针对性残差分析改进电力负荷预测

Scott Alfeld, P. Barford
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引用次数: 2

摘要

在美国,电网的管理和运营在很大程度上是由称为独立系统运营商(ISO)的地区当局处理的。负荷预测是能源市场短期交易和电网有效运行的关键环节之一。在本文中,我们分析了负荷预测,并开发了可以由ISO或第三方直接使用的改进预测的方法。具体来说,我们评估每小时的电力负荷预测与中西部ISO提供的实际负荷数据在两年期间。残差分析显示,每小时预测的系统性不准确性可能是由多种因素引起的,包括建模错误和电网中的抽水蓄能。我们利用基于机器学习的方法来改进短期内的预测。我们的方法将全年预测的均方误差降低了大约20%。通过将预报范围缩短至1至32小时,我们能够提高90%以上。这些改进在运营能源市场环境中非常重要,因为即使预测的微小差异也可能导致传输行为和市场活动的大幅波动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Targeted residual analysis for improving electric load forecasting
Management and operation of the electrical grid in the US is handled in large part by regional authorities called Independent System Operators (ISO's). One of the key activities of an ISO is load forecasting which is critical to short-term energy trading markets and effective operation of the power grid. In this paper, we analyze load forecasts and develop methods for improving forecasts that can be used directly by ISO's or third parties. Specifically, we assess the hourly electrical load forecasts against actual load data provided by Midwest ISO over a two-year period. Residual analysis shows systematic inaccuracies in hourly forecasts that can be caused by a variety of factors including modeling errors and pumped storage in the grid. We utilize machine learning-based methods to improve forecasts over short time horizons. Our methods reduce the mean squared error of forecasts over the entire year by roughly 20%. By shortening the forecast horizon to 1 to 32 hours, we are able to improve by over 90%. These improvements can be important in operational energy market contexts, where even small differences in forecasts can lead to large swings in transmission behavior and market activity.
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