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Small Fault Diagnosis of Front-end Speed Controlled Wind Generator Based on Deep Learning

机译:基于深度学习的前端调速风力发电机小故障诊断

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In view of the difficulty in diagnosing the early small faults of front-end controlled wind generator (FSCWG), this paper proposes a small fault diagnosis methods based on deep learning. The method adopts a deep learning method, uses vibration data under several different small fault patterns of FSCWG as input of the model and gets deep learning diagnosis model by learning complicated implicit layer structure and training. Then using the trained network to extract feature of FSCWG from original vibration data by layer-wise, and fully excavate the associations among the data and form a more abstract executive property categories or characteristics, to improve the diagnosis accuracy. The results show that compared with the traditional fault diagnosis method of neural network (NN) and support vector machine (SVM) method, the small fault diagnosis method based on deep learning enhances the small fault diagnosis accuracy in the process of generator operation.
机译:针对前端控制风力发电机(FSCWG)早期小故障的诊断难度,提出一种基于深度学习的小故障诊断方法。该方法采用深度学习方法,以FSCWG几种不同小故障模式下的振动数据作为模型输入,通过学习复杂的隐含层结构和训练得到深度学习诊断模型。然后利用训练好的网络从原始振动数据中逐层提取FSCWG的特征,充分挖掘数据之间的联系,形成更抽象的执行属性类别或特征,以提高诊断的准确性。结果表明,与传统的神经网络故障诊断方法和支持向量机方法相比,基于深度学习的小故障诊断方法在发电机运行过程中提高了小故障诊断的准确性。

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