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A neuro-fuzzy model for inflow forecasting of the Nile river at Aswan high dam

机译:阿斯旺高坝尼罗河流量预测的神经模糊模型

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River flow forecasting is an essential procedure that is necessary for proper reservoir operation. Accurate forecasting results in good control of water availability, refined operation of reservoirs and improved hydropower generation. Therefore, it becomes crucial to develop forecasting models for river inflow. Several approaches have been proposed over the past few years based on stochastic modeling or artificial intelligence (AI) techniques. In this article, an adaptive neuro-fuzzy inference system (ANFIS) model is proposed to forecast the inflow for the Nile River at Aswan High Dam (AHD) on monthly basis. A major advantage of the fuzzy system is its ability to deal with imprecision and vagueness in inflow database. The ANFIS model divides the input space into fuzzy sub-spaces and maps the output using a set of linear functions. A historical database of monthly inflows at AHD recorded over the past 130 years is used to train the ANFIS model and test its performance. The performance of the ANFIS model is compared to a recently developed artificial neural networks (ANN) model. The results show that the ANFIS model was capable of providing higher inflow forecasting accuracy specially at extreme inflow events compared with that of the ANN model. It is concluded that the ANFIS model can be quite beneficial in water management of Lake Nasser reservoir at AHD.
机译:河流流量预报是水库正常运行所必需的基本程序。准确的预测结果可以很好地控制水的供应,改善水库的运行状况并改善水力发电。因此,开发河流入流预测模型变得至关重要。在过去的几年中,已经提出了几种基于随机建模或人工智能(AI)技术的方法。在本文中,提出了一种自适应神经模糊推理系统(ANFIS)模型来每月预测阿斯旺高坝(AHD)尼罗河的入流量。模糊系统的主要优点是它能够处理流入数据库中的不精确性和模糊性。 ANFIS模型将输入空间划分为模糊子空间,并使用一组线性函数映射输出。过去130年中记录的AHD每月流入量的历史数据库用于训练ANFIS模型并测试其性能。将ANFIS模型的性能与最近开发的人工神经网络(ANN)模型进行比较。结果表明,与ANN模型相比,ANFIS模型能够提供更高的流量预报精度,特别是在极端流入事件下。结论是,ANFIS模型在AHD纳赛尔湖水库的水管理中将是非常有益的。

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