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Effect of the AWJM Method on the Machined Surface Layer of AZ91D Magnesium Alloy and Simulation of Roughness Parameters Using Neural Networks

机译:AWJM方法对AZ91D镁合金加工表面层的影响以及粗糙度参数的神经网络模拟

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摘要

This paper investigates the effect of change of the abrasive flow rate and the jet feed on the effectiveness of machining of AZ91D casting magnesium alloy. The evaluation of the state of the workpiece surface was based on surface and area roughness parameters (2D and 3D), which provided data on: irregularities formed on the workpiece edge surface (water jet exit), the surface quality after cutting, the workpiece surface chamfering, microhardness of the machined surface, and of specimen cross-sections (along the water jet impact). The process was tested for two parameter settings: abrasive flow rate 50 at cutting speed vf = 5–140 mm/min, and abrasive flow rate 100% (0.5 kg/min) at vf = 5–180 mm/min. The results demonstrate a significant effect of the abrasive flow rate and the jet feed velocity on the quality of machined surface (surface roughness and irregularities). In addition, selected 2D surface roughness parameters were modelled using artificial neural networks (radial basis function and multi-layered perceptron). It has been shown that neural networks are a suitable tool for prediction of surface roughness parameters in abrasive water jet machining (AWJM).
机译:本文研究了磨料流量和射流进给量的变化对AZ91D铸造镁合金加工效率的影响。工件表面状态的评估基于表面和区域粗糙度参数(2D和3D),该参数提供以下数据:工件边缘表面上形成的不规则性(喷水口),切割后的表面质量,工件表面倒角,加工表面的显微硬度和样品横截面(以及水射流的冲击)。测试了该工艺的两个参数设置:切削速度vf = 5–140 mm / min时的磨料流量为50,而vf = 5–180 mm / min时的磨料流量为100%(0.5 kg / min)。结果表明,磨料流速和射流进给速度对加工表面质量(表面粗糙度和不规则度)有显着影响。此外,使用人工神经网络(径向基函数和多层感知器)对选定的2D表面粗糙度参数进行建模。已经表明,神经网络是用于预测磨料水射流加工(AWJM)中的表面粗糙度参数的合适工具。

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