Deep recurrent-convolutional neural network learning and physics Kalman filtering comparison in dynamic load identification

Marios Impraimakis
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Abstract

The dynamic structural load identification capabilities of the gated recurrent unit, long short-term memory, and convolutional neural networks are examined herein. The examination is on realistic small dataset training conditions and on a comparative view to the physics-based residual Kalman filter (RKF). The dynamic load identification suffers from the uncertainty related to obtaining poor predictions when in civil engineering applications only a low number of tests are performed or are available, or when the structural model is unidentifiable. In considering the methods, first, a simulated structure is investigated under a shaker excitation at the top floor. Second, a building in California is investigated under seismic base excitation, which results in loading for all degrees of freedom. Finally, the International Association for Structural Control-American Society of Civil Engineers (IASC-ASCE) structural health monitoring benchmark problem is examined for impact and instant loading conditions. Importantly, the methods are shown to outperform each other on different loading scenarios, while the RKF is shown to outperform the networks in physically parametrized identifiable cases.
动态负载识别中的深度递归-卷积神经网络学习与物理卡尔曼滤波比较
本文研究了门控递归单元、长短期记忆和卷积神经网络的动态结构载荷识别能力。研究是在现实的小数据集训练条件下进行的,并与基于物理的残差卡尔曼滤波器(RKF)进行了比较。在土木工程应用中,如果只进行了少量测试或只有少量测试可用,或者结构模型无法识别,动态载荷识别就会受到不确定性的影响,导致预测结果不佳。在考虑这些方法时,首先对顶层振动激励下的模拟结构进行了研究。其次,对加利福尼亚州的一栋建筑进行了地震基础激励调查,这导致了所有自由度的加载。最后,研究了国际结构控制协会-美国土木工程师协会(IASC-ASCE)结构健康监测基准问题的冲击和瞬时加载条件。重要的是,在不同的加载情况下,这些方法的性能都优于其他方法,而在物理参数可识别的情况下,RKF 的性能优于网络。
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