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基于综合目标函数的神经网络多新息辨识算法
引用本文:徐宝昌,刘新乐.基于综合目标函数的神经网络多新息辨识算法[J].中国石油大学学报(自然科学版),2013(2):165-169.
作者姓名:徐宝昌  刘新乐
作者单位:中国石油大学地球物理与信息工程学院
基金项目:国家重大专项(2011ZX05021-003)
摘    要:为提高动态神经网络学习算法的辨识精度及抗噪性能,提出一种基于综合目标函数的多新息辨识算法。该算法基于多新息理论在最小均方误差目标函数中引入一辅助项构造综合目标函数,利用该目标函数进行网络输出层权值的训练,并采用牛顿法推导出输出层权值的递推计算公式。与已有二阶学习算法相比,新算法鲁棒性强,收敛速度快,辨识精度高。仿真结果验证了算法的有效性。

关 键 词:系统辨识  综合目标函数  神经网络  多新息
收稿时间:2012/9/5 0:00:00

Multi-innovation identification algorithm of neural network based on generalized objective function
XU Bao-chang and LIU Xin-le.Multi-innovation identification algorithm of neural network based on generalized objective function[J].Journal of China University of Petroleum,2013(2):165-169.
Authors:XU Bao-chang and LIU Xin-le
Affiliation:(College of Geophysics and Information Engineering in China University of Petroleum,Beijing 102249,China)
Abstract:To improve the identification accuracy and robustness to noise of dynamic neural network learning algorithm,multi-innovation identification algorithm based on a generalized objective function was presented. The generalized function based on multi-innovation theory was constructed by combining an auxiliary constraint term with the least mean square error. The weight matrix of output layer was trained using the generalized function. The recursive equations for training weight matrix of output layer were derived using Newton iterative algorithm. Compared with the existed second-order learning algorithm,this algorithm has stronger robustness,better convergent rate and accuracy. Simulation results show the efficiency of the new algorithm.
Keywords:system identification  generalized objective function  neural network  multi-innovation
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