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Fuzzy logic versus niched Pareto multiobjective genetic algorithm optimization

机译:模糊逻辑与固定Pareto多目标遗传算法优化

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A new multiobjective selection procedure fbr a genetic algorithm (GA) based on the paradigms of fuzzy logic is introduced, discussed and compared to the niched Pareto selection procedure. In the two example problems presented here (Schaffer's F2 problem and a simplified Born-Mayer potential) the fuzzy logic procedure optimized the parameters of functions in a manner of comparable efficiency to that of the niched Pareto approach. The two main advantages of the fuzzy logic approach over the niched Pareto approach are that the experimental error or 'uncertainty' in the objective values can be accounted for and, unlike the niched Pareto approach, the efficiency of the fuzzy logic GA is shown to be independent of the number of objectives. [References: 36]
机译:介绍了一种基于模糊逻辑范式的遗传算法(GA)的多目标选择新方法,并将其与适当的帕累托选择方法进行了比较。在此处介绍的两个示例问题(Schaffer F2问题和简化的Born-Mayer势)中,模糊逻辑过程以与无间隙Pareto方法相当的效率优化了函数的参数。模糊逻辑方法相对于固定Pareto方法的两个主要优点是可以解决目标值中的实验误差或“不确定性”,并且与固定Pareto方法不同,模糊逻辑GA的效率为与目标数量无关。 [参考:36]

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