提高用电需求响应程序调整预测的准确性

Charles Ibrahim, I. Mougharbel, H. Kanaan, Nivine Abou Daher, S. Georges, M. Saad
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引用次数: 2

摘要

对用户用电量的预测和选择合适的需求响应方案(DRPs)是配电网稳定性面临的主要挑战。模式预测的准确性及其与现实的匹配在DRPs建模中起着重要的作用,以提高消费者的参与度。现有方法从多个方面研究了DRPs环境下的预测和基线。这项工作的独创性在于展示了一种基于预测的方法,研究其准确性并不断向训练集中添加新模式。变化与计划阶段保持最小,并适应客户的变化。它是在个人和聚合的配置文件中实现的,因此确保了客户的分类和参与。通过Matlab仿真验证了该方法的有效性。目标包括客户资格预审和预测准确性对平衡发电/需求的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improve Prediction Accuracy of Electrical Consumption Adjusted with Demand Response Programs
Prediction on electrical consumption of clients and their selection for appropriate demand response programs (DRPs), are a major challenge for the stability of the distribution network. Prediction accuracy of patterns and their matching with reality plays an important role in DRPs modeling for better consumers’ participation. Existing Approaches studied several aspects of prediction and baselines in DRPs environment. The originality of this work consists in demonstrating a prediction based approach, studying its accuracy and continuously adding new patterns to the training set. The variation versus planning phase is kept minimal and adapted to customers’ variations. It is achieved at the individual and aggregated profiles, thus customers’ classification and engagement are ensured. The approach is validated through a simulation on Matlab. Objectives include the customer prequalification and the effects of prediction accuracy on the balance generation/demand.
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