基于PAB模型的强化学习过程的genco最优竞价策略

M. Moghaddam, M. R. Langeroudi, B. Alizadeh
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引用次数: 0

摘要

开放接入的电力市场可以使参与者从竞价策略中获得更多的利润。作为市场的参与者,每个供应商都试图使自己的利润最大化。供应商的决策过程及其在市场中的相互绩效是一个复杂的问题,可以通过对单机和多机公司的建模来研究。本文提出了一种基于强化学习算法的模型,能够在单机和多机状态下对供应商提出投标策略进行决策,并基于相互作用模拟市场产出。因此,在不考虑约束和考虑网络约束影响的情况下,对单机和多机状态下的发电机性能进行了比较,因为网络约束会对电力市场造成相当大的限制。市场出清机制基于PAB (Pay As Bid)模型,可用于确定各供应商的最优投标策略,寻找市场平衡,评估市场绩效。该模型已应用于北池市场,并取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal bidding strategy for GENCOs using reinforcement learning process based on the PAB model
The electricity market with open access enables participants to gain more profit out of the bidding strategy. Every supplier tries to maximize its profit as a player in the market. The decision-making process of suppliers and their mutual performance in the market is a complicated problem, can be studied by modeling single-generator and multi-generator companies. The present paper proposes a model based on the reinforcement learning algorithm, is capable of making decisions for suppliers in the single — generator and multi-generator states on proposing a bidding strategy and simulating market outputs based on mutual actions. Hence, a comparison has carried out to examine the performances of generators in the single-generator and multi-generator states without considering constraints and by considering the effect of network constraints, which can impose considerable limitations on electricity markets. The market clearing mechanism is based on Pay As Bid (PAB) model, can be used to define the optimal bidding strategy for each supplier, find market balance and assess market performance. The proposed model has applied to the Nord Pool market and its effect has indicated.
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