Improved bidirectional echo state network-based time series reconstruction and prediction for structural response

Yan-Ke Tan, Yu-Ling Wang, Yiqing Ni, Qi-Lin Zhang, You-Wu Wang
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引用次数: 0

Abstract

The integrity of the data collected by structural health monitoring systems has a significant impact on structural damage detection and state assessment. The missing or abnormal segments and unacquired future segments can be supplemented through signal reconstruction and prediction models. This paper proposes two novel models toward these two tasks based on bidirectional echo state network, which can exploit both historical and future signal segments to improve accuracies. Adaptive combination coefficient is introduced to control the rate of error accumulation. The effectiveness and robustness of the proposed models are verified by cases of synchronized missing, long-term missing, and boundary effect. A hyperparameter study related to both reservoir and memory is conducted to generate optimal models with maximum processing abilities. An ARIMAX and improved Kalman filter-based preprocessing method is adopted to keep all useful information and provide optimal estimation of the true signal values. The proposed models also show high performance in generating the high-frequency components. The superiority of the proposed models is validated through the datasets measured from Canton Tower, both stationary signals under free vibration and non-stationary signals under earthquake being considered.
基于双向回波状态网络的改进型结构响应时间序列重建和预测
结构健康监测系统所收集数据的完整性对结构损伤检测和状态评估具有重要影响。可以通过信号重建和预测模型来补充缺失或异常片段以及未获取的未来片段。本文针对这两项任务提出了基于双向回波状态网络的两种新型模型,可同时利用历史信号段和未来信号段来提高精确度。本文引入了自适应组合系数来控制误差累积率。同步缺失、长期缺失和边界效应等情况验证了所提模型的有效性和鲁棒性。为了生成具有最大处理能力的最优模型,对与储层和记忆相关的超参数进行了研究。采用基于 ARIMAX 和改进卡尔曼滤波器的预处理方法,以保留所有有用信息,并提供真实信号值的最优估计。所提出的模型在生成高频成分方面也表现出很高的性能。从广州塔测量的数据集验证了所提模型的优越性,这些数据集既考虑了自由振动下的静态信号,也考虑了地震下的非静态信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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