基于n步自举的微电网储能管理

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Necati Aksoy;Istemihan Genc
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引用次数: 0

摘要

微电网通过使用可再生能源和有效利用创新电池制造的储能单元,提供了降低能源成本和提高能源质量等优势。此外,这种有助于减少碳足迹的结构,在不久的将来将成为纳米电网和智能电网的关键。作为另一个发展,机器学习为我们带来的基于人工智能的控制基础设施比经典的控制方法更有益。有了这个被称为强化学习(RL)的框架,有望使待控制的系统更加高效。在这一点上,节约使用储能单元与基于RL的能源控制系统有关,储能单元是提高微电网盈利能力和提高能源使用熟练度的最重要工具。虽然这项研究的重点是基于人工智能的控制基础设施,但它提出了一种利用RL代理的方法,该RL代理是用专门为微电网储能单元提出的新环境模型训练的。结果表明,该方法具有一定的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Storage Management for Microgrids Using n-Step Bootstrapping
Microgrids offer superiorities such as reducing energy costs and increasing the quality of energy, with the use of renewable energy sources and the effective use of energy storage unit created with innovative batteries. Furthermore, this structure, which helps to reduce the carbon footprint, will become undeniably critical to use in near future with the nanogrid and smart grid. As another development, an artificial intelligence (AI)-based control infrastructure brought to us by machine learning stands out as more beneficial than classical control methods. With this framework, which is called reinforcement learning (RL), it is promised that the system to be controlled can be more efficient. At this point, the thrifty use of energy storage unit, which is the most important tool that will increase the profitability of microgrids and enhance the proficiency of energy use, is associated with an RL-based energy control system. While this study focuses on an AI-based control infrastructure, it proposes a method utilizing an RL agent trained with a novel environmental model proposed specifically for the energy storage unit of microgrids. The advantages of this method demonstrated with the results are obtained, are shown and examined.
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CiteScore
3.70
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