On comparison of two strategies in net demand forecasting using Wavelet Neural Network

H. Shaker, H. Chitsaz, H. Zareipour, D. Wood
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引用次数: 12

Abstract

In this paper, direct and indirect net demand forecasting approaches are compared. Net demand is defined as the total system load minus total wind power generation of the system. Since volatility of wind power is added to the net demand, it is more volatile and uncertain than the load alone. This could make the results of direct and indirect net demand forecasting approaches different. Wavelet Neural Network (WNN) with Morlet Wavelet activation function is selected to be the forecasting engine for wind power, load, and net demand in this paper. For training the WNN, Levenberg-Marquardt algorithm is used. Simulations are performed using Alberta's and Ireland's wind and load data. The WNN forecasting engine is compared to MLP and RBF neural networks along with the persistence. Results showed the superiority of the WNN over other models for net demand forecasting application.
两种基于小波神经网络的净需求预测策略的比较
本文对直接和间接净需求预测方法进行了比较。净需求定义为系统总负荷减去系统总风力发电量。由于风电的波动性被添加到净需求中,因此它比单独的负荷更具波动性和不确定性。这可能导致直接和间接净需求预测方法的结果不同。本文选择具有Morlet小波激活函数的小波神经网络作为风电功率、负荷和净需求的预测引擎。对于训练WNN,使用Levenberg-Marquardt算法。利用艾伯塔省和爱尔兰的风力和负荷数据进行了模拟。将WNN预测引擎与MLP和RBF神经网络进行了比较,并分析了其持久性。结果表明,WNN在净需求预测应用方面优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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