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A novel online training neural network-based algorithm for wind speed estimation and adaptive control of PMSG wind turbine system for maximum power extraction

机译:一种基于在线训练神经网络的新型风速估计算法和PMSG风力发电机系统的自适应控制,以获取最大功率

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摘要

In this paper, an adaptive control scheme for maximum power point tracking of stand-alone PMSG wind turbine systems (WTS) is presented. A novel procedure to estimate the wind speed is derived. To achieve this, a neural network identifier (NNI) is designed in order to approximate the mechanical torque of the WTS. With this information, the wind speed is calculated based on the optimal mechanical torque point. The NNI approximates in real-time the mechanical torque signal and it does not need off-line training to get its optimal parameter values. In this way, it can really approximates any mechanical torque value with good accuracy. In order to regulate the rotor speed to the optimal speed value, a block-backstepping controller is derived. Uniform asymptotic stability of the tracking error origin is proved using Lyapunov arguments. Numerical simulations and comparisons with a standard passivity based controller are made in order to show the good performance of the proposed adaptive scheme. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文提出了一种用于独立PMSG风力发电机系统(WTS)的最大功率点跟踪的自适应控制方案。推导了一种估计风速的新颖方法。为此,设计了一个神经网络标识符(NNI),以近似WTS的机械扭矩。利用此信息,可基于最佳机械扭矩点计算风速。 NNI实时估算机械扭矩信号,不需要离线培训即可获得其最佳参数值。这样,它就可以真正准确地近似任何机械扭矩值。为了将转子速度调节到最佳速度值,推导了块后推控制器。使用Lyapunov参数证明了跟踪误差起点的一致渐近稳定性。进行了数值模拟和与基于标准无源控制器的比较,以显示所提出的自适应方案的良好性能。 (C)2015 Elsevier Ltd.保留所有权利。

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