基于图神经网络的电动汽车大规模协调的可扩展强化学习。

Stavros Orfanoudakis, Valentin Robu, E Mauricio Salazar, Peter Palensky, Pedro P Vergara
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引用次数: 0

摘要

随着电动汽车(ev)的加速普及,解决大规模、全市范围内的优化挑战对于确保充电基础设施的有效利用和保持电网稳定至关重要。本研究介绍了EV- gnn,这是一种新颖的基于图形的解决方案,可解决可扩展性挑战,并从充电点运营商(CPO)的角度捕捉电动汽车行为的不确定性。通过将端到端图神经网络(GNN)架构与强化学习相结合,并采用分支修剪技术,证明EV-GNN增强了经典强化学习(RL)算法的可扩展性和样本效率。我们进一步证明,所提出的架构的灵活性使其能够与最先进的深度强化学习算法相结合,以解决广泛的问题,包括那些具有连续,多离散和离散动作空间的问题。大量的实验评估表明,EV- gnn在各种电动汽车充电场景的可扩展性和泛化方面明显优于最先进的RL算法,在小型和大规模问题上都有显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable reinforcement learning for large-scale coordination of electric vehicles using graph neural networks.

As the adoption of electric vehicles (EVs) accelerates, addressing the challenges of large-scale, city-wide optimization becomes critical in ensuring efficient use of charging infrastructure and maintaining electrical grid stability. This study introduces EV-GNN, a novel graph-based solution that addresses scalability challenges and captures uncertainties in EV behavior from a Charging Point Operator's (CPO) perspective. We prove that EV-GNN enhances classic Reinforcement Learning (RL) algorithms' scalability and sample efficiency by combining an end-to-end Graph Neural Network (GNN) architecture with RL and employing a branch pruning technique. We further demonstrate that the proposed architecture's flexibility allows it to be combined with most state-of-the-art deep RL algorithms to solve a wide range of problems, including those with continuous, multi-discrete, and discrete action spaces. Extensive experimental evaluations show that EV-GNN significantly outperforms state-of-the-art RL algorithms in scalability and generalization across diverse EV charging scenarios, delivering notable improvements in both small- and large-scale problems.

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