基于 BP 和 GA-BP 神经网络的铝合金硬质阳极氧化膜抛光粗糙度预测

Zeliang Wang, Bing Tian, Lingchun Kong, Qingguo Meng
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引用次数: 0

摘要

为了获得更好的硬质阳极氧化膜抛光表面质量,采用 BP 神经网络和 GA-BP 神经网络两种深度学习模型建立了铝合金硬质阳极氧化膜抛光粗糙度预测模型。实验数据分为两组,一组数据用于模型训练,另一组数据用于模型测试。结果表明,BP 神经网络模型预测的抛光粗糙度与实验结果的均方误差为 1.33E-2,最大相对误差为 18.84%,最小相对误差为 0.77%,平均相对误差为 10.46%。误差相对较大,误差变化程度相对较大;GA-BP 神经网络模型预测的抛光粗糙度与试验结果的均方误差为 0.58E-2,最大相对误差为 14.28 %,最小相对误差为 0.51 %,平均相对误差为 6.61 %,误差较小,误差变化程度较小;GA-BP 模型的预测精度最高,泛化能力最强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of polishing roughness of aluminum alloy hard anodized film based on BP and GA-BP neural network
In order to obtain better-polished surface quality of hard anodic oxide film, two deep learning models of the BP neural network and GA-BP neural network were used to establish a roughness prediction model for aluminum alloy hard anodic oxide film polishing. The experimental data was divided into two groups, one group of data was used for model training, and the other group of data was used for model testing. The results showed that the mean square error between the polishing roughness predicted by the BP neural network model and the experimental results was 1.33E-2, the maximum relative error was 18.84 %, the minimum relative error was 0.77 %, and the average relative error was 10.46 %. The error is relatively large, and the degree of variation of the error is relatively large; the mean square error of the polishing roughness predicted by the GA-BP neural network model and the test results is 0.58E-2, the maximum relative error is 14.28 %, the minimum relative error is 0.51%, the average relative error is 6.61 %, the error is smaller, and the degree of error change is smaller; the prediction accuracy of the GA-BP model is the highest, and the generalization ability strongest.
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