基于指数平滑时间序列和反向传播方法的回归预测模型

N. B. Elizaga, Elmer A. Maravillas, B. Gerardo
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引用次数: 5

摘要

本文采用时间序列指数平滑和基于人工神经网络的反向传播方法建立了菲律宾安格特大坝入库预测模型。该预测模型是根据大坝2003年至2012年的日平均入流观测数据进行训练的。任何形成连续5天矢量的实时流入都可以作为回归过程的输入。盲测集的观测和预测流量的相关系数为0.959,验证集的相关系数为0.925,模型的预测能力可以为模型用户提供未来24小时内水库流入情况的更好的视角和前景。在此背景下,当集成到决策支持应用程序中时,该模型可以为大坝管理者提供较长的时间来达到最佳水库蓄水量估计以及负荷调度和调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression-based inflow forecasting model using exponential smoothing time series and backpropagation methods for Angat Dam
This paper deals with time series exponential smoothing and artificial neural network-based backpropagation methods in formulating a reservoir inflow forecasting model for Angat Dam in the Philippines. The predictive model is trained using dam daily average inflow observations inclusive of years 2003 to 2012, as recorded. Any real-time inflows forming a 5-consecutive-day vector could serve as input to the regression process. Its predictive power as measured by correlation coefficient at 0.959 for observed and predicted inflows taken from blind test set as well as 0.925 from validation set, could provide model users better perspective and outlook with regard to reservoir inflow conditions 24 hours into the future. In the background, this proposed model can offer dam managers protracted time in arriving at optimum reservoir water storage estimation as well as in load dispatching and scheduling when integrated into a decision support application.
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