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Improving Adaptive Learning Rate of BP Neural Network for the Modelling of 3D Woven Composites Using the Golden Section Law

机译:使用黄金分割定律提高BP神经网络对3D编织复合材料建模的自适应学习率

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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 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.
机译:针对基于网络系统误差梯度的学习率可变的各种BP算法,开发了一种用于训练非线性网络模型的改进学习策略,该方法可以自适应地,动态地调整网络学习率的增量和减量因素。提出了黄金分割定律,以建立网络训练参数之间的关系,并使用现有模型中的一系列数据来训练和测试网络参数。通过评估网络性能的收敛速度和预测精度,可以说明所提出学习策略的有效性。

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