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Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River

机译:利用人工神经网络的储层沉积物管理 - 以阿尔卑斯山河河下部为例

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摘要

Reservoir sedimentation is a critical issue worldwide, resulting in reduced storage volumes and, thus, reservoir efficiency. Moreover, sedimentation can also increase the flood risk at related facilities. In some cases, drawdown flushing of the reservoir is an appropriate management tool. However, there are various options as to how and when to perform such flushing, which should be optimized in order to maximize its efficiency and effectiveness. This paper proposes an innovative concept, based on an artificial neural network (ANN), to predict the volume of sediment flushed from the reservoir given distinct input parameters. The results obtained from a real-world study area indicate that there is a close correlation between the inputs—including peak discharge and duration of flushing—and the output (i.e., the volume of sediment). The developed ANN can readily be applied at the real-world study site, as a decision-support system for hydropower operators.
机译:储层沉降是全球的关键问题,导致存储量减少,从而降低了储层效率。此外,沉淀也可以增加相关设施的洪水风险。在某些情况下,水库的绘图冲洗是一个适当的管理工具。然而,有各种各样的选择如何以及何时执行这种冲洗,这应该得到优化,以便最大化其效率和有效性。本文提出了一种基于人工神经网络(ANN)的创新概念,以预测从储存器中撞到的沉积物的体积给出了不同的输入参数。从真实研究区域获得的结果表明输入 - 包括峰值放电和冲洗的持续时间与输出之间存在紧密相关性(即,沉积物的体积)。发达的ANN可以容易地应用于现实世界的研究现场,作为水电运营商的决策支持系统。

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