An Adaptive Hybrid Particle Swarm Optimizer for Constrained Optimization Problem

Tejna Khosla, O. Verma
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Abstract

Particle Swarm Optimization (PSO) is a well-known nature-inspired algorithm that is inspired by the social behavior of bird flocking and fish schooling. It has proved efficient in solving real-time problems due to its simplicity and good exploitation ability. However, due to poor exploration of search space, PSO gets trapped in local optima and gives less accurate results. On the other hand, Butterfly Optimization Algorithm (BOA) is good in exploration but converges slowly. This paper proposes a novel hybrid based on PSO and BOA, namely PSOBOA with few improvements based on the advantage and uniqueness of these algorithms. Firstly, a parameter-free penalty function is used to handle constraint violations so that the search process does not slacken when handling the constraints. Secondly, a self-adaptive approach has been adopted in PSO as well as BOA to ensure a smooth transition from exploration to exploitation, and no user interference. Thirdly, to improve the convergence rate and avoid local optima stagnation, a conditional approach has been used in the local and global search of BOA. The proposed algorithm PSOBOA overcomes the shortcomings of PSO and BOA and maximizes the performance. It is applied to solve structural optimization problems, such as pressure vessel design and welded-beam design problem, where the objectives, decision variables, and constraints are different. The experimental results and the convergence curves demonstrate better optimization performance of PSOBOA compared with quite a few state-of-the-art algorithms.
约束优化问题的自适应混合粒子群优化算法
粒子群算法(Particle Swarm Optimization, PSO)是一种著名的受自然启发的算法,它的灵感来自于鸟群和鱼群的社会行为。该方法简单,开发能力强,在解决实时问题方面具有较高的效率。然而,由于对搜索空间的探索能力差,粒子群算法陷入局部最优,结果精度较低。另一方面,蝴蝶优化算法(BOA)具有较好的探索性,但收敛速度较慢。本文基于PSO算法和BOA算法的优点和唯一性,提出了一种新的基于PSOBOA算法的混合算法,即改进较少的PSOBOA算法。首先,使用无参数惩罚函数处理约束违规,使搜索过程在处理约束时不会松弛;其次,在PSO和BOA中采用自适应方法,保证了从勘探到开发的平稳过渡,不受用户干扰。第三,为了提高收敛速度和避免局部最优停滞,在BOA的局部和全局搜索中采用了有条件的方法。提出的PSOBOA算法克服了PSO算法和BOA算法的缺点,使性能达到最大。该方法适用于求解目标、决策变量和约束条件不同的结构优化问题,如压力容器设计和焊接梁设计问题。实验结果和收敛曲线表明,PSOBOA算法的优化性能优于许多现有算法。
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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