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A computational intelligence framework for smart grid.

机译:智能电网的计算智能框架。

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摘要

With the recent development of electronics technique and distributed generations, such as wind power, solar power and electric vehicles (EVs), modern power system is advancing towards a critical and promising intelligent generation known as the smart grid. During the upgrade to this new generation, stability and security concerns have also been raised with complex communication and control challenges. Even worse, because of the new constraints placed by the environmental and economical concerns, the system planning and operation is toward maximum utilization of the existing infrastructure with tight operating and stability margins. The decreased system stability margin together with the increased penetration of renewable energy sources will bring new challenges to smart grid control, operation, stability and reliability.;Smart grid with conventional synchronous generators, renewable energy generation systems, flexible AC transmission system (FACTS) devices, and EVs are large-scale, nonlinear, nonstationary, stochastic and complex systems distributed over large geographic areas. The traditional control tools and techniques have limitations to control such complex systems to achieve an optimal performance. Therefore developing intelligent adaptive control and optimization systems for smart grid has become one of the critical research topics worldwide. Among many efforts toward this objective, machine learning and computational intelligence research provide the key technical innovations. Various aspects of intelligent and adaptive systems have been developed and improved in terms of learning and optimization capabilities based on reinforcement learning (RL), adaptive dynamic programming (ADP), and swarm intelligence.;To this end, this work focuses on the development of new architectures, frameworks and algorithms for smart grid optimal control and operation, such as energy storage based low-frequency damping control, islanded micro-grid frequency stability, doubly-fed induction generator (DFIG) low-voltage ride-though (LVRT) improvement, and optimal reserve scheduling in economic dispatch (ED) with wind power penetration. The proposed control and optimization methods are validated by simulation studies in Matlab/ Simulink. Results show that the significantly improved grid stability, reliability and dynamic performance.
机译:随着电子技术的最新发展和风力发电,太阳能发电和电动汽车(EV)等分布式发电,现代电力系统正朝着被称为智能电网的关键和有前途的智能发电发展。在升级到新一代产品的过程中,还提出了稳定性和安全性问题,以及复杂的通信和控制挑战。更糟糕的是,由于环境和经济方面的考虑带来了新的限制,因此系统规划和运行将在最大限度地利用现有基础架构的同时,保持严格的运营和稳定性裕度。降低的系统稳定性裕度以及可再生能源的普及将给智能电网的控制,运行,稳定性和可靠性带来新的挑战。具有常规同步发电机,可再生能源发电系统,柔性交流输电系统(FACTS)设备的智能电网电动汽车是分布在较大地理区域的大规模,非线性,非平稳,随机和复杂的系统。传统的控制工具和技术在控制此类复杂系统以获得最佳性能方面存在局限性。因此,开发用于智能电网的智能自适应控制和优化系统已成为全世界的关键研究主题之一。在实现这一目标的许多努力中,机器学习和计算智能研究提供了关键的技术创新。在基于强化学习(RL),自适应动态规划(ADP)和群体智能的学习和优化能力方面,已经开发和改进了智能和自适应系统的各个方面。为此,本工作着重于开发用于智能电网最佳控制和运行的新架构,框架和算法,例如基于能量存储的低频阻尼控制,孤岛微电网频率稳定性,双馈感应发电机(DFIG)低压穿越(LVRT)改进,以及具有风电渗透的经济调度(ED)中的最佳储备调度。通过Matlab / Simulink中的仿真研究验证了所提出的控制和优化方法。结果表明,大大提高了电网的稳定性,可靠性和动态性能。

著录项

  • 作者

    Tang, Yufei.;

  • 作者单位

    University of Rhode Island.;

  • 授予单位 University of Rhode Island.;
  • 学科 Electrical engineering.;Energy.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 193 p.
  • 总页数 193
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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