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Application of Gradient Descent Continuous Actor-Critic Algorithm for Bilateral Spot Electricity Market Modeling Considering Renewable Power Penetration

机译:考虑可再生功率渗透的梯度下降连续主因-临界算法在双边现货电力市场建模中的应用

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The bilateral spot electricity market is very complicated because all generation units and demands must strategically bid in this market. Considering renewable resource penetration, the high variability and the non-dispatchable nature of these intermittent resources make it more difficult to model and simulate the dynamic bidding process and the equilibrium in the bilateral spot electricity market, which makes developing fast and reliable market modeling approaches a matter of urgency nowadays. In this paper, a Gradient Descent Continuous Actor-Critic algorithm is proposed for hour-ahead bilateral electricity market modeling in the presence of renewable resources because this algorithm can solve electricity market modeling problems with continuous state and action spaces without causing the “curse of dimensionality” and has low time complexity. In our simulation, the proposed approach is implemented on an IEEE 30-bus test system. The adequate performance of our proposed approach—such as reaching Nash Equilibrium results after enough iterations of training are tested and verified, and some conclusions about the relationship between increasing the renewable power output and participants’ bidding strategy, locational marginal prices, and social welfare—is also evaluated. Moreover, the comparison of our proposed approach with the fuzzy Q-learning-based electricity market approach implemented in this paper confirms the superiority of our proposed approach in terms of participants’ profits, social welfare, average locational marginal prices, etc.
机译:双边现货电力市场非常复杂,因为所有发电机组和需求都必须从战略上竞标这个市场。考虑到可再生资源的渗透,这些间歇性资源的高可变性和不可分配性使其在双边竞标电力市场中动态竞价过程和均衡过程的建模和仿真变得更加困难,这使得开发快速可靠的市场建模方法成为可能。现今的紧急情况。本文提出了一种梯度下降连续Actor-Critic算法,用于在存在可再生资源的情况下进行小时前双边电力市场建模,因为该算法可以解决具有连续状态和作用空间的电力市场建模问题而不会引起“维数诅咒” ”,时间复杂度低。在我们的仿真中,所提出的方法是在IEEE 30总线测试系统上实现的。我们提出的方法的适当性能(例如,经过足够的迭代培训后达到Nash均衡结果已得到测试和验证,以及有关增加可再生能源输出量与参与者的竞标策略,区位边际价格和社会福利之间的关系的一些结论)也被评估。此外,将我们提出的方法与本文中实施的基于模糊Q学习的电力市场方法进行比较,证实了我们提出的方法在参与者的利润,社会福利,平均地区边际电价等方面的优势。

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