神经网络与PARMA模型:河流流量预测的案例研究

M. Valença, Teresa B Ludermir
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引用次数: 4

摘要

本文提出了一种用于季节性河流流量预测的构造性神经网络模型。地表水水文是水库设计和运行的基础。如果来水的性质信息是预先确定的,那么水库就可以按照一定的决策规则来运行,以使下游洪水的损害最小化。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Box-Jenkins开发的PARMA(周期性自回归移动平均)模型。本文提供了非线性s型回归块网络(NSRBN)和PARMA模型在河流流量预测方面的数值比较。该模型用于逐级预测周平均流入。它在巴西不同流域的四个水力发电厂进行了测试。使用NSRBN模型得到的结果优于PARMA模型得到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural networks vs. PARMA modelling: case studies of river flow prediction
This paper presents an constructive neural network model for seasonal stream flow forecasting. This surface water hydrology is basic to the design and operation of the reservoir. If information on the nature of the inflow is determinable in advance, then the reservoir can be operated by some decision rule to minimize downstream flood damage. For this reasons, several companies in the Brazilian Electrical Sector use the linear time-series models such as PARMA (periodic autoregressive moving average) models developed by Box-Jenkins. This paper provides for river flow prediction a numerical comparison between neural networks, called nonlinear sigmoidal regression blocks networks (NSRBN) and PARMA models. The model was implemented to forecast weekly average inflow on an step-ahead basis. It was tested on four hydroelectric plants located in different river basins in Brazil. The results obtained using the NSRBN were better than the results obtained with PARMA models.
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