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首页> 外文期刊>International Journal of Electrical Power & Energy Systems >Optimal control for variable-speed wind generation systems using General Regression Neural Network
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Optimal control for variable-speed wind generation systems using General Regression Neural Network

机译:基于通用回归神经网络的变速风力发电系统的最优控制

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摘要

An induction generator (IG) speed drive with the application of an optimal controller and a proposed General Regression Neural Network (GRNN) controller is introduced in this paper. Grid connected wind energy conversion system (WECS) present interesting control demands, due to the intrinsic nonlinear characteristic of wind mills and electric generators. The GRNN with adaptive ant colony optimization (MCO) torque compensation is feed-forward to increase the robustness of the wind driven induction generator system. An optimal control loop for the wind power system is designed. The optimality of the whole system is defined in relation with the trade-off between the wind energy conversion maximization and the minimization of the induction generator torque variation that is responsible for the frequency fluctuations. This is achieved by using a combined optimization criterion, resulting in a LQ tracking problem with an infinite horizon and a measurable exogenous variable (wind speed). The proposed controller is designed to drive the turbine speed to extract maximum power from the wind and adjust to the power regulation.
机译:本文介绍了一种具有最佳控制器和拟议的通用回归神经网络(GRNN)控制器的感应发电机(IG)速度驱动器。由于风车和发电机的固有非线性特性,并网风能转换系统(WECS)提出了有趣的控制要求。具有自适应蚁群优化(MCO)扭矩补偿的GRNN是前馈,可提高风力感应发电机系统的鲁棒性。设计了风力发电系统的最优控制回路。相对于风能转换最大化和导致频率波动的感应发电机转矩变化的最小化之间的权衡,来定义整个系统的最优性。这是通过使用组合的优化标准来实现的,从而导致LQ跟踪问题具有无限的范围和可测量的外生变量(风速)。拟议中的控制器旨在驱动涡轮转速,以从风中获取最大功率并调整至功率调节。

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