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Predicting piezometric water level in dams via artificial neural networks

机译:通过人工神经网络预测大坝的测压水位

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摘要

The safety control of dams is based on measurements of parameters of interest such as seepage flows, seepage water clarity, piezometric levels, water levels, pressures, deformations or movements, temperature variations, loading conditions, etc. Interpretation of these large sets of available data is very important for dam health monitoring and it is based on mathematical models. Modelling seepage through geological formations located near the dam site or dam bodies is a challenging task in dam engineering. The objective of this study is to develop a feedforward neural network (FNN) model to predict the piezometric water level in dams. An improved resilient propagation algorithm has been used to train the FNN. The measured data have been compared with the results of FNN models and multiple linear regression (MLR) models that have been widely used in analysis of the structural dam behaviour. The FNN and MLR models have been developed and tested using experimental data collected during 9 years. The results of this study show that FNN models can be a powerful and important tool which can be used to assess dams.
机译:大坝的安全控制是基于对相关参数的测量,例如渗流,渗水净度,测压水位,水位,压力,变形或运动,温度变化,载荷条件等。这些大量可用数据的解释对大坝健康状况的监测非常重要,它基于数学模型。在大坝工程中,对位于坝址或坝体附近的地质构造进行渗流建模是一项艰巨的任务。这项研究的目的是建立一个前馈神经网络(FNN)模型来预测大坝中的测压水位。改进的弹性传播算法已用于训练FNN。将实测数据与已广泛用于结构坝性能分析的FNN模型和多元线性回归(MLR)模型的结果进行了比较。 FNN和MLR模型是使用9年中收集的实验数据开发和测试的。这项研究的结果表明,FNN模型可以成为可用于评估水坝的强大而重要的工具。

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