An Echo State Network approach to structural health monitoring

Adam J. Wootton, C. Day, P. Haycock
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引用次数: 5

Abstract

Echo State Networks (ESNs) have been applied to time-series data arising from a structural health monitoring multi-sensor array placed onto a test footbridge which has been subjected to a number of potentially damaging interventions over a three year period. The time-series data, sampled approximately every five minutes from ten temperature sensors, have been used as inputs and the ESNs were tasked with predicting the expected output signal from eight tilt sensors that were also placed on the footbridge. The networks were trained using temperature and tilt sensor data up to the first intervention and subsequent discrepancies in the ESNs' prediction accuracy allowed inferences to be made about when further interventions occurred and also the level of damage caused. Comparing the error in signals with the location of each of the tilt sensors allowed damaged regions to be determined.
结构健康监测的回声状态网络方法
回声状态网络(ESNs)已被应用于时间序列数据,这些数据来自放置在测试人行桥上的结构健康监测多传感器阵列,该测试人行桥在三年内遭受了许多潜在的破坏性干预。从10个温度传感器中大约每5分钟采样一次的时间序列数据被用作输入,ESNs的任务是预测同样放置在人行桥上的8个倾斜传感器的预期输出信号。在第一次干预之前,使用温度和倾斜度传感器数据对神经网络进行了训练,随后,神经网络预测精度的差异允许对进一步干预发生的时间和造成的损害程度进行推断。将信号中的误差与每个倾斜传感器的位置进行比较,可以确定受损区域。
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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