An Adaptive Multi-Agent System for Integrative Multidisciplinary Design Optimization

Tom Jorquera, J. Georgé, Christine Régis
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引用次数: 2

Abstract

Multidisciplinary optimization (MDO) problems are a specific class of optimization problem where the number of variables and disciplines involved is to important to directly apply classical optimization methods. Most of the existing approaches concentrate on separating the problem in distinct sub problems and using standard optimization methods on these sub problems while trying to maintain consistency among the variables shared by the sub problems. Basically these methods try to help the user to find an optimization process which reduces the complexity of the problem. However, a shortcoming of these MDO methods is that they require a strong expert knowledge of both the problem to be solved and the method which is applied, in order to obtain interesting results.
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集成多学科设计优化的自适应多智能体系统
多学科优化(MDO)问题是一类特殊的优化问题,其中涉及的变量和学科的数量非常重要,以至于不能直接应用经典的优化方法。现有的方法大多集中在将问题从不同的子问题中分离出来,并对这些子问题使用标准的优化方法,同时尽量保持子问题共享变量之间的一致性。基本上,这些方法试图帮助用户找到一个优化过程,从而降低问题的复杂性。然而,这些MDO方法的一个缺点是,为了获得有趣的结果,它们需要对要解决的问题和所应用的方法都有很强的专业知识。
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