A novel hybrid Fick’s law algorithm-quasi oppositional–based learning algorithm for solving constrained mechanical design problems

IF 2.4 4区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Pranav Mehta, Betül Sultan Yildiz, Sadiq M. Sait, Ali Riza Yildiz
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引用次数: 1

Abstract

Abstract In this article, a recently developed physics-based Fick’s law optimization algorithm is utilized to solve engineering optimization challenges. The performance of the algorithm is further improved by incorporating quasi-oppositional–based techniques at the programming level. The modified algorithm was applied to optimize the rolling element bearing system, robot gripper, planetary gear system, and hydrostatic thrust bearing, along with shape optimization of the vehicle bracket system. Accordingly, the algorithm realizes promising statistical results compared to the rest of the well-known algorithms. Furthermore, the required number of iterations was comparatively less required to attain the global optimum solution. Moreover, deviations in the results were the least even when other optimizers provided better or more competitive results. This being said that this optimization algorithm can be adopted for a critical and wide range of industrial and real-world challenges optimization.
求解约束机械设计问题的一种新的混合菲克定律算法-准对立学习算法
摘要本文利用近年来发展起来的基于物理的菲克定律优化算法来解决工程优化难题。该算法的性能通过在编程层面结合准对立技术得到进一步提高。将改进后的算法应用于滚动体轴承系统、机器人夹持器、行星齿轮系统和静压推力轴承的优化,以及车辆支架系统的形状优化。因此,与其他已知算法相比,该算法实现了令人满意的统计结果。此外,获得全局最优解所需的迭代次数相对较少。此外,即使当其他优化器提供更好或更具竞争力的结果时,结果中的偏差也是最小的。也就是说,这种优化算法可以用于关键的和广泛的工业和现实世界的挑战优化。
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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来源期刊
Materials Testing
Materials Testing 工程技术-材料科学:表征与测试
CiteScore
4.20
自引率
36.00%
发文量
165
审稿时长
4-8 weeks
期刊介绍: Materials Testing is a SCI-listed English language journal dealing with all aspects of material and component testing with a special focus on transfer between laboratory research into industrial application. The journal provides first-hand information on non-destructive, destructive, optical, physical and chemical test procedures. It contains exclusive articles which are peer-reviewed applying respectively high international quality criterions.
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