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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A >Multiobjective optimization and multiple constraint handling with evolutionary algorithms. I. A unified formulation
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Multiobjective optimization and multiple constraint handling with evolutionary algorithms. I. A unified formulation

机译:使用进化算法进行多目标优化和多约束处理。一,统一表述

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摘要

In optimization, multiple objectives and constraints cannot be handled independently of the underlying optimizer. Requirements such as continuity and differentiability of the cost surface add yet another conflicting element to the decision process. While "better" solutions should be rated higher than "worse" ones, the resulting cost landscape must also comply with such requirements. Evolutionary algorithms (EAs), which have found application in many areas not amenable to optimization by other methods, possess many characteristics desirable in a multiobjective optimizer, most notably the concerted handling of multiple candidate solutions. However, EAs are essentially unconstrained search techniques which require the assignment of a scalar measure of quality, or fitness, to such candidate solutions. After reviewing current revolutionary approaches to multiobjective and constrained optimization, the paper proposes that fitness assignment be interpreted as, or at least related to, a multicriterion decision process. A suitable decision making framework based on goals and priorities is subsequently formulated in terms of a relational operator, characterized, and shown to encompass a number of simpler decision strategies. Finally, the ranking of an arbitrary number of candidates is considered. The effect of preference changes on the cost surface seen by an EA is illustrated graphically for a simple problem. The paper concludes with the formulation of a multiobjective genetic algorithm based on the proposed decision strategy. Niche formation techniques are used to promote diversity among preferable candidates, and progressive articulation of preferences is shown to be possible as long as the genetic algorithm can recover from abrupt changes in the cost landscape.
机译:在优化中,不能独立于基础优化器来处理多个目标和约束。诸如成本面的连续性和可区分性之类的要求为决策过程增加了另一个矛盾的因素。虽然“更好”的解决方案的评级应高于“更差”的解决方案,但由此产生的成本前景也必须符合此类要求。进化算法(EA)已在许多领域不适用其他方法进行优化,但它们却具有多目标优化器所期望的许多特性,其中最引人注目的是对多个候选解决方案的协同处理。但是,EA本质上是不受约束的搜索技术,需要将质量或适用性的标量度量分配给此类候选解决方案。在回顾了当前针对多目标和约束优化的革命性方法之后,本文提出将适应度分配解释为或至少与多准则决策过程相关。随后根据关系运算符来制定基于目标和优先级的合适决策框架,对其进行特征化并显示为包含许多更简单的决策策略。最后,考虑任意数量的候选者的排名。对于一个简单的问题,以图形方式说明了EA看到的偏好变化对成本面的影响。最后,基于提出的决策策略,提出了一种多目标遗传算法。生态位形成技术被用来促进优选候选人之间的多样性,并且只要遗传算法可以从成本格局的突然变化中恢复过来,就可以逐步表达偏好。

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