A data-driven approach for electricity load profile prediction of new supermarkets

Ramon Granell , Colin J. Axon , Maria Kolokotroni , David C.H. Wallom
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引用次数: 6

Abstract

Predicting the electricity demand of new supermarkets will help with design, planning, and future energy management. Instead of creating complex site-specific thermal engineering models, simplified statistical energy prediction models as we propose can be useful to energy managers. We have designed and implemented a data-driven method to predict the ‘electricity daily load profile’ (EDLP) for new stores. Our preliminary work exploits a data-set of hourly electricity meter readings for 196 UK supermarkets from 2012 to 2015. Our method combines the most similar stores on a feature space (floor area split by usage such as general merchandise, food retail and offices and geographical location) to obtain a prediction of the EDLP of a new store. Computational experiments were performed separately for subsets of supermarkets that consume only electricity, both electricity and gas, and by season. The best results were obtained when predicting Summer EDLPs with stores using electricity only. In this case, the average Manhattan difference and the percentage difference are 234 kWh and 16%, respectively. We aim to develop an application tool for supermarket energy managers to automatically generate EDLP for potential new stores.

新超市电力负荷预测的数据驱动方法
预测新超市的电力需求将有助于设计、规划和未来的能源管理。我们提出的简化的统计能源预测模型可以对能源管理人员有用,而不是创建复杂的特定地点的热工模型。我们设计并实施了一种数据驱动的方法来预测新商店的“每日电力负荷概况”(EDLP)。我们的初步工作利用了2012年至2015年英国196家超市每小时电表读数的数据集。我们的方法结合了一个特征空间(按用途划分的建筑面积,如一般商品、食品零售、办公室和地理位置)上最相似的商店,以获得新店的EDLP预测。计算实验分别对只消耗电力(电力和天然气)的超市子集进行,并按季节进行。当仅使用电力存储时,预测夏季edlp的结果最好。在这种情况下,曼哈顿的平均差异和百分比差异分别为234千瓦时和16%。我们的目标是为超市能源管理人员开发一个应用工具,为潜在的新店自动生成EDLP。
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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