Finding optimal bidding strategies for generation units in electricity markets would result in higher profit. However, it is a challenging problem due to the system uncertainty which is due to the unknown other generation units' strategies. Distributed optimization, where each entity or agent decides on its bid individually, has become state of the art. However, it cannot overcome the challenges of system uncertainties. Deep reinforcement learning is a promising approach to learn the optimal strategy in uncertain environments. Nevertheless, it is not able to integrate the information on the spatial system topology in the learning process. This paper proposes a distributed learning algorithm based on deep reinforcement learning (DRL) combined with a graph convolutional neural network (GCN). In fact, the proposed framework helps the agents to update their decisions by getting feedback from the environment so that it can overcome the challenges of the uncertainties. In this proposed algorithm, the state and connection between nodes are the inputs of the GCN, which can make agents aware of the structure of the system. This information on the system topology helps the agents to improve their bidding strategies and increase the profit. We evaluate the proposed algorithm on the IEEE 30-bus system under different scenarios. Also, to investigate the generalization ability of the proposed approach, we test the trained model on IEEE 39-bus system. The results show that the proposed algorithm has more generalization abilities compare to the DRL and can result in higher profit when changing the topology of the system.
翻译:在电力市场中为发电单位寻找最佳投标战略将带来更高的利润。然而,这是一个具有挑战性的问题,因为系统不确定性是由其他发电单位的未知战略造成的。分配优化,即每个实体或代理商单独决定其投标,已成为最新条件。然而,它无法克服系统不确定性的挑战。深层强化学习是在不确定环境中学习最佳战略的有希望的方法。然而,它无法将空间系统地形学的信息纳入学习过程。本文件提出基于深层强化学习(DRL)的分布式学习算法,加上一个图形革命性神经网络(GCN)。事实上,拟议的框架帮助代理商更新其决定,从环境中获得反馈,以便克服不确定性的挑战。在这个拟议的算法中,节点之间的状态和联系是GCN的投入,它能使代理商了解系统的结构。系统地形学的这一信息有助于代理商改进他们的投标战略和增加利润。我们根据不同的设想方案对IEEE30-BS系统的拟议升级算法进行评估,同时,我们通过对ADL系统进行总体测试的能力,我们能够对A级系统进行总体测试。