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Optimal Power Flow and Network Loadability Using Feedback-Based Self-Adaptive Differential Evolution and Multiobjective Algorithms

机译:基于反馈的自适应差分进化和多目标算法的最优潮流和网络负荷

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摘要

In modern electrical grids, planning and operation processes require efficient optimization tools. Optimal placement and sizing of Flexible AC transmission system (FACTS) devices, renewable energy resources, and energy storage units, to name a few, are optimization tasks in the planning process. Minimizing the cost of generated power from committed generators in the operation process is an important part of power system operations. For power system optimization problems, several optimization algorithms have been proposed and used in the past two decades. However, the need for efficient optimization algorithms customized to power system problems still exists. The research reported in this thesis develops novel evolutionary optimization approaches for two applications: optimal power flow (OPF) and optimal placement and sizing of FACTS to enhance electrical network loadability.;For optimal power flow, two new feedback-based self-adaptive differential evolution algorithms are proposed. Prior to applying the proposed methods to the power system test cases, they are tested on standard mathematical benchmark problems. The self-adaptive differential evolution algorithms showed significant improvement in the benchmark problems compared to other algorithms. More importantly, in this work, the feedback-based self-adaptive differential evolution algorithms demonstrated good improvement in results and in convergence rate in several power system test cases.;To enhance the loadability of an electrical network, a new multiobjective-based frame work is proposed for optimal placement and sizing of FACTS devices. The proposed method has been applied to commonly used FACTS devices, thyristor-controlled series controllers (TCSCs), and demonstrated excellent results in the electrical loading margins as well as the investment costs compared to other available methods.
机译:在现代电网中,规划和运营过程需要高效的优化工具。计划中的优化任务是灵活交流输电系统(FACTS)设备,可再生能源和储能装置的优化放置和尺寸调整。在运行过程中,最大限度地减少来自定额发电机的发电成本是电力系统运行的重要组成部分。对于电力系统优化问题,在过去的二十年中已经提出并使用了几种优化算法。但是,仍然需要针对电力系统问题定制的高效优化算法。本论文报道的研究为两种应用开发了新颖的进化优化方法:最优功率流(OPF)和FACTS的最优放置和尺寸,以增强电网可负载性;为获得最优功率流,两种基于反馈的新型自适应差分进化提出了算法。在将建议的方法应用于电力系统测试用例之前,先对它们进行标准数学基准测试。与其他算法相比,自适应差分进化算法在基准测试问题上显示出显着的改进。更重要的是,在这项工作中,基于反馈的自适应微分进化算法在几个电力系统测试案例中显示出了良好的结果和收敛速度。为了提高电网的负载能力,新的基于多目标的框架建议用于FACTS设备的最佳放置和尺寸调整。所提出的方法已应用于常用的FACTS设备,晶闸管控制的串联控制器(TCSC),并且与其他可用方法相比,在电气负载裕度和投资成本方面均表现出优异的结果。

著录项

  • 作者

    Alharbi, Fares Theyab A.;

  • 作者单位

    Michigan State University.;

  • 授予单位 Michigan State University.;
  • 学科 Electrical engineering.;Engineering.
  • 学位 M.S.
  • 年度 2018
  • 页码 60 p.
  • 总页数 60
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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