Short-term load forecasting using UK non-domestic businesses to enable demand response aggregators’ participation in electricity markets

Maitha Al Shimmari, D. Wallom
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Abstract

High-quality short-term load forecasting, particularly day-ahead, is essential to enable the demand response aggregator’s participation in the electricity market. The accuracy of load forecasting depends on many factors, including the size and quality of historical data, selection of the forecasting model, availability of weather data, and types of business sectors. This paper implements three state-of-the-art regression models, ridge regression (RR), random forests (RF), and gradient boosting (GB) to capture intricate variations in three UK cities (Newcastle, Peterborough, and Sheffield) in five business sectors (retail, entertainment, social, industrial, and other) from the UK non-domestic electricity load profiles and provide accurate day-ahead load forecasting. The models are implemented on a historical dataset that contains 7527 UK businesses with geographical postal codes, 30-min electricity consumption, and weather metrics. The performance is evaluated using the coefficient of determination R-squared. The presented results show that GB outperforms RF and RR as it provides the most accurate forecasting results, with limited improvement in forecasting results by including weather data. The aggregated business sectors’ forecasting accuracy is higher than individual business sectors’ forecasts.
利用英国非国内企业进行短期负荷预测,使需求响应聚合商能够参与电力市场
高质量的短期负荷预测,特别是日前负荷预测,对于需求响应聚合商参与电力市场至关重要。负荷预测的准确性取决于许多因素,包括历史数据的大小和质量、预测模型的选择、天气数据的可用性和业务部门的类型。本文实现了三种最先进的回归模型,岭回归(RR)、随机森林(RF)和梯度增强(GB),以捕获英国三个城市(纽卡斯尔、彼得伯勒和谢菲尔德)五个商业部门(零售、娱乐、社会、工业和其他)的复杂变化,并提供准确的日前负荷预测。这些模型是在一个历史数据集上实现的,该数据集包含7527家英国企业,具有地理邮政编码、30分钟电力消耗和天气指标。使用决定系数r平方来评估性能。结果表明,GB比RF和RR提供了最准确的预报结果,在包括天气数据的预报结果改善有限。综合行业预测准确率高于单个行业预测。
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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