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首页> 外文期刊>Journal of Global Optimization >Global optimization of general constrained grey-box models: new method and its application to constrained PDEs for pressure swing adsorption
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Global optimization of general constrained grey-box models: new method and its application to constrained PDEs for pressure swing adsorption

机译:通用约束灰箱模型的全局优化:新方法及其在变压吸附的约束PDE中的应用

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This paper introduces a novel methodology for the global optimization of general constrained grey-box problems. A grey-box problem may contain a combination of black-box constraints and constraints with a known functional form. The novel features of this work include (i) the selection of initial samples through a subset selection optimization problem from a large number of faster low-fidelity model samples (when a low-fidelity model is available), (ii) the exploration of a diverse set of interpolating and non-interpolating functional forms for representing the objective function and each of the constraints, (iii) the global optimization of the parameter estimation of surrogate functions and the global optimization of the constrained grey-box formulation, and (iv) the updating of variable bounds based on a clustering technique. The performance of the algorithm is presented for a set of case studies representing an expensive non-linear algebraic partial differential equation simulation of a pressure swing adsorption system for . We address three significant sources of variability and their effects on the consistency and reliability of the algorithm: (i) the initial sampling variability, (ii) the type of surrogate function, and (iii) global versus local optimization of the surrogate function parameter estimation and overall surrogate constrained grey-box problem. It is shown that globally optimizing the parameters in the parameter estimation model, and globally optimizing the constrained grey-box formulation has a significant impact on the performance. The effect of sampling variability is mitigated by a two-stage sampling approach which exploits information from reduced-order models. Finally, the proposed global optimization approach is compared to existing constrained derivative-free optimization algorithms.
机译:本文介绍了一种用于通用约束灰箱问题的全局优化的新方法。灰盒问题可能包含黑盒约束和具有已知功能形式的约束的组合。这项工作的新颖之处包括:(i)通过大量快速的低保真模型样本中的子集选择优化问题选择初始样本(当有低保真模型可用时),(ii)探索代表目标函数和每个约束的一组内插和非内插函数形式,(iii)替代函数的参数估计的全局优化和受约束的灰箱公式的全局优化,以及(iv)基于聚类技术的变量范围更新。针对一组案例研究展示了该算法的性能,这些案例代表了昂贵的非线性变压吸附系统的非线性代数偏微分方程仿真。我们讨论了变异的三个重要来源及其对算法一致性和可靠性的影响:(i)初始采样变异性,(ii)替代函数的类型,以及(iii)替代函数参数估计的全局与局部优化和整体替代约束的灰箱问题。结果表明,全局优化参数估计模型中的参数以及全局优化受约束的灰箱公式对性能都有重要影响。通过采用两阶段采样方法来减轻采样变异性的影响,该方法利用了降阶模型中的信息。最后,将提出的全局优化方法与现有的受限无导数优化算法进行比较。

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