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Optimal Selection of Machining Conditions in the Electrojet Drilling Process Using Hybrid NN-DF-GA Approach

机译:混合NN-DF-GA方法在电喷钻孔加工条件中的最佳选择

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摘要

This article presents a hybrid neural network, desirability function, and genetic algorithm (NN-DF-GA) approach for optimal selection of the input process parameters for optimizing the multiresponse parameters of the electrojet drilling (EJD) process. EJD is a promising nontraditional machining technique that is used for machining microholes (<1 mm in diameter) in difficult-to-machine materials. The proposed approach first uses a back propagation neural network to formulate a fitness function for predicting the response parameters of the process. From the network output, the desirability method obtains a composite fitness function for further use in the genetic algorithm. The genetic algorithm predicts the optimal input parametric combinations and simultaneously optimizes the multiresponse characteristics of the process. Simulated results confirm the feasibility of this approach and show a good agreement with experimental results for a wide range of machining conditions.
机译:本文提出了一种混合神经网络,合意函数和遗传算法(NN-DF-GA)方法,用于优化输入过程参数的选择,以优化电喷钻孔(EJD)过程的多响应参数。 EJD是一种很有前途的非传统加工技术,可用于加工难加工材料中的微孔(直径小于1毫米)。所提出的方法首先使用反向传播神经网络来制定适合度函数,以预测过程的响应参数。从网络输出中,期望方法获得复合适应度函数,以进一步在遗传算法中使用。遗传算法可预测最佳输入参数组合,并同时优化过程的多响应特性。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。

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