美国居民用电量特征提取与数据差距分析

Mohammad Karimzadeh, G. Zavaliagkos, K. Panetta
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摘要

不断增加的电力消耗,特别是在住宅建筑中,对电网的管理提出了重大挑战。这些挑战可以通过能源效率的提高和智能能源管理应用程序的开发来缓解,以预测和防止峰值。能源效率和能源管理都需要深入了解房屋内的详细个人负荷水平。在这项工作中,开发了美国住宅建筑的大型真实住宅数据集,并将其用作解决影响当前最先进的电力消耗分析算法的数据差距的基础。该数据集是第一个包含非侵入式负载监控(NILM)的已知数据库,这意味着每个房屋内的个人电器消耗,包括该住宅中停放的任何电动汽车都被测量。研究了电力消耗、天气和房屋大小之间的相互作用,并与当前最先进的方法进行了比较,以展示性能并更准确地预测未来的使用情况。该方法提取了重要的时间周期,进行了深入的数据丢失分析,并基于房屋下半小时消耗的预测开发了长短期记忆(LSTM)模型。结果表明,加入NILM信息的更细层次数据对LSTM预测的提高超过5%。
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Feature Extraction and Data Gap Analysis of US Residential Electricity Consumption
Increasing electricity consumption, especially in residential buildings, poses significant challenges to the management of the electric grid. These challenges can be mitigated by gains in energy efficiency and by the development of intelligent energy management applications to anticipate and prevent peaks. Both energy efficiency and energy management require a deep understanding of detailed individual load levels within a house. In this work, a large real world residential dataset of US residential buildings is developed and used as the foundation for addressing the data gaps that impair current state-of-the-art electricity consumption analysis algorithms. This dataset is the first known database that includes non-intrusive load monitoring (NILM), meaning that individual appliance consumption within each house, including any electric vehicles garaged in that residence is measured. The interactions between electricity consumption, weather and size of houses is investigated and compared to current state-of-the-art methods to demonstrate the performance and more accurate prediction of future usage. The approach extracts important time periodicities, performs a deep data loss analysis and develops a long-short term memory (LSTM) model based forecast for next half hour consumption in a house. The results demonstrate the impact of adding finer level data of NILM information to improve the LSTM forecasts by over 5%.
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