A Comparison Study on Intelligent Control Strategies of Power System Stabilizers

M. Kashif, Yunjian Peng, Weijie Sun
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引用次数: 1

Abstract

Power System Stabilizers(PSSs) are well-designed devices to measure and enforce improvements in synchronous generators’ system-stability, which offer overwhelmingly superior cost performance compared to other optimal reconstruction or enhancement of power systems. The techniques of PSSs have been focused by power industry and academic circles in many years. The paper presents a performance comparison of several advanced techniques based on Adaptive Fuzzy Control, Artificial Neural Network (ANN), Genetic Algorithm(GA) and Hybrid Artificial Intelligent(HAI), Fuzzy Logic and Particle Swarm Optimization(FLPSO) techniques. With their merits on dealing with PSSs’ implemental structures, models with unknown or variable parameters, we study the main indices to compare the performance of the referred intelligent techniques including simplicity of prototype, robustness and response speed, complexity of algorithm, flexibility in implementation and applicability to hybrid AVRs so on. The comparison results show that intelligent techniques improve PSSs comprehensive performance of being more effective and vigorous in damping out low frequency oscillations by overcoming inherent limitations in conventional control methodologies. Intelligent techniques could be especially considered in application of smart grid with large-scale grid-connected renewable energy power and random high power loads.
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电力系统稳定器智能控制策略的比较研究
电力系统稳定器(pss)是一种精心设计的设备,用于测量和加强同步发电机系统稳定性的改善,与其他优化的电力系统重建或增强相比,它提供了压倒性的优越性价比。pss技术多年来一直受到电力行业和学术界的关注。本文介绍了基于自适应模糊控制、人工神经网络(ANN)、遗传算法(GA)和混合人工智能(HAI)、模糊逻辑和粒子群优化(FLPSO)技术的几种先进技术的性能比较。针对上述智能技术在处理pss的实现结构、未知或变参数模型方面的优点,从原型的简单性、鲁棒性和响应速度、算法的复杂性、实现的灵活性和对混合avr的适用性等方面对其性能进行了比较。对比结果表明,智能技术克服了传统控制方法固有的局限性,提高了pss的综合性能,更有效、更有力地抑制了低频振荡。在大规模可再生能源并网发电和随机高负荷的智能电网应用中,尤其需要考虑智能技术。
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