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Active Learning Data Selection for Adaptive Online Structural Damage Estimation

机译:主动学习数据选择用于自适应在线结构损伤估计

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摘要

Adaptive learning techniques have recently been considered for structural health monitoring applications due to their flexibility and effectiveness in addressing real-world challenges such as variability in the monitoring of environmental and operating conditions. In this paper, an active learning data selection procedure is proposed that adaptively selects the most informative measurements to include, from multiple available measurements, in estimating structural damage. This is important, since not all the measurements may provide useful information and could reduce performance when processed. Within the adaptive learning framework, the data selection problem is formulated to choose those measurements which are most representative of the diversity within a damage state. This is achieved by extracting time-frequency analysis based statistical similarity features from the measurements, and selecting uniformly distributed subsets to build representative reference sets. The utility of the proposed method is demonstrated by improvements in adaptive learning performance for the estimation of fatigue damage in an aluminum compact tension sample.
机译:由于适应性学习技术在应对诸如环境和操作条件监测的可变性等现实世界挑战方面的灵活性和有效性,最近已考虑将其用于结构健康监测应用程序。在本文中,提出了一种主动学习数据选择程序,该程序可以自适应地选择信息量最大的度量,以从多个可用度量中包括估计结构损伤。这很重要,因为并非所有的测量都可以提供有用的信息,并且在处理时可能会降低性能。在自适应学习框架内,制定了数据选择问题,以选择最能代表损害状态下多样性的度量。这是通过从测量中提取基于时频分析的统计相似性特征,并选择均匀分布的子集来构建代表性参考集来实现的。该方法的实用性通过改进自适应学习性能(用于估算铝制紧凑型拉伸样品中的疲劳损伤)得到证明。

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