Statistical Scenarios for Demand Forecast of a High Voltage Feeder: A Comparative Study

R. Bayindir, M. Yesilbudak, U. Çetinkaya, H. Bulbul, F. Arslan
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引用次数: 1

Abstract

The electricity demand forecasting has gained remarkable concern in energy market operation and planning with the emergence of deregulation in the power industry. Power system operators benefit from accurate demand forecasts by supporting investment decisions more objectively. As a crucial requirement, this paper focuses on hourly demand forecasts of a high voltage feeder. Moving average (MA), weighted moving average (WMA), autoregressive moving average (ARMA) and autoregressive integrated moving average (ARIMA) models have been used for creating statistical demand scenarios at 1-h, 2-h, 3-h and 4-h intervals. Many constructive comparisons have been conducted among MA, WMA, ARMA and ARIMA models comprehensively. Besides, the best statistical model employed in each hourly demand scenario provides the robust improvement percentage with respect to the persistence model.
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高压馈线需求预测的统计方案:比较研究
随着电力行业放松管制的出现,电力需求预测在能源市场运行和规划中受到了极大的关注。电力系统运营商通过更客观地支持投资决策,从准确的需求预测中受益。作为一项重要的需求,本文重点研究了高压馈线的小时需求预测。移动平均线(MA)、加权移动平均线(WMA)、自回归移动平均线(ARMA)和自回归综合移动平均线(ARIMA)模型被用于创建1小时、2小时、3小时和4小时间隔的统计需求情景。对MA、WMA、ARMA和ARIMA模型进行了全面的、有建设性的比较。此外,在每个小时需求场景中使用的最佳统计模型提供了相对于持久性模型的健壮的改进百分比。
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