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Optimum selection of machining conditions in abrasive flow machining using neural network

机译:使用神经网络的磨料流加工中加工条件的最佳选择

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摘要

Abrasive flow machining (AFM) is a finishing process with wider bounds of application areas, which offers both automation and flexibility in final machining operations. This paper presents the use of neural network for modeling and optimal selection of input parameters of AFM process. First, a generalized back-propagation neural network with four inputs, two outputs, and one hidden layer has been used to establish the process model. A second network, which parallelizes the augmented Lagrange multiplier (ALM) algorithm, determines the corresponding optimal machining parameters by minimizing a performance index subject to appropriate operating constraints. Simulation results confirm the feasibility of this approach, and show a good agreement with experimental results for a wide range of machining conditions. To validate the optimization results of the neural network approach, optimization of the AFM process has also been carried out using genetic algorithm (GA).
机译:磨料流加工(AFM)是一种精加工工艺,其应用领域范围更广,在最终加工操作中既自动化又具有灵活性。本文介绍了使用神经网络对AFM过程的输入参数进行建模和最佳选择。首先,已使用具有四个输入,两个输出和一个隐藏层的广义反向传播神经网络来建立过程模型。并行化增强拉格朗日乘数(ALM)算法的第二个网络,通过最小化受适当操作约束的性能指标来确定相应的最佳加工参数。仿真结果证实了该方法的可行性,并且在各种加工条件下均与实验结果吻合良好。为了验证神经网络方法的优化结果,还使用遗传算法(GA)对AFM过程进行了优化。

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