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Structural sensing with deep learning: Strain estimation from acceleration data for fatigue assessment

机译:深度学习的结构感应:疲劳评估加速数据的应变估计

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Many of the civil structures experience significant vibrations and repeated stress cycles during their life span. These conditions are the bases for fatigue analysis to accurately establish the remaining fatigue life of the structures that ideally requires a full-field strain assessment of the structures over years of data collection. Traditional inspection methods collect strain measurements by using strain gauges for a short time span and extrapolate the measurements in time; nevertheless, large-scale deployment of strain gauges is expensive and laborious as more spatial information is desired. This paper introduces a deep learning-based approach to replace this high cost by employing inexpensive data coming from acceleration sensors. The proposed approach utilizes collected acceleration responses as inputs to a multistage deep neural network based on long short-term memory and fully connected layers to estimate the strain responses. The memory requirement of training long acceleration sequences is reduced by proposing a novel training strategy. In the evaluation of the method, a laboratory-scale horizontally curved girder subjected to various loading scenarios is tested.
机译:许多民用结构在寿命期间经历了显着的振动和重复的压力周期。这些条件是疲劳分析的基础,以便准确地建立结构的剩余疲劳寿命,理想地需要多年数据收集的结构的全场应变评估。传统检测方法通过使用应变仪进行短时间跨度来收集应变测量,并及时推断测量值;然而,随着需要更多空间信息,应变仪的大规模部署是昂贵的且艰苦的。本文介绍了一种深入的学习方法,通过采用来自加速传感器的廉价数据来替换这种高成本。所提出的方法利用收集的加速响应作为基于长短期存储器和完全连接的层的多级深神经网络的输入,以估计应变响应。通过提出新颖的培训策略,减少了训练长加速度序列的记忆要求。在该方法的评价中,测试了经过各种加载方案的实验室级水平弯曲梁。

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