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Sensor data reconstruction using bidirectional recurrent neural network with application to bridge monitoring

机译:双向递归神经网络的传感器数据重构及其在桥梁监测中的应用

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摘要

Sensors are now commonly employed for monitoring and controlling of engineering systems. Despite significant advances in sensor technologies and their reliability, sensor fault is inevitable. Sensor data reconstruction methods have been studied to recover the missing or faulty sensor data, as well as to enable sensor fault detection and identification. Most existing sensor data reconstruction methods use only the spatial correlations among the sensor data, but they rarely consider the temporal correlations among the data. Use of temporal correlations among the sensor data can potentially improve the accuracy for reconstructing the data. This paper presents a data-driven bidirectional recurrent neural network (BRNN) for sensor data reconstruction, taking into consideration the spatiotemporal correlations among the sensor data. The methodology is demonstrated using the sensor data collected from the Telegraph Road Bridge located along the 1-275 Corridor in Michigan. The results show that the BRNN-based method performs better than other current data-driven methods for accurately reconstructing the sensor data.
机译:现在,传感器通常用于监视和控制工程系统。尽管传感器技术及其可靠性有了重大进步,但传感器故障仍不可避免。已经研究了传感器数据重建方法以恢复丢失或有故障的传感器数据,以及实现传感器故障的检测和识别。现有的大多数传感器数据重建方法仅使用传感器数据之间的空间相关性,但很少考虑数据之间的时间相关性。使用传感器数据之间的时间相关性可以潜在地提高重建数据的准确性。考虑到传感器数据之间的时空相关性,本文提出了一种数据驱动的双向递归神经网络(BRNN),用于传感器数据的重建。使用从密歇根州1-275走廊沿线的电报路桥收集的传感器数据演示了该方法。结果表明,基于BRNN的方法在准确重建传感器数据方面比其他当前的数据驱动方法表现更好。

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