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White layer thickness prediction in wire-EDM using CuZn-coated wire electrode - ANFIS modelling

机译:使用镀铜锌的焊丝在电火花线切割机中预测白层厚度-ANFIS建模

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摘要

Wire cutting electrical discharge machining (WEDM) is a non-traditional technique by which the required profile is acquired using spark energy. Concerning wire cutting, precision machining is necessary to achieve high product quality. White layer thickness (WLT) is one of the most important factors for evaluating surface quality. Furthermore, WLT is among the most critical constraints in cutting parameters selection in WEDM. In this research, the adaptive neuro-fuzzy inference system (ANFIS) was used to predict the WLT in WEDM using a coated wire electrode. Experimental runs were conducted to validate the ANFIS model. The predicted data were compared with measured values, and the average prediction error for WLT was 2.61%. Based on the ANFIS model, minimum WLT is achieved at the lowest levels of peak current and pulse on-time with high level of pulse off-time.
机译:线切割放电加工(WEDM)是一种非传统技术,通过该技术可以使用火花能量获取所需的轮廓。关于线切割,必须进行精密加工才能获得高质量的产品。白层厚度(WLT)是评估表面质量的最重要因素之一。此外,WLT是WEDM切削参数选择中最关键的约束之一。在这项研究中,自适应神经模糊推理系统(ANFIS)用于使用涂层电极丝预测WEDM中的WLT。进行实验运行以验证ANFIS模型。将预测数据与测量值进行比较,WLT的平均预测误差为2.61%。基于ANFIS模型,在峰值电流和脉冲导通时间的最低水平以及脉冲关断时间的最高水平下,可以实现最小WLT。

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