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An adaptive parameter binary-real coded genetic algorithm for constraint optimization problems: Performance analysis and estimation of optimal control parameters

机译:约束最优化问题的自适应参数二进制实数编码遗传算法:性能分析和最优控制参数估计

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摘要

Real parameter constrained problems are an important class of optimization problems that are encountered frequently in a variety of real world problems. On one hand, Genetic Algorithms (GAs) are an efficient search metaheuristic and a prominent member within the family of Evolutionary Algorithms (EAs), which have been applied successfully to global optimization problems. However, genetic operators in their standard forms are blind to the presence of constraints. Thus, the extension of GAs to constrained optimization problems by incorporating suitable handing techniques is an active direction within GAs research. Recently, we have proposed a Binary Real coded Genetic Algorithm (BRGA). BRGA is a new hybrid approach that combines cooperative Binary coded GA (BGA) with Real coded GA (RGA). It employs an adaptive parameter-based hybrid scheme that distributes the computational power and regulates the interactions between the cooperative versions, which operate in a sequential time-interleaving manner. In this study, we aim to extend BRGA to constrained problems by introducing a modified dynamic penalty function into the architecture of BRGA. We use the CEC'2010 benchmark suite of 18 functions to analyze the quality, time and scalability performance of BRGA. To investigate the effectiveness of the proposed modification, we compare the performance of BRGA under both the original and the modified penalty functions. Moreover, to demonstrate the performance of BRGA, we compare it with the performance of some other EAs from the literature. We also implement a robust parameter tuning procedure that relies on techniques from statistical testing, experimental design and Response Surface Methodology (RSM) to estimate the optimal values for the control parameters to secure a good performance by BRGA against specific problems at hand.
机译:实参约束问题是一类重要的优化问题,在各种现实问题中经常遇到。一方面,遗传算法(GA)是一种有效的搜索元启发式算法,并且是进化算法(EA)系列中的重要成员,进化算法已成功应用于全局优化问题。但是,标准形式的遗传算子对约束的存在视而不见。因此,通过结合适当的处理技术将遗传算法扩展到约束优化问题是遗传算法研究的积极方向。最近,我们提出了一种二进制实数编码遗传算法(BRGA)。 BRGA是一种新的混合方法,将协作二进制编码GA(BGA)与实时编码GA(RGA)相结合。它采用了一种基于参数的自适应混合方案,该方案可分配计算能力并调节协作版本之间的交互,这些协作版本以顺序的时间交织方式运行。在这项研究中,我们旨在通过将修改后的动态罚函数引入BRGA体系结构,将BRGA扩展到受约束的问题。我们使用包含18个功能的CEC'2010基准套件来分析BRGA的质量,时间和可伸缩性性能。为了研究所提出的修改的有效性,我们比较了原始和修改的惩罚函数下BRGA的性能。此外,为了证明BRGA的性能,我们将其与文献中其他一些EA的性能进行了比较。我们还实施了可靠的参数调整程序,该程序依赖于统计测试,实验设计和响应表面方法(RSM)中的技术来估计控制参数的最佳值,以确保BRGA针对当前的特定问题确保良好的性能。

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