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Multi-Objective Optimization of Abrasive Waterjet Machining Process Parameters Using Particle Swarm Technique

机译:基于粒子群技术的磨料水射流加工参数多目标优化

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摘要

Multi-objective optimization is carried out for the first time to optimize abrasive waterjet machining (AWJM) process parameters for graphite. Experiments are carried out by Response Surface Methodology (RSM) using Box-Behnken method. The input process parameters considered are pressure (P), traverse rate (TR) and mesh size (MS). Results are analyzed using Analysis of Variance (ANOVA) and response surface considering individually output parameters such as depth of cut (DOC) and surface roughness (R_a). ANOVA and response surface analyses indicated that similar combinations of A WJM process parameters such as high pressure (176 MPa), medium mesh size (# 100) and low traverse rate (1000 mm/min) resulted in higher depth of cut as well as lower R_a. Therefore, in order to verify the above combinations and to improve productivity, multi-objective optimization is carried out using Particle Swarm Optimization (PSO) to achieve higher depth of cut and low R_a together. From the PSO analysis, it is observed that pressure of 154 MPa, traverse rate of 1877 mm/min and mesh size of # 100 result in high depth of cut and low R_a together. The result obtained from the PSO is compared with that of ANOVA. The outcome of this study will be useful to the manufacturing engineers for selecting appropriate input AWJM process parameters for machining graphite, which has various applications such as aerospace, defence, etc.
机译:首次进行多目标优化,以优化石墨的磨料水射流加工(AWJM)工艺参数。实验是使用Box-Behnken方法通过响应面方法(RSM)进行的。所考虑的输入过程参数为压力(P),横移速率(TR)和筛孔尺寸(MS)。使用方差分析(ANOVA)和响应面并考虑单独的输出参数(例如切深(DOC)和表面粗糙度(R_a))来分析结果。方差分析和响应面分析表明,类似的A WJM工艺参数组合,例如高压(176 MPa),中等筛孔尺寸(#100)和低横移速率(1000 mm / min),导致较高的切削深度和较低的切削深度R_a。因此,为了验证上述组合并提高生产率,使用粒子群优化(PSO)进行了多目标优化,以共同实现更高的切削深度和较低的R_a。从PSO分析中,可以看到154 MPa的压力,1877 mm / min的横向移动速度和#100的网眼尺寸共同导致高切深和低R_a。从PSO获得的结果与ANOVA进行比较。这项研究的结果对于制造工程师为加工石墨选择合适的输入AWJM工艺参数很有用,该参数具有多种应用,例如航空航天,国防等。

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