智能电力市场中战略消费者的学习方法

M. Foti, M. Vavalis
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引用次数: 3

摘要

在本文中,我们考虑了一种机器学习方法的设计和实现,以及它与一个广泛使用的能源仿真平台的集成。我们专注于以拍卖为基础的能源市场,它要求参与者在短时间间隔内为他们的能源需求或报价出价。我们基于代理的系统利用天气数据来指导消费设备和可再生能源以有效的方式进行竞标。我们模拟了一个住宅配电电网的实际案例研究,该电网共有600多个家庭,具有不同的能源需求。光伏板和风力涡轮机是区域能源资源。我们的实验证明了学习过程在功耗和成本方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A learning approach for strategic consumers in smart electricity markets
In this paper we consider the design and the implementation of a machine learning approach and its integration with a widely used energy simulation platform. We focus on auction based energy markets which require their participants to bid for their energy demands or offers at small time intervals. Our agent based system utilize weather data to teach both consuming devices and renewable energy sources to bid in an effective manner. We simulate realistic case studies of a residential distribution power grid with a total of more than 600 households with varying energy requirements. Photovoltaic panels as well as wind turbines are the regional energy resources. Our experimentation exhibit the effectiveness of the learning procedure both in term of power consumption and cost.
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