电力负荷长期预测的波动性——ARIMA-GARCH方法

S. Khuntia, Jose L. Rueda, M. A. Meijden
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引用次数: 10

摘要

电力系统长期负荷预测对系统规划和发展具有重要意义。长期负荷预测用时间序列表示。因此,在负荷预测时间序列中检查波动率的影响是很重要的。简而言之,长期波动影响四个主要行为:风险管理、长期行为、可靠性和对未来波动的押注。为了检验波动对负荷序列的影响,本文基于美国独立系统运营商的数据,提出了一种基于单变量时间序列的长期负荷预测技术。本文采用ARIMA技术对电力负荷进行预测,并分析了ARCH和GARCH对剩余时间序列的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Volatility in electrical load forecasting for long-term horizon — An ARIMA-GARCH approach
Electrical load forecasting in long-term horizon of power systems plays an important role for system planning and development. Load forecast in long-term horizon is represented as time-series. Thus, it is important to check the effect of volatility in the forecasted load time-series. In short, volatility in long-term horizon affects four main actions: risk management, long-term actions, reliability, and bets on future volatility. To check the effect of volatility in load series, this paper presents a univariate time series-based load forecasting technique for long-term horizon based on data corresponding to a U.S. independent system operator. The study employs ARIMA technique to forecast electrical load, and also the analyzes the ARCH and GARCH effects on the residual time-series.
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