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Combining Reliability and Pareto Optimality - An Approach Using Stochastic Multi-Objective Genetic Algorithms

机译:结合可靠性和帕累托最优性-一种使用随机多目标遗传算法的方法

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Genetic Algorithms have been successfully applied to numerous water resources problems, including problems with multiple objectives or uncertainty (noise). GAs tackle multi-objective optimization by following three basic principles – advancing the non-dominated frontier; maintaining diversity in the population (through various techniques like sharing, niching, and crowding); and using an elitist. However finding Pareto-optimal solutions becomes complicated when we add uncertainty to the problem. It was found that the solutions obtained using existing multi-objective solvers, although Pareto optimal were not the most robust or reliable solutions. In single-objective problems noise has typically been dealt with using Monte-Carlo-type sampling and some form of aggregate statistics (e.g., the average of the sample fitness). With multiple objectives the noise can interfere in determining non-domination of individuals, diversity preservation, and elitism (the three basic steps in multi-objective optimization). This paper proposes and tests several approaches to tackling some of these problems. These approaches strike a balance between finding the most optimal and the most reliable solution to the problem, thus giving decision makers and designers a practical and robust optimization tool.
机译:遗传算法已成功应用于众多水资源问题,包括具有多个目标或不确定性(噪声)的问题。遗传算法遵循以下三个基本原则来解决多目标优化问题:推进非主导领域的发展;保持人口多样性(通过各种技术,如共享,小憩和拥挤);并使用精英人士。但是,当我们给问题添加不确定性时,找到帕累托最优解变得很复杂。发现使用帕累托最优的解决方案是使用现有的多目标求解器获得的,但并不是最可靠或最可靠的解决方案。在单目标问题中,通常使用蒙特卡洛类型的抽样和某种形式的汇总统计数据(例如,样本适应度的平均值)来处理噪声。在具有多个目标的情况下,噪声会干扰确定个人的非支配地位,保持多样性和精英化(多目标优化中的三个基本步骤)。本文提出并测试了解决这些问题的几种方法。这些方法在找到问题的最佳方案和最可靠方案之间取得了平衡,从而为决策者和设计人员提供了一种实用而强大的优化工具。

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