Data-driven Nonlinear Prediction Model for Price Signals in Demand Response Programs

Giulia De Zotti, Hanne Binder, A. Hansen, H. Madsen, R. Relan
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引用次数: 1

Abstract

In power systems, electrical consumers can become a significant source of flexibility, by adjusting their consumption according to grid’s needs while respecting their operational constraints. Consumers’ flexibility potential can be exploited through the submission of dynamic electricity prices. Such prices are able to describe the variable condition of the power system and are broadcast to the consumers in order to obtain a certain change in consumption. The formulation of effective dynamic prices requires the development of proper models that describe the price responsiveness of electrical consumers. In this paper, we propose a nonlinear prediction model for the dynamic electricity prices in demand response (DR) programs. Specifically, the nonlinear auto-regressive with exogenous input (NARX) model structure is used to learn from available data to predict appropriate electricity price signals. For the validation of the model (in an aggregate manner) in predicting consumers’ price-response, the data from 10 Danish households is utilised, which has provided by the Danish Transmission Service Operator (TSO) Energinet.
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需求响应方案中价格信号的数据驱动非线性预测模型
在电力系统中,电力消费者可以根据电网的需要调整自己的消费,同时尊重电网的运行限制,从而成为灵活性的重要来源。通过提交动态电价,可以利用消费者的灵活性潜力。这样的价格能够描述电力系统的可变条件,并广播给消费者,以获得一定的消费变化。制定有效的动态价格需要开发适当的模型来描述电力消费者的价格响应性。本文提出了需求响应(DR)计划中动态电价的非线性预测模型。具体而言,采用非线性自回归外生输入(NARX)模型结构,从现有数据中学习,预测合适的电价信号。为了验证预测消费者价格反应的模型(以综合方式),使用了丹麦传输服务运营商(TSO) Energinet提供的来自10个丹麦家庭的数据。
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