Assessment of a Consolidated Algorithm for Constrained Engineering Design Optimization and Unconstrained Function Optimization

Stephen Oladipo, Yanxia Sun
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Abstract

For real-life optimization problems, methods with adequate capability in exploring the search space are crucial especially when having in mind the perpetual complexity of the problems. Consequently, presenting an effective algorithm to address these problems becomes imperative. The major objective of this work is to assess the application of a consolidated algorithm in addressing constrained and unconstrained function optimization problems. Though the flower pollinated algorithm (FPA) is commonly used, it does have its limitations, including being stuck at local minima, causing premature convergence, and creating imbalances between intensification and diversification. As the FPA operates, the solution to the optimization problem relies on communication with pollen individuals. Consequently, instead of leading pollens randomly, the FPA’s exploratory skills are boosted by employing the pathfinder algorithm’s (PFA) components to route them to much better locations in order to avoid local optima. For that reason, the PFA has been incorporated into the FPA in order to increase its performance. The efficacy of the proposed algorithm is tested using conventional mathematical optimization functions as well as two well-known constrained engineering design optimization problems. Experimental results showed that the suggested algorithm outscored its counterparts for both constrained and unconstrained optimization problems.
约束工程设计优化与无约束函数优化的综合算法评价
对于现实生活中的优化问题,具有足够能力探索搜索空间的方法是至关重要的,特别是当考虑到问题的永久复杂性时。因此,提出一种有效的算法来解决这些问题变得势在必行。这项工作的主要目的是评估一种综合算法在解决约束和无约束函数优化问题中的应用。虽然花授粉算法(FPA)是常用的,但它也有其局限性,包括卡在局部最小值,导致过早收敛,以及在集约化和多样化之间造成不平衡。在FPA运行过程中,优化问题的解决依赖于与花粉个体的沟通。因此,通过采用探路者算法(PFA)组件将它们路由到更好的位置以避免局部最优,而不是随机引导花粉,FPA的探索技能得到了提高。因此,PFA已被纳入FPA,以提高其性能。利用传统的数学优化函数和两个著名的约束工程设计优化问题,验证了所提算法的有效性。实验结果表明,该算法在有约束和无约束优化问题上都优于同类算法。
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