Evaluating Forecasting Techniques for Integrating Household Energy Prosumers into Smart Grids

Teodor Petrican, Andreea Valeria Vesa, Marcel Antal, Claudia Pop, T. Cioara, I. Anghel, I. Salomie
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引用次数: 11

Abstract

This paper tackles the problem of integrating household energy prosumers in Smart Energy Grids by analyzing a set of state-of-the-art energy forecasting techniques that allow individual or aggregated prosumers to evaluate their future energy demand and inform the Distributed System Operator (DSO) about potential grid imbalances. Thus, the DSO can perform a proactive strategy to manage the grid and avoid problems before they appear. The key element of this approach is the prediction technique, that must be accurate enough such that the resulting grid imbalances can be compensated in real-time. The paper evaluates a set of state-of-the-art statistical and Machine Learning (ML) prediction techniques, such as SARIMA, feed-forward and recurrent neural networks, support vector regression or ensemble prediction models, on real household historical energy demand logs by performing a feature selection process for each ML algorithm as to identify the best elements that influence the energy demand of a house. A set of experiments are performed on the REFIT Electrical Load Measurements data set evaluating each model’s performance with respect to the selected features. Among the evaluated algorithms, the Ensemble Prediction Model gives best prediction accuracy, showing a Mean Absolute Percentage Error (MAPE) of 14.4% followed by the SVM model with a MAPE of 15.4%.
将家庭能源生产用户纳入智能电网的评估预测技术
本文通过分析一套最先进的能源预测技术,解决了将家庭能源产消者整合到智能电网中的问题,这些技术允许个人或集体产消者评估他们未来的能源需求,并告知分布式系统运营商(DSO)潜在的电网失衡。因此,DSO可以执行主动策略来管理网格,并在问题出现之前避免问题。这种方法的关键要素是预测技术,它必须足够准确,从而导致网格不平衡可以实时补偿。本文评估了一组最先进的统计和机器学习(ML)预测技术,如SARIMA、前馈和循环神经网络、支持向量回归或集成预测模型,通过对每个ML算法执行特征选择过程,以确定影响房屋能源需求的最佳元素,对真实的家庭历史能源需求日志进行了评估。在REFIT电气负载测量数据集上进行了一组实验,评估了每个模型相对于所选特征的性能。在所评估的算法中,集成预测模型的预测精度最高,平均绝对百分比误差(MAPE)为14.4%,其次是支持向量机模型,MAPE为15.4%。
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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