基于BP神经网络和遗传算法的插齿机切削参数优化

Chang Rui-li, H. Jun, Cui Guo-wei, Zhang Lei
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引用次数: 0

摘要

将Abaqus有限元仿真技术和BP神经网络及遗传算法应用于薄壁环齿切削参数的优化研究。利用Abaqus有限元分析软件建立了环齿插拔的仿真模型,利用BP神经网络建立了切削力预测模型。利用BP神经网络和遗传算法函数极值优化特征,建立了齿环插齿参数优化模型,并利用Abaqus仿真模型对其进行了验证。成功地优化了相关的开槽参数,即开槽速度、反切量和周向进给速度,减小了开槽力。实验结果表明,基于BP神经网络和遗传算法的环齿插齿参数优化模型可以有效地实现插齿参数的优化。
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Optimization of Gear Shaper Cutting Parameters Based on BP Neural Network and Genetic Algorithm
Abaqus finite element simulation technology and BP neural network and genetic algorithm are applied to the study on the optimization of the cutting parameters of the thin-walled ring gear. A simulation model of ring gear shaping was established by Abaqus finite element analysis software, a cutting force prediction model was built using BP neural network. With the help of the BP neural network and genetic algorithm function extreme value optimization feature, the gear ring gear shaping parameter optimization model was established, and the Abaqus simulation model was used to test it. The relevant slotting parameters, namely the slotting speed, the amount of back-cutting and the circumferential feed speed have been successfully optimized, and the slotting force has been reduced. The experimental results show that the parameter optimization model of ring gear shaping based on BP neural network and genetic algorithm can effectively realize the optimization of slotting parameters.
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