LGMLDec 22, 2018

Learning Dynamical Demand Response Model in Real-Time Pricing Program

arXiv:1812.09567v11 citations
Originality Incremental advance
AI Analysis

This addresses the need for more accurate real-time pricing predictions in electricity markets, though it appears incremental as it builds on existing neural network methods.

The paper tackled the problem of modeling price responsiveness in demand response programs by proposing a dynamical model to capture temporal correlations in end-use customer behaviors, showing it significantly outperforms static models in numerical simulations.

Price responsiveness is a major feature of end use customers (EUCs) that participate in demand response (DR) programs, and has been conventionally modeled with static demand functions, which take the electricity price as the input and the aggregate energy consumption as the output. This, however, neglects the inherent temporal correlation of the EUC behaviors, and may result in large errors when predicting the actual responses of EUCs in real-time pricing (RTP) programs. In this paper, we propose a dynamical DR model so as to capture the temporal behavior of the EUCs. The states in the proposed dynamical DR model can be explicitly chosen, in which case the model can be represented by a linear function or a multi-layer feedforward neural network, or implicitly chosen, in which case the model can be represented by a recurrent neural network or a long short-term memory unit network. In both cases, the dynamical DR model can be learned from historical price and energy consumption data. Numerical simulation illustrated how the states are chosen and also showed the proposed dynamical DR model significantly outperforms the static ones.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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