Load frequency control of four-area hydro-thermal inter-connected power system through ANFIS based hybrid neuro-fuzzy approach

Devashish Sharma, Kamlesh Pandey, Varsha Kushwaha, Sumeet Sehrawat
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引用次数: 2

Abstract

This paper presents an ANFIS based intelligent load frequency control approach for a hybrid power system with four thermal-hydro control areas. The merit of the proposed controlling technique is that it is faster than the automatic conventional control techniques and is able to handle the non-linearities simultaneously. Also the maximum overshoot and the settling time of ANFIS based controller are lesser when compared to the conventional controllers, thereby reducing the oscillations locally and of inter-area. This effectiveness of the proposed controller in improving the dynamic response is shown and validated in four area inter-connected system. Thermal control areas (1 and 2) have reheat turbines and areas 3 and 4 comprises hydro-power plants. Comparison in performances of PI, PID control technique and ANFIS control approach is carried out in MATLAB/SIMULINK software. The results validates that the ANFIS based intelligent controller is faster than the conventional controller and have improved dynamic response.
基于ANFIS的混合神经模糊方法在四区水热互联电力系统负荷频率控制中的应用
提出了一种基于ANFIS的四热水控制区混合电力系统负荷频率智能控制方法。该控制技术的优点是比传统的自动控制技术更快,并且能够同时处理非线性。此外,与传统控制器相比,基于ANFIS的控制器的最大超调量和稳定时间更小,从而减少了局部和区域间的振荡。在四区互联系统中验证了该控制器在改善动态响应方面的有效性。热控制区(1和2)有再热涡轮机,区3和4包括水力发电厂。在MATLAB/SIMULINK软件中对PI、PID控制技术和ANFIS控制方法的性能进行了比较。结果表明,基于ANFIS的智能控制器比传统控制器速度更快,并且具有更好的动态响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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