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A hybrid process model for EDM based on finite-element method and Gaussian process regression

机译:基于有限元和高斯过程回归的电火花加工混合过程模型

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摘要

This paper proposed a hybrid intelligent process model, based on finite-element method (FEM) and Gaussian process regression (GPR), for electrical discharge machining (EDM) process. A model of single-spark EDM process has been constructed based on FEM method, considering the latent heat, variable heat distribution coefficient of cathode (f_c), and plasma flushing efficiency (PFE), to predict material removal rate (MRR) and surface roughness (Ra). This model was validated using reported analytical and experimental results. Then, a GPR model was proposed to establish relationship between input process parameters (pulse current, pulse duration, and discharge voltage) and the process responses (MRR and Ra) for EDM process. The GPR model was trained, tested, and tuned using the data generated from the numerical simulations. Through the GPR model, it was found that responses of EDM process can be accurately predicted for the chosen process conditions. Therefore, for the selection of optimum parameters, the hybrid intelligent model proposed in this paper can be used in EDM process.
机译:本文提出了一种基于有限元方法(FEM)和高斯过程回归(GPR)的混合智能过程模型,用于电火花加工(EDM)过程。基于潜热,阴极的可变热分布系数(f_c)和等离子体冲洗效率(PFE),基于有限元方法,建立了单火花电火花加工工艺模型,以预测材料去除率(MRR)和表面粗糙度(镭)使用报告的分析和实验结果验证了该模型。然后,提出了一种GPR模型,以建立输入工艺参数(脉冲电流,脉冲持续时间和放电电压)与EDM工艺的工艺响应(MRR和Ra)之间的关系。 GPR模型是使用数值模拟生成的数据进行训练,测试和调整的。通过GPR模型,发现可以针对所选过程条件准确预测EDM过程的响应。因此,为选择最佳参数,本文提出的混合智能模型可用于电火花加工。

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