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A storage expansion planning framework using reinforcement learning and simulation-based optimization

机译:一种使用强化学习和基于仿真优化的存储扩展规划框架

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摘要

In the wake of the highly electrified future ahead of us, the role of energy storage is crucial wherever distributed generation is abundant, such as in microgrid settings. Given the variety of storage options that are becoming more and more economical, determining which type of storage technology to invest in, along with the appropriate timing and capacity becomes a critical research question. It is inevitable that these problems will continue to become increasingly relevant in the future and require strategic planning and holistic and modern frameworks in order to be solved. Reinforcement Learning algorithms have already proven to be successful in problems where sequential decision-making is inherent. In the operations planning area, these algorithms are already used but mostly in short-term problems with well-defined constraints. On the contrary, we expand and tailor these techniques to long-term planning by utilizing model-free algorithms combined with simulation-based models. A model and expansion plan have been developed to optimally determine microgrid designs as they evolve to dynamically react to changing conditions and to exploit energy storage capabilities. We show that it is possible to derive better engineering solutions that would point to the types of energy storage units which could be at the core of future microgrid applications. Another key finding is that the optimal storage capacity threshold for a system depends heavily on the price movements of the available storage units. By utilizing the proposed approaches, it is possible to model inherent problem uncertainties and optimize the whole streamline of sequential investment decision-making.
机译:在我们前方的高度电气化的未来之后,能量存储的作用是至关重要的,无论分布的发电都丰富,如微电网设置。鉴于越来越经济的存储选项,确定投资哪种类型的存储技术以及适当的时机和能力成为一个关键的研究问题。这是不可避免的,这些问题将继续在未来日益相关,并要求战略规划和整体和现代框架进行解决。钢筋学习算法已经证明是在续集决策所固有的问题中取得成功。在运营计划区域中,已经使用了这些算法,但大多数在具有明确定义的约束的短期问题中。相反,我们通过利用无模型算法与基于仿真的模型相结合来扩展和定制这些技术以长期规划。已经开发了一种模型和扩展计划,以最佳地确定微电网设计,因为它们演变为动态地对变化条件和利用能量存储能力进行动态反应。我们表明,可以推导出更好的工程解决方案,该解决方案将指向可以在未来的微电网应用的核心处的能量存储单元类型。另一个关键发现是系统的最佳存储容量阈值大量取决于可用存储单元的价格移动。通过利用所提出的方法,可以模拟固有的问题不确定性,并优化顺序投资决策的整体流线。

著录项

  • 来源
    《Applied Energy》 |2021年第15期|116778.1-116778.15|共15页
  • 作者单位

    Rutgers State Univ Dept Ind & Syst Engn 96 Frelinghuysen Rd Piscataway NJ 08854 USA;

    Rutgers State Univ Dept Ind & Syst Engn 96 Frelinghuysen Rd Piscataway NJ 08854 USA;

    Nanjing Univ Sci & Technol Sch Econ & Management Nanjing 210094 Peoples R China;

    Rutgers Business Sch Dept Supply Chain Management 1 Washington Pk Newark NJ 07102 USA;

    Rutgers State Univ Dept Ind & Syst Engn 96 Frelinghuysen Rd Piscataway NJ 08854 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Investment planning; Decision-making; Reinforcement learning; Microgrids;

    机译:投资规划;决策;加固学习;微普林;

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