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Performance of Infeasibility Empowered Memetic Algorithm (IEMA) on Engineering Design Problems

机译:不可行赋能模因算法(IEMA)在工程设计问题上的性能

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Engineering design optimization problems often involve a number of constraints. These constraints may result from factors such as practicality, safety and functionality of the design and/or limit on time and resources. In addition, for many design problems, each function evaluation may be a result of an expensive computational procedure (such as CFD, FEA etc.), which imposes a limitation on the number of function evaluations that can be carried out to find a near optimal solution. Consequently, there is a significant interest in the optimization community to develop efficient algorithms to deal with constraint optimization problems. In this paper, a new memetic algorithm is presented, which incorporates two mechanisms to expedite the convergence towards the optimum. First is the use of marginally infeasible solutions to intensify the search near constraint boundary, where optimum solution(s) are most likely to be found. Second is performing local search from promising solutions in order to inject good quality solutions in the population early during the search. The performance of the presented algorithm is demonstrated on a set of engineering design problems, using a low computation budget (1000 function evaluations).
机译:工程设计优化问题通常涉及许多约束。这些约束可能是由诸如实用性,设计的安全性和功能性和/或时间和资源的限制等因素引起的。此外,对于许多设计问题,每个功能评估可能是昂贵的计算过程(例如CFD,FEA等)的结果,这对可以执行的功能评估次数施加了限制,以找到接近最佳的评估结果解。因此,在优化社区中,人们非常关注开发有效的算法来处理约束优化问题。本文提出了一种新的模因算法,该算法结合了两种机制以加快向最优方向收敛。首先是使用不可行的解决方案来加强在约束边界附近的搜索,在约束边界附近最有可能找到最佳解决方案。第二是从有前途的解决方案中进行本地搜索,以便在搜索过程中尽早为人群注入优质的解决方案。使用低计算预算(1000个功能评估),在一组工程设计问题上证明了所提出算法的性能。

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