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Data mining algorithms for bridge health monitoring: Kohonen clustering and LSTM prediction approaches

机译:用于桥梁健康监测的数据挖掘算法:Kohonen聚类和LSTM预测方法

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In recent years, bridge health monitoring system has been widely used to deal with massive data produced with the continuous growth of monitoring time. However, how to effectively use these data to comprehensively analyze the state of a bridge and provide early warning of bridge structure changes is an important topic in bridge engineering research. This paper utilizes two algorithms to deal with the massive data, namely Kohonen neural network and long short-term memory (LSTM) neural network. The main contribution of this study is using the two algorithms for health state evaluation of bridges. The Kohonen clustering method is shown to be effective for getting classification pattern in normal operating condition and is straightforward for outliers detection. In addition, the LSTM prediction method has an excellent prediction capability which can be used to predict the future deflection values with good accuracy and mean square error. The predicted deflections agree with the true deflections, which indicate that the LSTM method can be utilized to obtain the deflection value of structure. What's more, we can observe the changing trend of bridge structure by comparing the predicted value with its limit value under normal operation.
机译:近年来,桥梁健康监测系统已被广泛用于处理随着监测时间的不断增长而产生的海量数据。然而,如何有效地利用这些数据来全面分析桥梁的状态并提供桥梁结构变化的预警是桥梁工程研究的重要课题。本文利用两种算法来处理海量数据,即Kohonen神经网络和长短期记忆(LSTM)神经网络。这项研究的主要贡献是使用两种算法对桥梁的健康状态进行评估。 Kohonen聚类方法被证明对于在正常操作条件下获得分类模式是有效的,并且对于异常值检测很简单。此外,LSTM预测方法具有出色的预测能力,可用于以良好的准确性和均方误差预测未来的挠度值。预测的挠度与真实的挠度相吻合,这表明可以使用LSTM方法获得结构的挠度值。另外,通过比较正常运行时的预测值和极限值,可以观察桥梁结构的变化趋势。

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