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Multi-fidelity design optimisation strategy under uncertainty with limited computational budget

机译:有限计算预算下不确定性的多保真设计优化策略

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摘要

In this work, a design optimisation strategy is presented for expensive and uncertain single- and multi-objective problems. Computationally expensive design fitness evaluations prohibit the application of standard optimisation techniques and the direct calculation of risk measures. Therefore, a surrogate-assisted optimisation framework is presented. The computational budget limits the number of high-fidelity simulations which makes impossible to accurately approximate the landscape. This motivates the use of cheap low-fidelity simulations to obtain more information about the unexplored locations of the design space. The information stemming from numerical experiments of various fidelities can be fused together with multi-fidelity Gaussian process regression to build an accurate surrogate model despite the low number of high-fidelity simulations. We propose a new strategy for automatically selecting the fidelity level of the surrogate model update. The proposed method is extended to multi-objective applications. Although, Gaussian processes can inherently model uncertain processes, here the deterministic input and uncertain parameters are treated separately and only the design space is modelled with a Gaussian process. The probabilistic space is modelled with a polynomial chaos expansion to allow also uncertainties of non-Gaussian type. The combination of the above techniques allows us to efficiently carry out a (multi-objective) design optimisation under uncertainty which otherwise would be impractical.
机译:在这项工作中,提供了一种设计优化策略,以实现昂贵且不确定的单一目标和多目标问题。计算昂贵的设计健身评估禁止应用标准优化技术和风险措施的直接计算。因此,提出了替代辅助优化框架。计算预算限制了高保真仿真的数量,这不可能准确地近似景观。这激励了使用廉价的低保真模拟,以获取有关设计空间未开发地点的更多信息。源于各种保真度的数值实验的信息可以与多保真高斯过程回归一起融合,以构建精确的代理模型,尽管高保真仿真较少。我们提出了一种自动选择代理模型更新的保真度的新策略。该方法扩展到多目标应用。尽管高斯过程可以固有地模型不确定过程,但在这里,确定性输入和不确定参数分别处理,并且仅用高斯过程建模设计空间。概率空间用多项式混沌扩展进行建模,以允许非高斯类型的不确定性。上述技术的组合使我们能够在不确定度下有效地执行(多目标)设计优化,否则是不切实际的。

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