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Improving Adaptive Learning Rate of BP Neural Network for the Modelling of 3D Woven Composites Using the Golden Section Law
作者姓名:易洪雷  丁辛
作者单位:Yi Honglei,Ding XinCollege of Textiles,Dong Hua University,Shanghai,200051
摘    要:Focused on various BP algorithms with variable learning rate based on network system error gradient, a modified learning strategy for training non-linear network models is developed with both the incremental and the decremental factors of network learning rate being adjusted adaptively and dynamically. The golden section law is put forward to build a relationship between the network training parameters, and a series of data from an existing model is used to tram and test the network parameters. By means of the evaluation of network performance in respect to convergent speed and predicting precision, the effectiveness of the proposed learning strategy can be illustrated.


Improving Adaptive Learning Rate of BP Neural Network for the Modelling of 3D Woven Composites Using the Golden Section Law
Yi Honglei,Ding XinCollege of Textiles,Dong Hua University,Shanghai.Improving Adaptive Learning Rate of BP Neural Network for the Modelling of 3D Woven Composites Using the Golden Section Law[J].Journal of Donghua University,2001,18(1).
Authors:Yi Honglei  Ding XinCollege of Textiles  Dong Hua University  Shanghai
Institution:College of Textiles, Dong Hua University, Shanghai, 200051
Abstract:Focused on various BP algorithms with variable learning rate based on network system error gradient, a modified learning strategy for training non-linear network models is developed with both the incremental and the decremental factors of network learning rate being adjusted adaptively and dynamically. The golden section law is put forward to build a relationship between the network training parameters, and a series of data from an existing model is used to train and test the network parameters. By means of the evaluation of network performance in respect to convergent speed and predicting precision, the effectiveness of the proposed learning strategy can be illustrated.
Keywords:BP algorithm  adaptive adjustment  network training parameter  learning strategy  network performance evaluation  
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