基于粒子群算法的减载条件下SMIB系统稳定与储能研究

Mansur Mansur, Muhammad Ruswandi Djalal
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引用次数: 0

摘要

发电机失稳是由电源突然中断引起的,主要表现为频率和转子角度的振荡。电力系统稳定器(PSS)和能量存储是提高发电机稳定性的额外控制器。能量存储类型包括超导磁性(sme)和电容性(CES)存储。如果采用正确的设置,PSS、sme和CES协调可以提高系统性能。使用准确有效的PSS、SMES和CES调谐技术是必要的。人工智能技术可以取代传统的试错调谐技术,并协助调整控制器参数。根据本研究,PSS、SMES和CES参数可以采用基于粒子群优化(PSO)的方法进行优化。根据调查结果,PSO在第五次迭代中执行快速准确的计算,适应度函数值为0.007813。粒子群算法的目标是减小积分时间绝对误差(ITAE)。通过增加一个减载实例,本案例研究利用了单机无限总线(SMIB)技术。通过时域仿真得到了SMIB系统的频率响应和转子角。分析结果表明,控制器组合可以提供稳定性,减少超调振荡并实现快速沉降时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Particle Swarm Optimization for Power System Stabilizer and energy storage in the SMIB system under load shedding conditions
Generator instability, which manifests as oscillations in frequency and rotor angle, is brought on by sudden disruptions in the power supply. Power System Stabilizer (PSS) and Energy Storage are additional controllers that enhance generator stability. Energy storage types include superconducting magnetic (SMES) and capacitive (CES) storage. If the correct settings are employed, PSS, SMES, and CES coordination can boost system performance. It is necessary to use accurate and effective PSS, SMES, and CES tuning techniques. Artificial intelligence techniques can replace traditional trial-and-error tuning techniques and assist in adjusting controller parameters. According to this study, the PSS, SMES, and CES parameters can be optimized using a method based on particle swarm optimization (PSO). Based on the investigation's findings, PSO executes quick and accurate calculations in the fifth iteration with a fitness function value of 0.007813. The PSO aims to reduce the integral time absolute error (ITAE). With the addition of a load-shedding instance, the case study utilized the Single Machine Infinite Bus (SMIB) technology. The frequency response and rotor angle of the SMIB system are shown via time domain simulation. The analysis's findings demonstrate that the controller combination can offer stability, reducing overshoot oscillations and enabling quick settling times.
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