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Real-Time LFO Damping Enhancement in Electric Networks Employing PSO Optimized ANFIS

机译:采用PSO优化ANFIS的电网实时LFO阻尼增强

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In recent years, machine learning (ML) tools have gained tremendous momentum and received wide-spread attention in different segments of modern-day life. As part of digital transformation, the power system industry is one of the pioneers in adopting such attractive and efficient tools for various applications. Apparently, a nonthreatening, but slow-burning issue of the electric power systems is the low-frequency oscillations (LFO), which, if not dealt with appropriately and on time, could result in complete network failure. This paper addresses the role of a prominent ML family member, particle swarm optimization (PSO) tuned adaptive neuro-fuzzy inference system (ANFIS) for real-time enhancement of LFO damping in electric power system networks. It adopts and models two power system networks where in the first network, the synchronous machine is equipped with only a power system stabilizer (PSS), and in the other, the PSS of the synchronous machine is coordinated with the unified power flow controller (UPFC), a second-generation flexible alternating current transmission system (FACTS) device. Then, it develops the proposed ML approach to enhance LFO damping for both adopted networks based on the customary practices of statistical judgment. The performance measuring metrics of power system stability, including the minimum damping ratio (MDR), eigenvalue, and time-domain simulation, were used to analyze the developed approach. Moreover, the paper presents a comparative analysis and discussion with the referenced works’ achieved results to conclude the proposed PSO-ANFIS technique’s ability to enhance power system stability in real-time by damping out the unwanted LFO.
机译:近年来,机器学习(ML)工具获得了巨大的势头,并在现代生活的不同部分中获得了广泛的关注。作为数字转型的一部分,电力系统行业是采用各种应用采用如此有吸引力和有效的工具的先驱之一。显然,电力系统的非螺旋化但慢速燃烧问题是低频振荡(LFO),如果没有适当和按时处理,可能会导致完全的网络故障。本文涉及突出的ML家族成员,粒子群优化(PSO)调谐自适应神经模糊推理系统(ANFIS)的作用,用于实时增强电力系统网络中的LFO阻尼的实时增强。它采用和模型两个电源系统网络,在第一网络中,同步机仅配备电源系统稳定器(PSS),另一方面,同步机的PSS与统一电源流量控制器(UPFC)协调),第二代柔性交流传输系统(事实)设备。然后,它根据统计判断的习惯实践,制定所提出的ML方法来增强两种采用网络的LFO阻尼。电力系统稳定性的性能测量度量,包括最小阻尼比(MDR),特征值和时域模拟,用于分析开发的方法。此外,本文提出了与参考作品的比较分析和讨论,以达到所提出的PSO-ANFIS技术通过阻尼不需要的LFO实时提高电力系统稳定性的能力。

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