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Combining metamodel techniques and Bayesian selection procedures to derive computationally efficient simulation-based optimization algorithms

机译:结合元模型技术和贝叶斯选择程序,以得出计算效率高的基于仿真的优化算法

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This paper presents a simulation-based optimization (SO) algorithm for nonlinear problems with general constraints and computationally expensive evaluation of objective functions. It focuses on metamodel techniques. This paper proposes an SO technique that also uses metamodel information when testing the improvement of the proposed points. We use a Bayesian framework, where the parameters of the prior distributions are estimated based on probabilistic metamodel information. In order to derive an SO algorithm that achieves a good trade-off between detail, realism and computational efficiency, the metamodel combines information from a high-resolution simulator with information from a lower-resolution yet computationally efficient analytical differentiable network model. In this paper, we use the probabilistic information from the queueing model to estimate the parameters of the prior distributions. We evaluate the performance of this SO algorithm by addressing an urban traffic management problem using a detailed microscopic traffic simulator of the Swiss city of Lausanne.
机译:本文针对具有一般约束和目标函数的计算成本很高的非线性问题,提出了一种基于仿真的优化(SO)算法。它着重于元模型技术。本文提出了一种SO技术,该技术在测试建议点的改进时也使用元模型信息。我们使用贝叶斯框架,其中基于概率元模型信息估计先验分布的参数。为了推导在细节,真实性和计算效率之间取得良好折衷的SO算法,元模型将高分辨率模拟器的信息与分辨率较低但计算效率高的可分析差分网络模型的信息进行了组合。在本文中,我们使用排队模型中的概率信息来估计先验分布的参数。我们通过使用瑞士洛桑市的详细微观交通模拟器来解决城市交通管理问题,从而评估该SO算法的性能。

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