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A quasi-multistart framework for global optimization of expensive functions using response surface models

机译:使用响应面模型对昂贵功能进行全局优化的准多启动框架

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We present the AQUARS (A QUAsi-multistart Response Surface) framework for finding the global minimum of a computationally expensive black-box function subject to bound constraints. In a traditional multistart approach, the local search method is blind to the trajectories of the previous local searches. Hence, the algorithm might find the same local minima even if the searches are initiated from points that are far apart. In contrast, AQUARS is a novel approach that locates the promising local minima of the objective function by performing local searches near the local minima of a response surface (RS) model of the objective function. It ignores neighborhoods of fully explored local minima of the RS model and it bounces between the best partially explored local minimum and the least explored local minimum of the RS model. We implement two AQUARS algorithms that use a radial basis function model and compare them with alternative global optimization methods on an 8-dimensional watershed model calibration problem and on 18 test problems. The alternatives include EGO, GLOBALm, MLMSRBF (Regis and Shoemaker in INFORMS J Comput 19(4):497-509, 2007), CGRBF-Restart (Regis and Shoemaker in J Global Optim 37(1):113-135, 2007), and multi level single linkage (MLSL) coupled with two types of local solvers: SQP and Mesh Adaptive Direct Search (MADS) combined with kriging. The results show that the AQUARS methods generally use fewer function evaluations to identify the global minimum or to reach a target value compared to the alternatives. In particular, they are much better than EGO and MLSL coupled to MADS with kriging on the watershed calibration problem and on 15 of the test problems.
机译:我们提出了一个AQUARS(一个准多重启动响应面)框架,用于寻找受约束的计算上昂贵的黑盒函数的全局最小值。在传统的多起点方法中,局部搜索方法对以前的局部搜索的轨迹是看不见的。因此,即使搜索是从相距较远的点开始的,该算法也可能会找到相同的局部最小值。相反,AQUARS是一种新颖的方法,它通过在目标函数的响应面(RS)模型的局部最小值附近执行局部搜索来定位目标函数的有希望的局部最小值。它忽略了RS模型的完全探索的局部最小值的邻域,并且在RS模型的部分探索的最佳局部最小值和最小探索的局部最小值之间反弹。我们实现了两个使用径向基函数模型的AQUARS算法,并将它们与替代的全局优化方法进行了比较,以解决8维分水岭模型校准问题和18个测试问题。替代方案包括EGO,GLOBALm,MLMSRBF(2007年INFORMS J Comput 19(4):497-509中的Regis和Shoemaker),CGRBF-Restart(J Global Optim 37(1):113-135中2007年的Regis和Shoemaker) ,以及多级单链接(MLSL)和两种本地求解器:SQP和网格自适应直接搜索(MADS)与克里金法相结合。结果表明,与其他方法相比,AQUARS方法通常使用较少的函数评估来确定全局最小值或达到目标值。特别是,它们比EGO和MLSL与MADS结合使用kriging处理分水岭校准问题和15个测试问题要好得多。

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