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Research on Multi-Objective Multidisciplinary Design Optimization Based on Particle Swarm Optimization

机译:基于粒子群优化的多目标多学科设计优化研究

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Complex systems consist of many disciplines or components, which are often difficult to the design optimize as a overall. They need to be broken down into different components, and then coordinate the links between different parts. ATC (Analysis Target Cascade) - one of the multidisciplinary design optimization methods, is an effective way to solve such intricate problems. In the traditional multidisciplinary design optimization methods, there is only one objective function. But the multi-objective optimization problems are often emerged in practical engineering problems. So, we will focus on the multi-objective optimization problems in multidisciplinary design optimization, and solve them with particle swarm optimization. The original problem is firstly decomposed into multiple coupled sub-problems and then coordinate the relation between each sub-problems by ATC method. The system-level sub-problem is a multi-objective optimization problem and the other subsystems are the general single-objective optimization problems, the MOPSO method and the sequence quadratic programming (SQP) method will be used to solve them respectively. The final optimization result is consistent with the optimization result before the original problem is decomposed. Finally, we used two examples to demonstrate the feasibility of particle swarm optimization (PSO) method to get the solution of the multi-objective problems with ATC method.
机译:复杂的系统由许多学科或组件组成,这些组件通常难以设计优化整体。他们需要被分解为不同的组件,然后协调不同部件之间的链接。 ATC(分析目标级联) - 其中一个多学科设计优化方法,是解决此类复杂问题的有效方法。在传统的多学科设计优化方法中,只有一个客观函数。但在实际工程问题中经常出现多目标优化问题。因此,我们将专注于多学科设计优化中的多目标优化问题,并解决粒子群优化。原始问题首先被分解成多个耦合子问题,然后通过ATC方法协调每个子问题之间的关系。系统级子问题是多目标优化问题,另一个子系统是一般的单目标优化问题,MOPSO方法和序列二次编程(SQP)方法分别用于解决它们。在原始问题分解之前,最终优化结果与优化结果一致。最后,我们使用了两个例子来展示粒子群优化(PSO)方法的可行性,以获得ATC方法的多目标问题的解决方案。

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