Predictive model for the horizontal displacement of a dam using autoregressive neural network

G. Oltean, L. Ivanciu, M. Gordan, I. Stoian, I. Kovacs
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Abstract

The interpretation of data gathered from dam monitoring directly influences the detection of abnormal behaviors. Using previously recorded data, predictive models can be developed, so that the signs of a possible failure are detected as early as possible. The paper presents a multi-step ahead predictive model to generate the values for the horizontal displacement of a dam, using previous values of the displacement, water level and temperature. The model is based on an autoregressive neural network that was trained and tested using historical data. The results show a good prediction accuracy (maximum 2.63% relative errors), especially for up to 8 months ahead prediction).
基于自回归神经网络的大坝水平位移预测模型
对大坝监测数据的解释直接影响异常行为的检测。利用先前记录的数据,可以开发预测模型,以便尽早发现可能出现的故障迹象。本文提出了一种多步超前预测模型,利用大坝的位移、水位和温度的先验值来生成大坝的水平位移值。该模型基于自回归神经网络,该神经网络使用历史数据进行训练和测试。结果表明,预测精度较高(相对误差最大2.63%),特别是对8个月以内的预测。
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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