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Managing approximate models in evolutionary aerodynamic design optimization

机译:在进化型空气动力学设计优化中管理近似模型

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摘要

Approximate models have to be used in evolutionary optimization when the original fitness function is computationally very expensive. Unfortunately, the convergence property of the evolutionary algorithm is unclear when an approximate model is used for fitness evaluation because approximation errors are involved in the model. What is worse, the approximate model may introduce false optima that lead the evolutionary algorithm to a wrong solution. To address this problem, individual and generation based evolution control are introduced to ensure that the evolutionary algorithm using approximate fitness functions will converge correctly. A framework for managing approximate models in generation-based evolution control is proposed. This framework is well suited for parallel evolutionary optimization in which evaluation of the fitness function is time-consuming. Simulations on two bench-mark problems and one example of aerodynamic design optimization demonstrate that the proposed algorithm is able to achieve a correct solution as well as a significantly reduced computation time.
机译:当原始适应度函数在计算上非常昂贵时,必须在进化优化中使用近似模型。不幸的是,当将近似模型用于适应性评估时,进化算法的收敛性尚不清楚,因为模型中包含了近似误差。更糟糕的是,近似模型可能会引入错误的最优解,从而导致进化算法得出错误的解。为了解决这个问题,引入了基于个体和世代的进化控制,以确保使用近似适应度函数的进化算法能够正确收敛。提出了一种在基于世代的演化控制中管理近似模型的框架。该框架非常适合并行进化优化,其中适应性函数的评估非常耗时。对两个基准问题和一个空气动力学设计优化示例的仿真表明,该算法能够实现正确的解决方案,并显着减少计算时间。

著录项

  • 作者

    Jin, Y; Olhofer, M; Sendhoff, B;

  • 作者单位
  • 年度 2001
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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