4.7 Article

Estimating Demand Flexibility Using Siamese LSTM Neural Networks

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 37, Issue 3, Pages 2360-2370

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2021.3110723

Keywords

Elasticity; Estimation; Load modeling; Data models; Power system dynamics; Mathematical model; Encoding; Elasticity; demand response; machine learning; model-free; data-driven; LSTM recurrent neural network

Funding

  1. Science and Technology Project of State Grid Corporation of China The technology and application of model refinement and aggregation to support multi-level, multi-agent and multi-period dispatch [5100-202099497A-0-0-00]
  2. Tsinghua University Tutor Research Fund

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This paper explores demand flexibility in modern power systems through time-varying elasticity, proposing a model-free methodology and a two-stage estimation process using Siamese LSTM networks to accurately estimate price responses and time-varying elasticities. Validated in a case study, the proposed framework achieves higher overall estimation accuracy and better description of abnormal features compared to state-of-the-art methods.
There is an opportunity in modern power systems to explore the demand flexibility by incentivizing consumers with dynamic prices. In this paper, we quantify demand flexibility using an efficient tool called time-varying elasticity, whose value may change depending on the prices and decision dynamics. This tool is particularly useful for evaluating the demand response potential and system reliability. Recent empirical evidences have highlighted some abnormal features when studying demand flexibility, such as delayed responses and vanishing elasticities after price spikes. Existing methods fail to capture these complicated features because they heavily rely on some predefined (often over-simplified) regression expressions. Instead, this paper proposes a model-free methodology to automatically and accurately derive the optimal estimation pattern. We further develop a two-stage estimation process with Siamese long short-term memory (LSTM) networks. Here, a LSTM network encodes the price response, while the other network estimates the time-varying elasticities. In the case study, the proposed framework and models are validated to achieve higher overall estimation accuracy and better description for various abnormal features when compared with the state-of-the-art methods.

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