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A niched Pareto genetic algorithm for multiobjective optimization

机译:一种用于多目标优化的帕累托帕累托遗传算法

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摘要

Many, if not most, optimization problems have multiple objectives. Historically, multiple objectives have been combined ad hoc to form a scalar objective function, usually through a linear combination (weighted sum) of the multiple attributes, or by turning objectives into constraints. The genetic algorithm (GA), however, is readily modified to deal with multiple objectives by incorporating the concept of Pareto domination in its selection operator, and applying a niching pressure to spread its population out along the Pareto optimal tradeoff surface. We introduce the Niched Pareto GA as an algorithm for finding the Pareto optimal set. We demonstrate its ability to find and maintain a diverse "Pareto optimal population" on two artificial problems and an open problem in hydrosystems.
机译:许多,如果不是大多数,优化问题都有多种目标。从历史上看,多个目标已经组合了ad hoc来形成标量目标函数,通常通过多个属性的线性组合(加权和),或者通过将目标转换为约束。然而,遗传算法(GA)被易于修改以通过将帕累托统治的概念结合在其选择操作员中的概念中处理多个目标,并施加抗静脉沿着帕累托最佳权衡表面将其人口分布出来。我们将NICHED Pareto GA介绍作为查找帕累托最优集的算法。我们展示了它在两个人工问题上找到和维持多元化的“帕累托最佳人口”和水系统中的开放问题。

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