NeuroInflow:预测月平均流入的新模型

M. Valença, Teresa B Ludermir
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引用次数: 1

摘要

在混合使用水力发电和非水力发电的公用事业中,水力发电厂的经济效益取决于水库的高度和未来几个月的流入水库的水量。对水库来水的准确预测使公用事业公司能够向各个电厂提供适量的燃料,并在各个非水力发电厂之间经济地分配负荷。出于这个原因,巴西电力行业的几家公司使用线性时间序列模型,如PARMA(周期性自动回归移动平均)模型。本文为河流流量预测提供了非线性s型回归块网络(NSRBN),称为NeuroInflow和PARMA模型之间的数值比较。该模型用于预测月平均流入量,并具有长期预测范围(未来一至十二个月)。在巴西不同流域的37座水力发电厂进行了测试。NeuroInflow的性能评价结果优于PARMA模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NeuroInflow: the new model to forecast average monthly inflow
In utilities using a mixture of hydroelectric and nonhydroelectric power, the economics of the hydroelectric plants depend upon the reservoir height and the inflow into the reservoir for several months into the future. Accurate forecasts of reservoir inflow allow the utility to feed proper amounts of fuel to individual plants, and to economically allocate the load between various nonhydroelectric plants. For this reasons, several companies in the Brazilian Electrical Sector use the linear time series models such as PARMA (periodic auto regressive moving average) models. This paper provides for river flow prediction a numerical comparison between nonlinear sigmoidal regression blocks networks (NSRBN), called NeuroInflow and PARMA models. The model was implemented to forecast monthly average inflow with a long-term prediction horizon (one to twelve months ahead). It was tested on 37 hydroelectric plants located in different river basins in Brazil. The results obtained in the evaluation of the performance of NeuroInflow were better than the results obtained with PARMA models.
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