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Probabilistic load forecasting considering temporal correlation: Online models for the prediction of households' electrical load

机译:考虑时间相关性的概率负荷预测:家庭电荷预测的在线模型

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摘要

Home Energy Management Systems (HEMSs) are expected to become an inevitable part of the future smart grid technologies. To work effectively, HEMSs require reliable and accurate load forecasts. In this paper, two new modelling methods are presented. They are both suited for producing multivariate probabilistic forecasts, which consider the temporal correlation between forecast horizons. The first method employs point forecasts generated with Recursive Least Squares (RLS) models and subsequently analyses the forecasts' residuals to estimate the marginal distributions and temporal correlation. The second method is based on quantile regression to estimate marginal distributions, and a Gaussian copula for linking them together. Furthermore, the application of two modelling approaches for the temporal correlation estimation are investigated for each of the two modelling methods. As a case study, a numerical experiment is designed to emulate an online HEMS operation using data from an inhabited home located in Denmark. Simulation results show a robust performance for the proposed models, with the quantile-copula ensemble outperforming the RLS-based models in predicting the marginal distributions and capturing the temporal correlation.
机译:家庭能源管理系统(HEMSS)预计将成为未来智能电网技术的不可避免的一部分。为了有效地工作,HEMS需要可靠和准确的负载预测。在本文中,提出了两种新的建模方法。它们都适用于产生多元概率预测,这考虑了预测视野之间的时间相关性。第一种方法采用与递归最小二乘(RLS)模型产生的点预测,随后分析预测的残差来估计边缘分布和时间相关性。第二种方法基于量化回归来估计边缘分布,以及用于将它们连接在一起的高斯谱系。此外,针对两个建模方法中的每一个研究了两个用于时间相关估计的建模方法。作为一个案例研究,数值实验旨在使用位于丹麦的居民房屋的数据模拟在线下摆运行。仿真结果显示了所提出的型号的稳健性能,分位式 - Copula集合在预测边缘分布和捕获时间相关性时始于基于RLS的模型。

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