用傅立叶级数预测短期需求

Laura M. Cruz, D. Alvarez, S. Rivera, Fernando A. Herrera
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引用次数: 6

摘要

本文提出了一种短期(24 h)负荷预测模型,以支持配电系统在突发事件时的决策。该方法是基于计算傅里叶级数的系数和角度,以表征载荷曲线。这些参数是使用历史负载报告拟合的。所提出的方法是使用两个电力变压器的数据来显示工作日和周末的需求曲线的行为。利用该算法得到的二次平均误差和系数拟合的计算效率,可以在电力系统控制和运行规划中实现该算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-Term Demand Forecast Using Fourier Series
This paper presents a model to forecast load in short-term (24 h) aiming to support decision-making during contingencies in power distribution systems. The methodology is based on the calculation of both, coefficients and angles of the Fourier series in order to characterize the load curve. These parameters are fitted using historical load reports. The proposed methodology was performed using the data of two power transformers to show the behaviour of the demand curve for weekdays as well as for weekends. The quadratic mean errors obtained using the proposed algorithm and according to the computational efficiency in the fitting of the coefficients, it is possible implement the algorithm in the power systems control and operation planning.
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