Net Load Forecast based on Behind-the-Meter Disaggregation of Smart Meter Data

Mian Jia, Kang Pu, Yue Zhao
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Abstract

As the penetration of behind-the-meter (BTM) rooftop solar energies continues to increase in power distribution systems, it is of paramount importance for load serving entities and system operators to forecast net loads in the system. In this paper, novel algorithms for training high-performance predictors for day-ahead net load forecasting are developed. Importantly, the overall method only utilizes metered net load data and does not require any monitoring data of solar generation. Methodologically, the net load data trace is disaggregated into estimated BTM solar and load traces, based on which separate predictors are then trained for solar generation and load forecasting exploiting their distinct natures, respectively. For solar generation forecasting, time data, weather forecast, and potentially solar irradiance forecast are used as input features of the predictor. For load forecasting, time data, weather forecast, and judiciously chosen load data in the recent past are used as input features of the predictor. The two predictors' outputs are combined to produce the final net load forecast. The developed method is comprehensively evaluated based on two real-world smart meter data sets from Ithaca, NY and Clifton park, NY, respectively. High accuracy of day-ahead net load forecast is demonstrated.
基于智能电表数据背后分解的净负荷预测
随着屋顶太阳能在配电系统中的普及程度不断提高,对负荷服务实体和系统运营商来说,预测系统中的净负荷至关重要。本文提出了一种训练高性能预测器的新算法,用于日前净负荷预测。重要的是,整个方法只利用计量净负荷数据,不需要太阳能发电的任何监测数据。在方法上,净负荷数据轨迹被分解为估计的BTM太阳能和负荷轨迹,在此基础上,分别训练独立的预测者,分别利用其不同的性质进行太阳能发电和负荷预测。对于太阳能发电预测,时间数据、天气预报和潜在的太阳辐照度预测被用作预测器的输入特征。对于负荷预测,时间数据、天气预报和明智地选择最近的负荷数据被用作预测器的输入特征。将这两个预测器的输出结合起来产生最终的净负荷预测。基于两个真实世界的智能电表数据集,分别来自纽约州伊萨卡和纽约州克利夫顿公园,对开发的方法进行了全面评估。结果表明,该方法具有较高的预报精度。
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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