Optimization of polyoxymethylene spur gear pair using meta-heuristic algorithms: A comparative study

Marah A. Elsiedy, Abdelhameed A. A. Zayed, Hesham A. Hegazi, A. El-Kassas
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Abstract

Design-optimization of power transmitted elements such as gears is a complicated process to accomplish as the mathematical model acquires to be in compliance with the optimization algorithm used. Utilization of technical standards and handbooks assisted engineers and designers with designing the gears, however the results were inefficient, thus meta-heuristic algorithms were approved for optimization, for example, genetic algorithm. In this paper, optimization of single stage spur gear pair made of polyoxymethylene material was carried out using genetic algorithm (GA), artificial bee colony (ABC), JAYA, grey wolf optimizer (GWO), and whale optimization algorithm (WOA) in MATLAB. Three single functions were used as objectives, those are, weight, power loss, and center distance. Module ( m), face width ( b), number of pinion teeth ( z1), and finally profile shifts ( x1, x2) served as design variables. Unlike steel gears which were constrained by handling root bending stress and flank pressure, more constraints were added to the problem with the increase of complexity such as root and flank temperature, tooth deformation, and wear abrasion. The results showed a significant decrease in all three objectives when optimizing each objective solely with variation of the variables. It is also observed that JAYA has the superiority in decreasing the three objectives in comparison to GA and ABC nevertheless, in agreement with GWO, and WOA.
使用元启发式算法优化聚甲醛正齿轮副:比较研究
齿轮等动力传输元件的设计优化是一个复杂的过程,因为数学模型必须符合所使用的优化算法。利用技术标准和手册可以帮助工程师和设计师设计齿轮,但结果效率不高,因此元启发式算法(如遗传算法)被认可用于优化。本文使用 MATLAB 中的遗传算法(GA)、人工蜂群(ABC)、JAYA、灰狼优化器(GWO)和鲸鱼优化算法(WOA)对聚甲醛材料制成的单级正齿轮副进行了优化。三个单一函数被用作目标,即重量、功率损耗和中心距。模数(m)、齿面宽度(b)、小齿轮齿数(z1)和轮廓移动(x1、x2)作为设计变量。与处理齿根弯曲应力和齿面压力的钢齿轮不同,随着问题复杂性的增加,增加了更多的约束条件,如齿根和齿面温度、齿变形和磨损。结果表明,随着变量的变化,仅对每个目标进行优化时,所有三个目标都明显下降。同时还发现,与 GA 和 ABC 相比,JAYA 在降低三个目标方面更具优势,这与 GWO 和 WOA 一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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