuro-fuzzy based Hammerstein model is constructed to describe the nonlinearity of Hammerstein process without any prior process knowledge.Secondly,a kind of special test signal is used to separate the link parts of the Hammerstein model.More specifically,the conception of PDF is introduced to solve the identification problem of the neuro-fuzzy Hammerstein model.The antecedent parameters are estimated by a clustering algorithm,while the consequent parameters of the model are identified by designing a virtual PDF control system in which the PDF of the modeling error is estimated and controlled to converge to the target.The proposed method not only guarantees the accuracy of the model but also dominates the spatial distribution of PDF of the model error to improve the generalization ability of the model.Simulated results show the effectiveness of the proposed method. A new identification method of neuro-uzzy Hammerstein model based on probability density function(PDF) is presented,which is different from the idea that mean squared error(MSE) is employed as the index function in traditional identification methods.Firstly,a neuro-fuzzy based Hammerstein model is constructed to describe the nonlinearity of Hammerstein process without any prior process knowledge.Secondly,a kind of special test signal is used to separate the link parts of the Hammerstein model.More specifically,the conception of PDF is introduced to solve the identification problem of the neuro-fuzzy Hammerstein model.The antecedent parameters are estimated by a clustering algorithm,while the consequent parameters of the model are identified by designing a virtual PDF control system in which the PDF of the modeling error is estimated and controlled to converge to the target.The proposed method not only guarantees the accuracy of the model but also dominates the spatial distribution of PDF of the model error to improve the generalization ability of the model.Simulated results show the effectiveness of the proposed method.
作者 方甜莲 贾立
出处 《Journal of Donghua University(English Edition)》 EI CAS 2016年第5期703-707,共5页 东华大学学报(英文版)
基金 National Natural Science Foundation of China(No.61374044) Shanghai Municipal Science and Technology Commission,China(No.15510722100) Shanghai Municipal Education Commission,China(No.14ZZ088) Shanghai Talent Development Plan,China Shanghai Baoshan Science and Technology Commission,China(No.bkw2013120)
关键词 Hammerstein process special test signal neuro-fuzzy model(NFM) probability density function(PDF) Probability clustering guarantees separate converge prior generalization conception squared nonlinearity
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