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ASAMS: An Adaptive Sequential Sampling and Automatic Model Selection for Artificial Intelligence Surrogate Modeling

机译:ASAMS:人工智能代理建模的自适应顺序采样和自动模型选择

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摘要

Surrogate Modeling (SM) is often used to reduce the computational burden of time-consuming system simulations. However, continuous advances in Artificial Intelligence (AI) and the spread of embedded sensors have led to the creation of Digital Twins (DT), Design Mining (DM), and Soft Sensors (SS). These methodologies represent a new challenge for the generation of surrogate models since they require the implementation of elaborated artificial intelligence algorithms and minimize the number of physical experiments measured. To reduce the assessment of a physical system, several existing adaptive sequential sampling methodologies have been developed; however, they are limited in most part to the Kriging models and Kriging-model-based Monte Carlo Simulation. In this paper, we integrate a distinct adaptive sampling methodology to an automated machine learning methodology (AutoML) to help in the process of model selection while minimizing the system evaluation and maximizing the system performance for surrogate models based on artificial intelligence algorithms. In each iteration, this framework uses a grid search algorithm to determine the best candidate models and perform a leave-one-out cross-validation to calculate the performance of each sampled point. A Voronoi diagram is applied to partition the sampling region into some local cells, and the Voronoi vertexes are considered as new candidate points. The performance of the sample points is used to estimate the accuracy of the model for a set of candidate points to select those that will improve more the model’s accuracy. Then, the number of candidate models is reduced. Finally, the performance of the framework is tested using two examples to demonstrate the applicability of the proposed method.
机译:代理建模(SM)通常用于减少耗时的系统模拟的计算负担。然而,人工智能(AI)的连续进步和嵌入式传感器的扩散导致了数字双胞胎(DT),设计采矿(DM)和软传感器(SS)的创建。这些方法代表了代理模型的产生的新挑战,因为它们需要实施精细的人工智能算法并最小化测量的物理实验的数量。为了减少物理系统的评估,已经开发了几种现有的自适应顺序采样方法;然而,它们在大多数情况下有限于Kriging模型和基于Kriging模型的蒙特卡罗模拟。在本文中,我们将不同的自适应采样方法集成到自动化机器学习方法(Automl)中,以帮助模型选择的过程,同时最大限度地减少基于人工智能算法的代理模型的系统评估和最大化系统性能。在每次迭代中,该框架使用网格搜索算法来确定最佳候选模型,并执行休假交叉验证以计算每个采样点的性能。应用Voronoi图来将采样区域分区为一些本地单元,并且Voronoi顶点被认为是新候选点。采样点的性能用于估计一组候选点的模型的准确性,以选择将改善模型的准确性的那些。然后,减少了候选模型的数量。最后,使用两个示例测试框架的性能,以证明所提出的方法的适用性。

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