Multi Objective Barnacle Mating Optimization for Control Design of a Pendulum System

A. Razak, A. Nasir, N. Ghani, Nurul Amira Mhd Rizal, M. Jusof, Ikhwan Hafiz Muhamad
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Abstract

This paper presents a MultiObjective Barnacle Mating Optimization (MOBMO) and its application to optimize controller parameters for an inverted pendulum system. The algorithm is an extended version of a single-objective Barnacle Mating Optimization (BMO). In terms of solving a complex problem that has two conflicting objectives, a multiobjective type BMO is needed. Therefore, in the proposed MOBMO, nondominated sorting and crowding distance approaches are incorporated into BMO as a technique to formulate the multiobjective algorithm. The proposed algorithm is tested on various multiobjective benchmark functions. Its performance in terms of accuracy and diversity attainment to find a theoretical pareto front solution is analyzed. Moreover the proposed MOBMO is applied to optimize control parameters for PD controls of a pendulum system. The performance of the proposed MOBMO is compared with Multiobjective Water Cycle Algorithm (MOWCA). Result of the benchmark functions test shows that the proposed algorithm has attained a higher accuracy and a competitive diversity in locating the theoretical front solution. For its application to optimize PD control parameters, both MOWCA and MOBMO have successfully attained a good pareto front solution and controlled the pendulum sufficiently good. Overall performance, the proposed MOBMO has outperformed MOWCA for accuracy attainment and achieved the same level of diversity performance.
摆系统控制设计中的多目标藤壶匹配优化
提出了一种多目标藤壶匹配优化方法,并将其应用于倒立摆系统的控制器参数优化。该算法是单目标藤壶配对优化(BMO)的扩展版本。在解决具有两个相互冲突的目标的复杂问题方面,需要多目标类型的BMO。因此,在本文提出的MOBMO中,将非支配排序和拥挤距离方法作为一种制定多目标算法的技术纳入了BMO中。在各种多目标基准函数上对该算法进行了测试。分析了该算法在寻找理论pareto前解的精度和多样性方面的性能。并将该方法应用于摆系统PD控制参数的优化。并与多目标水循环算法(MOWCA)进行了性能比较。基准函数测试结果表明,该算法在定位理论前沿解方面具有较高的精度和较好的多样性。将其应用于PD控制参数优化,MOWCA和MOBMO都成功地获得了良好的pareto前解,并对摆进行了充分的控制。总体性能上,MOBMO在精度上优于MOWCA,并达到了相同的分集性能水平。
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