Demand response driven load pattern elasticity analysis for smart households

N. Paterakis, J. Catalão, A. Taşcıkaraoǧlu, A. Bakirtzis, O. Erdinç
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引用次数: 6

Abstract

The recent interest in smart grid vision enables several smart applications in different parts of the power grid structure, where specific importance should be given to the demand side. As a result, changes in load patterns due to demand response (DR) activities at end-user premises, such as smart households, constitute a vital point to take into account both in system planning and operation phases. In this study, the assessment of the impacts of pricing based DR strategies on smart household load pattern variations is provided. The household load data sets are acquired from a provided model of a smart household, including appliance scheduling. Then, an artificial neural network (ANN) approach based on Wavelet Transform (WT) is employed for the forecasting of responsive residential load behaviors to different pricing schemes. From the literature perspective this study contributes by considering DR impacts on load pattern forecasting, being a very useful tool for market participants such as aggregators in future pool-based market structures, or for load serving entities to discuss potential change requirements in existing DR strategies, or even to effectively plan new ones.
需求响应驱动的智能家庭负荷模式弹性分析
最近对智能电网视觉的兴趣使得在电网结构的不同部分实现了几种智能应用,其中应特别重视需求侧。因此,由于终端用户场所(如智能家庭)的需求响应(DR)活动而导致的负载模式变化,在系统规划和运行阶段都是一个重要的考虑因素。在本研究中,评估了基于定价的DR策略对智能家庭负荷模式变化的影响。所述家庭负荷数据集从所提供的智能家庭模型获得,包括家电调度。然后,采用基于小波变换的人工神经网络方法预测住宅负荷对不同电价方案的响应行为。从文献的角度来看,本研究的贡献在于考虑了DR对负荷模式预测的影响,对于未来基于池的市场结构中的市场参与者(如聚合者)或负载服务实体讨论现有DR策略中潜在的变更需求,甚至有效地规划新策略,是一个非常有用的工具。
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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