A Methodology for Energy Usage Prediction in Long-Lasting Abnormal Events

Gabriele Maurina, Hajar Homayouni, Sudipto Ghosh, I. Ray, G. Duggan
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Abstract

Accurate energy consumption prediction is critical for proper resource allocation, meeting energy demand, and energy supply security. This work aims at developing a methodology for accurately modeling and predicting electricity consumption during abnormal long-lasting events, such as COVID-19 pandemic, which considerably affect consumption patterns in different types of premises. The proposed methodology involves three steps: (A) selects among multiple models the most accurate one in energy consumption prediction under normal conditions, (B) uses the selected model to analyze the impact of a specific abnormal event on energy consumption for various classes of premises, and (C) investigates which features contribute most to energy consumption prediction for abnormal conditions and which features can be added to improve such predictions.We use COVID-19 as a case study with datasets obtained from Fort Collins Utilities, which contain energy consumption data for residential and different sizes of commercial and industrial premises in the city of Fort Collins, Colorado, USA. We also use temperature records from NOAA and COVID-19 public orders from Larimer County.We validate the methodology by demonstrating that the methodology can help design a model suited for the pandemic situation using representative features, and as a result, accurately predict the energy consumption. Our results show that the MLP model selected by our methodology performs better than the other models even when they all use the COVID-related features. We also demonstrate that the methodology can help measure the impacts of the pandemic on the energy consumption.
长期异常事件的能源使用预测方法
准确的能源消费预测对资源合理配置、满足能源需求、保障能源供应至关重要。这项工作旨在开发一种方法,用于准确建模和预测异常长期事件(如COVID-19大流行)期间的用电量,这些事件会对不同类型房屋的消费模式产生很大影响。所提出的方法包括三个步骤:(A)在多个模型中选择最准确的正常情况下的能耗预测模型,(B)使用所选模型分析特定异常事件对各类房屋能耗的影响,以及(C)调查哪些特征对异常条件下的能耗预测贡献最大,哪些特征可以添加以改进此类预测。我们以COVID-19作为案例研究,使用从柯林斯堡公用事业公司获得的数据集,其中包含美国科罗拉多州柯林斯堡市住宅和不同规模的商业和工业场所的能耗数据。我们还使用了NOAA的温度记录和拉里默县的COVID-19公共订单。我们通过证明该方法可以使用代表性特征帮助设计适合大流行情况的模型,从而准确预测能源消耗,从而验证了该方法。我们的结果表明,我们的方法选择的MLP模型比其他模型表现更好,即使它们都使用与covid相关的特征。我们还证明,该方法可以帮助衡量大流行对能源消耗的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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