A sensor fault detection scheme of DFIG-based wind turbine using deep auto-encoder approach

A. E. Bakri, S. Sefriti, I. Boumhidi
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Abstract

The reliability of the wind turbine doubly-fed induction generator (DFIG) is of paramount concern for adequate power production. This paper investigates an effective fault detection scheme for DFIG using the deep auto-encoder (DAE) structure. The methods contain three main steps: first, the measurement of the stator currents and voltages directly presented to the DAE to capture the characteristics of the signals effectively. Second, using those features, a neural network model is used to detect faults affecting the stator immediately. Then, a binary decision logic proposed for isolation. The results confirm the method efficiency, rapidity, robustness against the occurrence of multiple faults in the presence of measurement noise and unknown inputs.
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一种基于深度自编码器的dfig风电机组传感器故障检测方案
风力发电机双馈感应发电机(DFIG)的可靠性是保证足够发电量的首要问题。本文研究了一种基于深度自编码器(deep auto-encoder, DAE)结构的DFIG故障检测方案。该方法主要包括三个步骤:首先,测量直接呈现给DAE的定子电流和电压,有效地捕获信号的特征。其次,利用这些特征,利用神经网络模型对影响定子的故障进行即时检测。然后,提出了一种用于隔离的二元决策逻辑。结果表明,该方法在存在测量噪声和未知输入的情况下,具有高效、快速和抗多故障的鲁棒性。
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