Application of back propagation neural network to fault diagnosis of direct-drive wind turbine

X. An, D. Jiang, Shaohua Li
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引用次数: 16

Abstract

The vibration signals of wind turbines are highly nonlinear and non-stationary due to wind turbine operation conditions that are very complicated. The signals will be more complex when a fault occurs. Aiming at these problems, a fault diagnosis method for direct-drive wind turbine is presented based on back propagation neural network (BPNN). The time-domain feature parameters of vibration signals in the horizontal and vertical direction are considered in the method. Five experiments of direct-drive wind turbine with normal, wind wheel mass imbalance, wind wheel aerodynamic imbalance, yaw and blade break are carried out in laboratory scale. Through analyzing the features of five conditions, the time-domain feature parameters in horizontal and vertical direction of the vibration signal are selected as the input samples of BPNN. By training, the BPNN model can be constructed between feature parameters and fault types. The validity of the BPNN model is verified using test samples. The results indicate that the proposed method has higher diagnostic accuracy. It can used in on-line fault diagnosis of direct-drive wind turbines.
反向传播神经网络在直驱风电机组故障诊断中的应用
由于风力发电机组的运行工况非常复杂,其振动信号具有高度的非线性和非平稳性。故障发生时,信号会更加复杂。针对这些问题,提出了一种基于反向传播神经网络(BPNN)的直驱风电机组故障诊断方法。该方法考虑了振动信号在水平方向和垂直方向上的时域特征参数。在实验室尺度上对直驱式风力机进行了正常、风轮质量不平衡、风轮气动不平衡、偏航和叶片断裂五种试验。通过分析五种情况的特征,选择振动信号水平方向和垂直方向的时域特征参数作为bp神经网络的输入样本。通过训练,可以在特征参数和故障类型之间构建bp神经网络模型。通过实例验证了BPNN模型的有效性。结果表明,该方法具有较高的诊断准确率。该方法可用于直驱风力发电机组的在线故障诊断。
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