The electricity market has a vital role to play in the decarbonisation of the energy system. However, the electricity market is made up of many different variables and data inputs. These variables and data inputs behave in sometimes unpredictable ways which can not be predicted a-priori. It has therefore been suggested that agent-based simulations are used to better understand the dynamics of the electricity market. Agent-based models provide the opportunity to integrate machine learning and artificial intelligence to add intelligence, make better forecasts and control the power market in better and more efficient ways. In this systematic literature review, we review 55 papers published between 2016 and 2021 which focus on machine learning applied to agent-based electricity market models. We find that research clusters around popular topics, such as bidding strategies. However, there exists a long-tail of different research applications that could benefit from the high intensity research from the more investigated applications.
翻译:电力市场在能源系统去碳化方面发挥着至关重要的作用。然而,电力市场是由许多不同的变数和数据投入组成的。这些变数和数据投入有时会以无法预测的方式出现,无法预测其优先性。因此,有人建议利用代理模拟来更好地了解电力市场的动态。基于代理的模型为集成机器学习和人工智能以更好、更高效的方式增加情报、作出更好的预测和控制电力市场提供了机会。在这个系统化文献审查中,我们审查了2016年至2021年出版的55篇论文,其重点是机器学习应用于基于代理的电力市场模型。我们发现围绕热门主题的研究集群,例如投标战略。然而,从更深入的调查应用中可以获益于高强度研究的不同研究应用有着很长的距离。