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首页> 外文期刊>Journal of Agricultural Engineering >A neuro-fuzzy model to predict the inflow to the guardialfiera multipurpose dam (Southern Italy) at medium-long time scales
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A neuro-fuzzy model to predict the inflow to the guardialfiera multipurpose dam (Southern Italy) at medium-long time scales

机译:一种神经模糊模型,用于预测中长期尺度上的Guardialfiera多功能水坝(意大利南部)的流入量

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Intelligent computing tools based on fuzzy logic and artificial neural networks have been successfully applied in various problems with superior performances. A new approach of combining these two powerful tools, known as neuro-fuzzy systems, has increasingly attracted scientists in different fields. Few studies have been undertaken to evaluate their performances in hydrologic modeling. Specifically are available rainfall-runoff modeling typically at very short time scales (hourly, daily or event for the real-time forecasting of floods) with in input precipitation and past runoff (i.e. inflow rate) and in few cases models for the prediction of the monthly inflows to a dam using the past inflows as input. This study presents an application of an Adaptive Network-based Fuzzy Inference System (ANFIS), as a neuro-fuzzy-computational technique, in the forecasting of the inflow to the Guardialfiera multipurpose dam (CB, Italy) at the weekly and monthly time scale. The latter has been performed both directly at monthly scale (monthly input data) and iterating the weekly model. Twenty-nine years of rainfall, temperature, water level in the reservoir and releases to the different uses were available. In all simulations meteorological input data were used and in some cases also the past inflows. The performance of the defined ANFIS models were established by different efficiency and correlation indices. The results at the weekly time scale can be considered good, with a Nash- Sutcliffe efficiency index E = 0.724 in the testing phase. At the monthly time scale, satisfactory results were obtained with the iteration of the weekly model for the prediction of the incoming volume up to 3 weeks ahead (E = 0.574), while the direct simulation of monthly inflows gave barely satisfactory results (E = 0.502). The greatest difficulties encountered in the analysis were related to the reliability of the available data. The results of this study demonstrate the promising potential of ANFIS in the forecasting of the short term inflows to a reservoir and in the simulation of different scenarios for the water resources management in the longer term.
机译:基于模糊逻辑和人工神经网络的智能计算工具已成功应用于各种问题中,并具有出色的性能。结合这两种强大工具的新方法,即神经模糊系统,越来越吸引了不同领域的科学家。很少有研究评估其在水文模拟中的性能。具体来说,通常是在非常短的时间尺度(每小时,每天或实时进行洪水预报的事件)下可用的降雨径流模型,其中包括输入降水量和过去的径流(即入流率),在少数情况下,可以使用模型进行预报。使用过去的流量作为输入的水坝的每月流量。这项研究提出了一种基于自适应网络的模糊推理系统(ANFIS),作为一种神经模糊计算技术,可以在每周和每月的时间尺度上预测到Guardialfiera多功能水坝(意大利CB)的流量。后者既可以直接以每月规模(每月输入数据)执行,也可以迭代每周模型。提供了二十九年的降雨,温度,水库中的水位以及对不同用途的排放。在所有模拟中,均使用了气象输入数据,在某些情况下还使用了过去的流入量。定义的ANFIS模型的性能是通过不同的效率和相关指数来建立的。每周时间范围内的结果可以认为是不错的,在测试阶段,纳什-苏特克利夫效率指数E = 0.724。在月度时间尺度上,通过每周模型的迭代获得了令人满意的结果,以预测未来3周之前的流入量(E = 0.574),而直接模拟月度流入量则几乎没有令人满意的结果(E = 0.502) )。分析中遇到的最大困难与可用数据的可靠性有关。这项研究的结果证明了ANFIS在预测短期流入水库以及从长远来看对水资源管理的不同情景进行模拟方面的潜力。

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