An Extension of DIRECT Algorithm Using Kriging Metamodel for Global Optimization

Abdulbaset El. Saad, Z. Dong
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Abstract

As a very well-known non-gradient global optimization method, DIviding RECTangles (DIRECT) algorithm has been proven to be an effective and efficient search method for many global optimization problems. However, computation of the algorithm could be costly and slow in solving problems involving computation intensive, Expensive Black Box (EBB) function due to the high number of objective function evolution required. This work proposes a new strategy which integrates meta-modeling techniques with DIRECT for solving EBB problems. The principal idea of the new approach is to use meta-modeling techniques, such as Kriging, to assist DIRECT to identify the optimum with less number of function evolutions. Specifically, the new approach starts with DIRECT search with a number of iterations and then uses the resulting points in Kriging to construct the meta-model. The best point predicted by Kriging search will then be used by DIRECT as new initial point. As a result, the entire search domain will gradually shrink to the region enclosing the possible optimum. Several runs are carried out to avoid high number of function evaluations to obtain the approximation solution at each stage. The newly proposed method has been tested using ten commonly used benchmark functions. All these tests showed significant improvements over the original DIRECT for EBB design problems.
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基于Kriging元模型的DIRECT算法的全局优化扩展
矩形分割(DIRECT)算法作为一种众所周知的非梯度全局优化方法,已被证明是解决许多全局优化问题的一种有效的搜索方法。然而,由于需要大量的目标函数进化,该算法在解决涉及计算密集型,昂贵的黑匣子(EBB)函数的问题时可能会计算成本高且速度慢。这项工作提出了一种新的策略,将元建模技术与DIRECT集成在一起,用于解决EBB问题。新方法的主要思想是使用元建模技术,比如Kriging,来帮助DIRECT用更少的功能演化来确定最优。具体来说,新方法从直接搜索开始,进行多次迭代,然后使用Kriging中的结果点来构建元模型。然后DIRECT将Kriging搜索预测到的最佳点作为新的初始点。因此,整个搜索域将逐渐缩小到可能最优的区域。为了避免在每个阶段进行大量的函数评估以获得近似解,进行了多次运行。新提出的方法已经使用十个常用的基准函数进行了测试。所有这些测试都表明,与针对EBB设计问题的原始DIRECT相比,有了显著的改进。
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