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Particle swarm optimisation with stochastic ranking for constrained numerical and engineering benchmark problems

机译:带有随机排序的粒子群优化算法,用于约束数值和工程基准问题

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摘要

Most of the real world science and engineering optimisation problems are non-linear and constrained. This paper presents a hybrid algorithm by integrating particle swarm optimisation with stochastic ranking for solving standard constrained numerical and engineering benchmark problems. Stochastic ranking technique that uses bubble sort mechanism for ranking the solutions and maintains a balance between the objective and the penalty function. The faster convergence of particle swarm optimisation and the ranking technique are the major motivations for hybridising these two concepts and to propose the stochastic ranking particle swarm optimisation (SRPSO) technique. In this paper, SRPSO is used to optimise 15 continuous constrained single objective benchmark functions and five well-studied engineering design problems. The performance of the proposed algorithm is evaluated based on the statistical parameters such mean, median, best, worst values and standard deviations. The SRPSO algorithm is compared with six recent algorithms for function optimisation. The simulation results indicate that the SRPSO algorithm performs much better while solving all the five standard engineering design problems where as it gives a competitive result for constrained numerical benchmark functions.
机译:现实世界中大多数科学和工程优化问题都是非线性的且受约束的。本文提出了一种将粒子群优化与随机排序相结合的混合算法,用于解决标准约束数值和工程基准问题。随机排序技术,使用气泡排序机制对解决方案进行排序,并在目标函数和惩罚函数之间保持平衡。粒子群优化和排序技术的更快收敛是混合这两个概念并提出随机排序粒子群优化(SRPSO)技术的主要动机。在本文中,SRPSO用于优化15个连续约束的单目标基准功能和5个经过充分研究的工程设计问题。基于统计参数(例如平均值,中位数,最佳值,最差值和标准偏差)评估所提出算法的性能。将SRPSO算法与六个最近的算法进行了功能优化。仿真结果表明,在解决所有五个标准工程设计问题的同时,SRPSO算法的性能要好得多,因为它可以为约束的数字基准函数提供有竞争力的结果。

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