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神经网络Kalman滤波算法及多组分光度分析应用
引用本文:李志良 曾鸽鸣. 神经网络Kalman滤波算法及多组分光度分析应用[J]. 分析测试学报, 1996, 15(4): 29-34
作者姓名:李志良 曾鸽鸣
作者单位:湖南大学化学化工系,日本国立技科大学
基金项目:日本政府文部省、与科振会及国家教委与自科基金
摘    要:前馈神经网络NN误差反向传播算法(BP)收敛速度较慢且常陷入局部极优值等,针对此种缺陷提出了一种基于扩展Kalman滤波的快速学习新算法(EF)。与BP相比,EF法不仅学习效率高收敛速度快,数值稳定性好,而且所需学习次数少,调节参数少,由非线性系统建模与辨识的模拟结果表明,EF是提高网络收敛速度改善神经学习性能的一种有效方法,谈谈用于多组分光谱分析,结果良好。

关 键 词:神经网络,反传算法,扩展滤波;多元分析

Kalman Filtering Neural Networks Algorithm and Its Application to Multicomponent Spectrophotometric Analysis
Li Zhilian, Zeng Gemin,Wu Xiaoping,Hi Yoshida and Qiu Ximin,Li Menglong,Shi Leming. Kalman Filtering Neural Networks Algorithm and Its Application to Multicomponent Spectrophotometric Analysis[J]. Journal of Instrumental Analysis, 1996, 15(4): 29-34
Authors:Li Zhilian   Zeng Gemin  Wu Xiaoping  Hi Yoshida  Qiu Ximin  Li Menglong  Shi Leming
Abstract:In view of the shortcomings of the backpropagation(BP)algorithm,such as slow convergence and frequent local-optimization deadlock ,we propose a new quick-learning neural network algorithm based on extended Kalman filtering (EF).As compared with the BP algorithm,EF method has a higher learning efficiency, faster convergence, better stability ,less learning cycle and smaller hidden-neuron number. Simulation based on nonlinear-system modeling and recognition indicates,that EF is an efficient way to improve convergent rate and to promote learning capability of the neural networks.It has been satisfactorily applied to multicomponent analysis of pharmaceutical preparations.
Keywords:Neural networks  Extended Kalman filtering  Backpropagation  Multivariate analysis.  
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