Thin-Plate Spline RBF surrogate model for global optimization algorithms

Tabbakh Zineb, Ellaia Rachid, E. Talbi
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引用次数: 2

Abstract

Improving performance and reducing costs are major challenges in many engineering design problems. The processes or accurate models are usually time-consuming and computationally expensive; therefore, the objective function requires a large number of evaluations. This paper considers surrogate modeling to approximate the expensive function and to ensure the quality of results in a reduced CPU time for mono-objective optimization. The Basic idea of surrogate models, also known as a meta-model, is to build a model from a sampled data, then, the outputs of other design data can be predicted by the approximated model instead of using the heavy one. Once the surrogate model is built, an optimization method is used to look for new design points until convergence. In this work, we propose a surrogate-based optimization algorithm using backtracking search algorithm optimization, and the thin spline basis function to build the surrogate model. During the construction of the surrogate, a minimization problem of error is carried out by updating the position of the node that produces the maximum error. Experiments are carried out on many test functions.
薄板样条RBF代理模型的全局优化算法
提高性能和降低成本是许多工程设计问题的主要挑战。这些过程或精确的模型通常耗时且计算成本高;因此,目标函数需要大量的评价。在单目标优化中,为了在减少CPU时间的情况下保证结果的质量,本文考虑了代理建模来逼近昂贵的函数。代理模型(也称为元模型)的基本思想是从一个采样数据建立一个模型,然后用近似模型来预测其他设计数据的输出,而不是使用重模型。建立代理模型后,使用优化方法寻找新的设计点,直到收敛。在这项工作中,我们提出了一种基于代理的优化算法,采用回溯搜索算法优化,并利用细样条基函数构建代理模型。在代理的构造过程中,通过更新产生最大误差的节点的位置来执行误差最小化问题。对许多测试函数进行了实验。
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