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Dam deformation analysis based on BPNN merging models

机译:基于BPNN合并模型的大坝变形分析

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AbstractHydropower has made a significant contribution to the economic development of Vietnam, thus it is important to monitor the safety of hydropower dams for the good of the country and the people. In this paper, dam horizontal displacement is analyzed and then forecasted using three methods: the multi-regression model, the seasonal integrated auto-regressive moving average (SARIMA) model and the back-propagation neural network (BPNN) merging models. The monitoring data of the Hoa Binh Dam in Vietnam, including horizontal displacement, time, reservoir water level, and air temperature, are used for the experiments. The results indicate that all of these three methods can approximately describe the trend of dam deformation despite their different forecast accuracies. Hence, their short-term forecasts can provide valuable references for the dam safety.
机译:摘要水电为越南的经济发展做出了重要贡献,因此对水电大坝的安全进行监测对于国家和人民的利益至关重要。本文通过三种方法对大坝的水平位移进行分析和预测:多元回归模型,季节综合自回归移动平均线(SARIMA)模型和反向传播神经网络(BPNN)合并模型。实验使用了越南Hoa Binh大坝的监测数据,包括水平位移,时间,水库水位和气温。结果表明,尽管这三种方法的预测精度不同,但它们都能大致描述大坝变形的趋势。因此,他们的短期预测可以为大坝安全提供有价值的参考。

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