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Surrogate-Based Global Sequential Sampling Algorithm

机译:基于代理的全局顺序采样算法

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To improve research efficiency of engineering problems, Surrogate model has gained its popularity in replacing real engineering model. This paper proposes a kind of Global Sequential Sampling Algorithm (GSSA) based on surrogate model. With the process of iteration, GSSA can sample both in unexplored region and large-error region, then iteratively update the samples. OLHS is used as initial sampling method. Crossover operator which is employed in Genetic Algorithm (GA) is adopted to generate candidate sample assembly each iteration, Candidate sample with maximum weight product of cross validation error and minimum distance from existing samples will be chosen as newly added sample. At last a global surrogate model is built with all samples. GSSA is compared to MSE approach, CV-Voronoi Algorithm, and OLHS method on several test functions and results validate its effectiveness.
机译:为了提高工程问题的研究效率,替代模型在替代实际工程模型中获得了普及。提出了一种基于代理模型的全局序列采样算法(GSSA)。通过迭代过程,GSSA可以在未探索区域和大误差区域中进行采样,然后迭代更新采样。 OLHS被用作初始采样方法。采用遗传算法(GA)中使用的交叉算子来生成每次迭代的候选样本集合,将选择具有最大交叉验证误差权重乘积与距现有样本最小距离的候选样本作为新添加的样本。最后,使用所有样本构建一个全局代理模型。将GSSA与MSE方法,CV-Voronoi算法和OLHS方法在几个测试功能上进行了比较,结果验证了其有效性。

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