OCLGJun 13, 2025

Quantum Learning and Estimation for Distribution Networks and Energy Communities Coordination

arXiv:2506.11730v1h-index: 10
Originality Incremental advance
AI Analysis

This work addresses coordination problems in power systems for energy communities, but it is incremental as it applies quantum techniques to an existing domain-specific bottleneck.

The paper tackles the challenge of coordinating distribution networks and energy communities under limited information and high computational burden by proposing a quantum learning and estimation approach, which improves mapping accuracy by 69.2% and reduces computation time by up to 99.99% compared to classical methods.

Price signals from distribution networks (DNs) guide energy communities (ECs) to adjust energy usage, enabling effective coordination for reliable power system operation. However, this coordination faces significant challenges due to the limited availability of information (i.e., only the aggregated energy usage of ECs is available to DNs), and the high computational burden of accounting for uncertainties and the associated risks through numerous scenarios. To address these challenges, we propose a quantum learning and estimation approach to enhance coordination between DNs and ECs. Specifically, leveraging advanced quantum properties such as quantum superposition and entanglement, we develop a hybrid quantum temporal convolutional network-long short-term memory (Q-TCN-LSTM) model to establish an end-to-end mapping between ECs' responses and the price incentives from DNs. Moreover, we develop a quantum estimation method based on quantum amplitude estimation (QAE) and two phase-rotation circuits to significantly accelerate the optimization process under numerous uncertainty scenarios. Numerical experiments demonstrate that, compared to classical neural networks, the proposed Q-TCN-LSTM model improves the mapping accuracy by 69.2% while reducing the model size by 99.75% and the computation time by 93.9%. Compared to classical Monte Carlo simulation, QAE achieves comparable accuracy with a dramatic reduction in computational time (up to 99.99%) and requires significantly fewer computational resources.

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