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Design of intelligent controllers for wind generation system with sensorless maximum wind energy control

机译:无传感器最大风能控制的风力发电系统智能控制器设计

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This paper presents the design of an on-line training recurrent fuzzy neural network (RFNN) controller with a high-performance model reference adaptive system (MRAS) observer for the sensorless control of a induction generator (1G). The modified particle swarm optimization (MPSO) is adopted in this study to adapt the learning rates in the back-propagation process of the RFNN to improve the learning capability. By using the proposed RFNN controller with MPSO, the IG system can work for stand-alone power application effectively. The proposed output maximization control is achieved without mechanical sensors such as the wind speed or position sensor, and the new control system will deliver maximum electric power with light weight, high efficiency, and high reliability. The estimation of the rotor speed is based on the MRAS control theory. A sensorless vector-control strategy for an IG operating in a grid-connected variable speed wind energy conversion system can be achieved.
机译:本文提出了一种带有高性能模型参考自适应系统(MRAS)观测器的在线训练递归模糊神经网络(RFNN)控制器的设计,用于感应发电机(1G)的无传感器控制。本研究采用改进的粒子群算法(MPSO)来适应RFNN反向传播过程中的学习速率,以提高学习能力。通过将建议的RFNN控制器与MPSO结合使用,IG系统可以有效地用于独立电源应用。无需机械传感器(例如风速或位置传感器)就可以实现建议的输出最大化控制,并且新的控制系统将以重量轻,效率高和可靠性高的特点提供最大的电力。转子速度的估计基于MRAS控制理论。可以实现在并网变速风能转换系统中运行的IG的无传感器矢量控制策略。

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