基于新型多目标优化算法的钛基复合材料线切割响应性能对比分析

IF 1.3 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Soutrik Bose
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引用次数: 0

摘要

对复合钛基复合材料(TMC)的线切割电火花加工(WEDM)响应进行了性能对比分析,研究了不同输入参数(如功率(P)、峰值电流(IP)和截止时间(Toff))对复合钛基复合材料(TMC)加工的影响。提出了两种新的多目标优化算法:理想多目标遗传算法(DMOGA)和理想粒子群算法(DPSO)。与其他算法相比,DMOGA的主要优点是精度和鲁棒性。新颖性适用于有效大集合增长的迭代过程,表示为种群聚集到适应度函数。DPSO是一种迷人的计算方法,依赖于鸟类和鱼类的社会行为,其中称为粒子的“群”潜在解决方案在空间中探索问题,以获得多目标优化(MOO)解决方案,其中期望的目标函数在python中使用PSO获取。材料去除率(MRR)、表面粗糙度(SR)、切口宽度(KW)和过切度(OC)均接受实验研究。DMOGA时的综合期望值为0.716,提出DPSO时的综合期望值为0.813。与DMOGA相比,DPSO提高了13.547%,MOO的MRR为3.81 mm3/min, SR为0.79µm, KW为0.349 mm, OC为0.099 mm,综合理想度为0.813。当使用DPSO时,得到了改进的最优集。MRR为5.54%,SR为75.95%,KW为0.29%,OC为4.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparative Performance Analysis on WEDM Responses for Titanium Matrix Composite Using Novel Multi-objective Optimization Algorithms

Comparative Performance Analysis on WEDM Responses for Titanium Matrix Composite Using Novel Multi-objective Optimization Algorithms

A comparative performance analysis has been investigated on wire-cut electrical discharge machining (WEDM) responses while machining a hybrid titanium matrix composite (TMC) varying the key input parameters like power (P), peak current (IP) and time-off (Toff). Two novel multi-objective optimization algorithms are developed namely desirable multi-objective genetic algorithm (DMOGA) and desirable particle swarm optimization (DPSO). The principal advantage of DMOGA to other algorithm is accuracy and robustness. The novelty fits in the iterative progression of growth of efficient grandee set, uttered as population congregating to a fitness function. DPSO is an enthralling computational method depending on the social behavior of birds and fish where ‘swarm’ of potential solutions termed as particles explores the problem in space for obtaining the multi-objective optimization (MOO) solution where the desirable objective function is fetched in python using PSO. Experimental investigation is accepted on material removal rate (MRR), surface roughness (SR), kerf width (KW) and over cut (OC). Combined desirability in case of DMOGA is 0.716 which improved to 0.813 when DPSO is proposed. MOO is improved with DPSO of 13.547% when contrasted with DMOGA, with MRR of 3.81 mm3/min, SR of 0.79 µm, KW of 0.349 mm, OC of 0.099 mm and combined desirability of 0.813. Improved optimality set is obtained when DPSO is used. %improvement of MRR is 5.54%, SR is 75.95%, KW is 0.29% and OC is 4.21%.

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来源期刊
National Academy Science Letters
National Academy Science Letters 综合性期刊-综合性期刊
CiteScore
2.20
自引率
0.00%
发文量
86
审稿时长
12 months
期刊介绍: The National Academy Science Letters is published by the National Academy of Sciences, India, since 1978. The publication of this unique journal was started with a view to give quick and wide publicity to the innovations in all fields of science
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