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首页> 外文期刊>Advances in Mechanical Engineering >Study on high-speed cutting parameters optimization of AlMn1Cu based on neural network and genetic algorithm:
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Study on high-speed cutting parameters optimization of AlMn1Cu based on neural network and genetic algorithm:

机译:基于神经网络和遗传算法的AlMn1Cu高速切削参数优化研究:

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摘要

In this article, the cutting parameters optimization method for aluminum alloy AlMn1Cu in high-speed milling was studied in order to properly select the high-speed cutting parameters. First, a back propagation neural network model for predicting surface roughness of AlMn1Cu was proposed. The prediction model can improve the prediction accuracy and well work out the higher-order nonlinear relationship between surface roughness and cutting parameters. Second, considering the constraints of technical requirements on surface roughness, a mathematical model for optimizing cutting parameters based on the Bayesian neural network prediction model of surface roughness was established so as to obtain the maximum machining efficiency. The genetic algorithm adopting the homogeneous design to initialize population as well as steady-state reproduction without duplicates was also presented. The application indicates that the algorithm can effectively avoid precocity, strengthen global optimization, and increase the calc...
机译:为了正确选择高速切削参数,研究了铝合金AlMn1Cu高速铣削切削参数的优化方法。首先,提出了一种用于预测AlMn1Cu表面粗糙度的反向传播神经网络模型。该预测模型可以提高预测精度,并很好地解决了表面粗糙度与切削参数之间的高阶非线性关系。其次,考虑到表面粗糙度的技术要求约束,建立了基于贝氏神经网络的表面粗糙度预测模型优化切削参数的数学模型,以获得最大的加工效率。提出了采用均匀设计初始化种群以及无重复的稳态繁殖的遗传算法。应用表明,该算法可以有效避免早熟,加强全局优化,提高计算效率。

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