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A smart load management system based on the grasshopper optimization algorithm using the under-frequency load shedding approach

机译:基于蚱蜢优化算法的智能负载管理系统利用频率载荷脱落方法

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摘要

Load management represents one of the main constraints when considering smart grids. In addition, load management is a significant challenge for power system security operations. The smart techniques in load management endow the system with the ability to restore its normal or stable operation after being subjected to any disturbances. When the load exceeds the generation, the system stability is affected, which leads to cascade outages and shutdown of the major parts of the power system, causing the frequency decay effect. Fast load shedding (LS) is the best way to avoid cascading outages and power system blackouts. This paper proposes an innovative, accurate, reliable and fast under-frequency load shedding (UFLS) technique based on the grasshopper optimization algorithm (GOA). LS is considered in this research as a constrained optimization problem. The objective function is to minimize the amount of load shed while maximizing the lowest swing frequency at all stages. To validate the proposed GOA-based UFLS, a comparison with adaptive, particle swarm optimization (PSO) and genetic algorithm (GA) UFLS is carried out fot different disturbances. Two different case study systems are considered to test the accuracy and reliability of the proposed algorithm: the IEEE 9-bus and 39-bus systems. The proposed GOA and PSO are coded using the MATLAB environment. Different operating cases involving outage of multiple generators and increasing load are implemented to validate the proposed GOA. The DigSilent power factory software is used as a platform for simulating the power system under study when subjected to different disturbance levels. The results verify the accuracy and reliability of GOA in minimizing the amount of load shed and maximizing the lowest swing frequency while satisfying the constraints. Moreover, GOA achieves a faster solution than PSO and GA.
机译:负载管理代表考虑智能网格时的主要约束之一。此外,负载管理是电力系统安全操作的重大挑战。负载管理中的智能技术赋予系统在经受任何干扰后恢复其正常或稳定运行的能力。当负载超过生成时,系统稳定性受到影响,这导致电源系统的主要部分的级联停电和关闭,从而导致频率衰减效果。快速负载脱落(LS)是避免级联中断和电力系统停电的最佳方式。本文提出了一种基于蚱蜢优化算法(GOA)的创新,准确,可靠,快速的频率载荷脱落(UFL)技术。在本研究中考虑LS作为受限制的优化问题。目标函数是最小化负载量,同时最大化所有阶段的最低摆频。为了验证所提出的基于GOA的UFL,对适应性,粒子群优化(PSO)和遗传算法(GA)UFL的比较进行了不同的干扰。两种不同的案例研究系统被认为是测试所提出的算法的准确性和可靠性:IEEE 9-BUS和39总线系统。建议的GOA和PSO使用MATLAB环境进行编码。实施涉及多个发电机的不同的操作案例和增加负载以验证提出的果阿。 DigSilent Power Factory软件用作模拟在遭受不同干扰水平的研究中模拟电力系统的平台。结果验证了GOA的准确性和可靠性在最小化负载量和最大化最低摆动频率的同时满足约束。此外,GOA比PSO和GA实现更快的解决方案。

著录项

  • 来源
    《Energy》 |2020年第1期|116423.1-116423.16|共16页
  • 作者单位

    Electrical Power & Machines Department Faculty of Engineering Zagazig University P.O. 44519 Zagazig Egypt Electrical Engineering Department College of Engineering Shaqra University Dawadmi P.O. 119?! Ar Riyadh Saudi Arabia;

    Electrical Engineering Department Faculty of Engineering Mansoura University Egypt Electrical Engineering Department College of Engineering Shaqra University Dawadmi P.O. 119?! Ar Riyadh Saudi Arabia;

    Computer Engineering Department College of Engineering Shaqra University Dawadmi P.O. 11911 Ar Riyadh Saudi Arabia;

    Mechanical Engineering Department College of Engineering Shaqra University Dawadmi P.O. 11911 Ar Riyadh Saudi Arabia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Stability; Smart power system grid; Power system disturbance; Lowest swing frequency; Grasshopper optimization algorithm (GOA); Particle swarm optimization (PSO);

    机译:稳定;智能电力系统网格;电力系统扰动;最低摆动频率;蚱蜢优化算法(GOA);粒子群优化(PSO);

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