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A power control strategy for flywheel doubly-fed induction machine storage system using artificial neural network

机译:基于人工神经网络的飞轮双馈感应电机存储系统的功率控制策略

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A large-capacity low-speed flywheel energy storage system (FESS) based on a doubly-fed induction machine (DFIM) consists of a wound-rotor induction machine and a back-to-back converter rated at 30-35% of the machine power rating used for rotor excitation. This system has been promoted as a viable mean of energy storage for power system applications as grid frequency support/control, uninterruptible power supply (UPS), power conditioning, and voltage sag mitigation. This paper presents a simple power control strategy based on artificial neural networks (ANN) to charge/discharge a flywheel DFIM (FW-DFIM) storage system while maintaining controllable grid side power. The proposed controller is based on conventional vector control system supplemented by an ANN-based current decoupling network used to develop the required rotor current components based on the required grid power level and flywheel instantaneous speed. The controller is designed to avoid overloading both stator and rotor circuits while the flywheel is charged/discharged. Additionally, it avoids using the required outer power loop or a hysteresis power controller, hence, simplifies the overall control algorithm. The validity of the developed concept along with the effectiveness and viability of the control strategy in power system applications is confirmed by computer simulation using Matlab/Simulink for a medium voltage 1000hp FW-DFIM. The simulation study is carried out for uninterruptible power supply (UPS) applications and power leveling to improve the quality of electric power delivered by wind generators.
机译:基于双馈感应电机(DFIM)的大容量低速飞轮储能系统(FESS)由绕线转子感应电机和背对背变流器组成,其额定功率为该机器的30-35%用于转子励磁的额定功率。该系统已被推广为电力系统应用中可行的能量存储手段,例如电网频率支持/控制,不间断电源(UPS),功率调节和电压暂降。本文提出了一种基于人工神经网络(ANN)的简单功率控制策略,可在保持可控电网侧功率的同时对飞轮DFIM(FW-DFIM)存储系统进行充电/放电。所提出的控制器基于常规矢量控制系统,并辅以基于ANN的电流去耦网络,用于基于所需的电网功率水平和飞轮瞬时速度来开发所需的转子电流分量。控制器的设计可避免在飞轮充电/放电时使定子和转子电路过载。另外,它避免了使用所需的外部电源环路或磁滞电源控制器,因此简化了总体控制算法。对于中压1000hp FW-DFIM,使用Matlab / Simulink进行计算机仿真,可以验证所开发概念的有效性以及控制策略在电力系统应用中的有效性和可行性。针对不间断电源(UPS)应用和功率均衡进行了仿真研究,以提高风力发电机提供的电能质量。

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