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Multi objective non-dominated sorting genetic algorithm (NSGA-II) for optimizing fuzzy rule base system

机译:优化模糊规则库系统的多目标非支配排序遗传算法(NSGA-II)

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Multi-objective designs are genuine models for intricate combinatorial optimization problems. This paper presents a fast elitist non-dominated sorting multi objective genetic algorithm to develop smartly tuned fuzzy logic controllers with a finer trade-off between interpretability and exactitude in linguistic fuzzy modeling problems. The multi-objective genetic algorithm produces a group of non-dominated solutions defined FLCs for multi objective problem with satisfying objective at acceptance level without dominating to any other solution. In MO-GA, an integer encoding is used to indicate the linguistic level of fuzzy rule. Here, multi-objectives are transformed to a fitness function in order to initiate the NSGA-II, i.e. selection, crossover, and mutation. The intended approach generates an efficient and reliable fuzzy logic control system through the effective searching and self-learning adaptability of the NSGA-II. The simulation results based on multi-objective exhibits better performance than single objective while controlling car like robot.
机译:多目标设计是解决复杂组合优化问题的真正模型。本文提出了一种快速的精英非支配排序多目标遗传算法,以开发智能调整的模糊逻辑控制器,并在语言模糊建模问题中的可解释性和正确性之间进行更好的权衡。多目标遗传算法针对非目标解决方案定义了一组非主导解决方案,该解决方案定义了针对多目标问题的FLC,这些目标在接受级别上满足目标,而没有主导任何其他解决方案。在MO-GA中,整数编码用于指示模糊规则的语言水平。在此,将多目标转换为适应度函数以启动NSGA-II,即选择,交叉和变异。通过对NSGA-II的有效搜索和自学习适应性,该方法可生成高效可靠的模糊逻辑控制系统。在控制像机器人一样的汽车时,基于多目标的仿真结果表现出比单一目标更好的性能。

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