首页> 外文学位 >Simulation-based design using variable fidelity optimization.
【24h】

Simulation-based design using variable fidelity optimization.

机译:使用可变保真度优化的基于仿真的设计。

获取原文
获取原文并翻译 | 示例

摘要

Simulation-based design optimization is playing an increasingly prominent role in the design of everything from spacecraft to consumer products. Applying nonlinear optimization techniques to simulation-based design becomes prohibitively expensive as computer models become more complex and increase in fidelity. A common engineering practice is to drive the preliminary design process using lower fidelity models as surrogates of expensive high fidelity simulations. Higher fidelity models are then used in the final design stages to refine the design. However, using automated optimization methods at this stage may still require enormous computational resources. Recently, variable fidelity schemes have been developed to address this problem by incorporating both models into one optimization framework. In these methods the low fidelity models are scaled to approximate the high fidelity simulations. This scaling allows the optimization to be performed using mainly low fidelity function calls, reducing the overall computational cost, while requiring only a few high fidelity evaluations to update the scaling function. Currently, two main scaling varieties are used: first order multiplicative and first order additive. In the multiplicative approach the low fidelity model is multiplied by a scaling function to approximate the high fidelity model; similarly, in the additive approach a scaling function is added to the low fidelity model.; The focus of this dissertation is on improving the efficiency and applicability of variable fidelity optimization algorithms. Highlights of original contributions made in this research include: (1) An adaptive hybrid scaling method that relieves designers from having to choose a priori which scaling method, multiplicative or additive, is most suitable to their problem with limited information. (2) Second order scaling methods which use approximate Hessian information, resulting in super-linear convergence rates. (3) A kriging-based global scaling method, which uses past design information to improve the global accuracy of the scaling model and was shown to reduce the computational cost of optimization by over 60% compared to single fidelity methods. (4) A metamodel update management strategy to reduce the cost of using kriging metamodels sequentially in large design problems. (5) Extension of the variable fidelity framework to solve reliability based design problems, which significantly lowers the computational cost, compared to traditional methods.
机译:基于仿真的设计优化在从航天器到消费产品的所有设计中都扮演着越来越重要的角色。随着计算机模型变得越来越复杂和保真度的提高,将非线性优化技术应用于基于仿真的设计变得非常昂贵。常见的工程实践是使用低保真度模型代替昂贵的高保真度模拟来推动初步设计过程。然后,在最终设计阶段使用更高保真度的模型来完善设计。但是,在此阶段使用自动优化方法可能仍需要大量的计算资源。近来,已经开发出可变保真度方案以通过将两个模型合并到一个优化框架中来解决该问题。在这些方法中,对低保真度模型进行缩放以近似于高保真度模拟。这种缩放允许主要使用低保真度函数调用来执行优化,从而降低总体计算成本,同时仅需要几个高保真度评估即可更新缩放函数。当前,使用了两个主要的缩放比例变体:一阶乘法和一阶加法。在乘法方法中,将低保真度模型与缩放函数相乘以近似高保真度模型;类似地,在加性方法中,将缩放函数添加到低保真度模型。本文的重点是提高变量保真度优化算法的效率和适用性。这项研究的主要贡献包括:(1)自适应混合缩放方法,使设计人员不必先验地选择哪种缩放方法(乘法或加法)最适合于信息量有限的问题。 (2)使用近似Hessian信息的二阶缩放方法,导致超线性收敛速度。 (3)一种基于克里金法的全局缩放方法,该方法使用过去的设计信息来提高缩放模型的全局精度,并且与单保真度方法相比,可以将优化的计算成本降低60%以上。 (4)元模型更新管理策略,以减少在大型设计问题中顺序使用kriging元模型的成本。 (5)扩展可变保真度框架以解决基于可靠性的设计问题,与传统方法相比,该方法显着降低了计算成本。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号