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Data-driven modelling of a doubly fed induction generator wind turbine system based on neural networks

机译:基于神经网络的双馈感应风力发电机系统的数据驱动建模

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摘要

In a wind power system, the wind turbine captures wind energy and converts it into electric energy through a coupled rotating generator. This renewable energy conversion system usually consists of a wind turbine, rotor, gearbox and mostly a doubly fed induction generator (DFIG). It is a complex non-linear multi-input multi-output system with many uncertain factors. Meanwhile, the dynamics of the system is quite dependent on the wind velocity. Traditional analytical methods are quite difficult to model such a complex system. The recently developed data-driven method can be a suitable modelling technique for such system. Using a large amount of input-output on-line measurement data from the selected months, neural networks and neuro-fuzzy networks are fully utilised to model the DFIG. Detailed analysis and comparisons with the classical system identification techniques are addressed to show the advantages of the data-driven DFIG modelling approach.
机译:在风力发电系统中,风力涡轮机捕获风能,并通过耦合的旋转发电机将其转换为电能。这种可再生能源转换系统通常由风力涡轮机,转子,齿轮箱和主要由双馈感应发电机(DFIG)组成。它是一个复杂的非线性多输入多输出系统,具有许多不确定因素。同时,系统的动力学很大程度上取决于风速。传统的分析方法很难对这样一个复杂的系统进行建模。最近开发的数据驱动方法可能是此类系统的合适建模技术。使用选定月份的大量输入输出在线测量数据,可以充分利用神经网络和神经模糊网络对DFIG进行建模。进行了详细的分析和与经典系统识别技术的比较,以显示数据驱动DFIG建模方法的优势。

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