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An efficient metamodel-based multi-objective multidisciplinary design optimization framework

机译:基于高效的Metomodel的多目标多学科设计优化框架

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This paper presents an efficient metamodel-based multi-objective multidisciplinary design optimization (MDO) architecture for solving multi-objective high fidelity MDO problems. One of the important features of the proposed method is the development of an efficient surrogate model-based multi-objective particle swarm optimization (EMOPSO) algorithm, which is integrated with a computationally efficient metamodel-based MDO architecture. The proposed EMOPSO algorithm is based on sorted Pareto front crowding distance, utilizing star topology. In addition, a constraint-handling mechanism in non-domination appointment and fuzzy logic is also introduced to overcome feasibility complexity and rapid identification of optimum design point on the Pareto front. The proposed algorithm is implemented on a metamodel-based collaborative optimization architecture. The proposed method is evaluated and compared with existing multi-objective optimization algorithms such as multi-objective particle swarm optimization (MOPSO) and non-dominated sorting genetic algorithm II (NSGA-II), using a number of well-known benchmark problems. One of the important results observed is that the proposed EMOPSO algorithm provides high diversity with fast convergence speed as compared to other algorithms. The proposed method is also applied to a multi-objective collaborative optimization of unmanned aerial vehicle wing based on high fidelity models involving structures and aerodynamics disciplines. The results obtained show that the proposed method provides an effective way of solving multi-objective multidisciplinary design optimization problem using high fidelity models. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文介绍了一种基于元模型的多目标多学科设计优化(MDO)架构,用于解决多目标高保真MDO问题。该方法的一个重要特征是开发基于高效的代理模型的多目标粒子群优化(Emopso)算法,其与基于计算的基于元模型的MDO架构集成。提出的Emopso算法基于分类的帕累托前挤出距离,利用星形拓扑。此外,还引入了非统治预约和模糊逻辑中的约束处理机制,以克服帕累托前面的可行性复杂性和快速识别最佳设计点。所提出的算法在基于元的协作优化架构上实现。评估所提出的方法,并与现有的多目标优化算法(如多目标粒子群优化(MOPSO)和非主导的分类遗传算法II(NSGA-II))进行评估,并将其进行比较。观察到的一个重要结果是,与其他算法相比,所提出的Emopso算法具有快速收敛速度的高多样性。该方法还应用于基于涉及结构和空气动力学学科的高保真模型的无人空中车翼的多目标协同优化。得到的结果表明,该方法提供了使用高保真模型解决多目标多学科设计优化问题的有效方法。 (c)2018 Elsevier B.v.保留所有权利。

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