贝叶斯优化
数学优化
高斯过程
替代模型
克里金
区间(图论)
算法
计算机科学
贝叶斯概率
全局优化
最大化
功能(生物学)
数学
高斯分布
人工智能
机器学习
组合数学
物理
量子力学
进化生物学
生物
作者
Chao Dang,Pengfei Wei,Matthias Faes,Marcos A. Valdebenito,Michael Beer
标识
DOI:10.1016/j.apm.2022.03.031
摘要
This paper is concerned with approximating the scalar response of a complex computational model subjected to multiple input interval variables. Such task is formulated as finding both the global minimum and maximum of a computationally expensive black-box function over a prescribed hyper-rectangle. On this basis, a novel non-intrusive method, called ‘triple-engine parallel Bayesian global optimization’, is proposed. The method begins by assuming a Gaussian process prior (which can also be interpreted as a surrogate model) over the response function. The main contribution lies in developing a novel infill sampling criterion, i.e., triple-engine pseudo expected improvement strategy, to identify multiple promising points for minimization and/or maximization based on the past observations at each iteration. By doing so, these identified points can be evaluated on the real response function in parallel. Besides, another potential benefit is that both the lower and upper bounds of the model response can be obtained with a single run of the developed method. Four numerical examples with varying complexity are investigated to demonstrate the proposed method against some existing techniques, and results indicate that significant computational savings can be achieved by making full use of prior knowledge and parallel computing.
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