Research and application of pattern recognition LSTM based bridge data anomaly detection

Zheng Gao, Funian Li, Xingsheng Yu, Junfeng Yan, Zhidan Chen
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Abstract

The effectiveness of bridge condition assessment relies on the reliability of monitoring data, which can have multiple types of anomaly patterns in complex environments, and the accuracy and timeliness of traditional pattern recognition anomaly detection schemes do not meet the needs of practice. To address the multiple types of anomalies in bridge monitoring data, nine features that fit the bridge data situation are constructed using high-frequency acceleration data, and anomaly detection is performed using a pattern recognition LSTM neural network that is sensitive to time series, and run in real time by Flux in the Ganjiang Special Bridge monitoring system. The experimental results show that this scheme achieves a high level of accuracy for each category of anomaly detection, with a 4.53% improvement in accuracy compared to the PRNN neural network scheme. The overall detection time of real-time samples in practice is about 1.10s, and the overall anomaly detection accuracy reaches 99.65%, which meets the need for timeliness and accuracy of bridge anomaly detection system in practice.
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基于模式识别LSTM的桥梁数据异常检测研究与应用
桥梁状态评估的有效性依赖于监测数据的可靠性,而监测数据在复杂的环境中可能存在多种类型的异常模式,传统模式识别异常检测方案的准确性和时效性不满足实践的需要。针对桥梁监测数据中的多类型异常,利用高频加速度数据构建了9个与桥梁数据情况相匹配的特征,利用对时间序列敏感的模式识别LSTM神经网络进行异常检测,并由Flux在赣江特种桥梁监测系统中实时运行。实验结果表明,该方案对每一类异常检测都达到了较高的准确率,与PRNN神经网络方案相比,准确率提高了4.53%。实际中实时样本的整体检测时间约为1.10s,整体异常检测准确率达到99.65%,满足了桥梁异常检测系统在实际中对时效性和准确性的需求。
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