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Support vector machine regression for predicting dimensional features of die-sinking electrical discharge machined components

机译:支持向量机回归用于预测压模电气放电加工组件的尺寸特征

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Die-sinking electrical discharge machining produces components with low repeatability as the process is inherently stochastic. Effects of its inputs and process parameters on the components’ dimensions are difficult to predict. This paper investigates the influence of input parameters like gap voltage, current, and pulse characteristics like percentage of “open”, “normal”, “arc” and “short” pulses on the dimensional features of the machined components. It discusses the methodology for extraction and estimation of amount of area machined, undercut and dimension by image processing. Support vector machine regression is applied to predict the dimension features based on the input and condition parameters.
机译:模具沉降的电气放电加工生产具有低可重复性的组件,因为该过程本质上是随机的。其输入和过程参数对组件尺寸的影响难以预测。本文研究了输入参数的影响,如间隙电压,电流和脉冲特性,如“打开”,“正常”,“ARC”和“短”脉冲的百分比上的加工组件的尺寸特征。它讨论了通过图像处理提取和估计面积加工,底切和尺寸的量的方法。支持向量机回归应用于基于输入和条件参数来预测维度特征。

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