一般化
计算机科学
一致性(知识库)
水准点(测量)
过程(计算)
高斯过程
克里金
回归
数据挖掘
机器学习
组分(热力学)
回归分析
高斯分布
人工智能
算法
数学
统计
操作系统
物理
热力学
数学分析
量子力学
地理
大地测量学
作者
Marcus Omori Yano,Samuel da Silva,Elói Figueiredo,Luis Gustavo Villani
标识
DOI:10.1177/14759217221094500
摘要
Machine learning methods used in Structural Health Monitoring applications still have generalization difficulties among structures, even when structures are nominally and topologically similar. The data sets present divergences between their probability distributions that do not allow the model’s generalization for damage detection. This issue is even more complex in situations where one wants to quantify damage levels through data sets collected from different structures. Transfer learning methods offer a solution to overcome those limitations, using relevant information from a labeled structure (source domain) to assist the analysis of another structure (target domain) under unknown conditions. Therefore, this paper proposes the use of transfer component analysis to mitigate divergences between the model/structure’s features, and the label consistency requirement is applied in combination with a Gaussian process regression model for damage quantification. The effectiveness of the estimated model improves when the labels consistency between domains is achieved, indicating the current damage level in the structure when the regression model achieves its best performance (lowest error). The proposed methodology is applied on the benchmark data of a three-story building structure from the Los Alamos National Laboratory using the knowledge from its numerical model under several conditions, where the complete information of its behavior is available. The results compare the analysis in the original space and after applying the proposed methodology, demonstrating an improvement of the performance in the damage detection and quantification steps.
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