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Application of Probabilistic Neural Network in Fault Diagnosis of Wind Turbine Using FAST, TurbSim and Simulink

机译:概率神经网络在FAST,TurbSim和Simulink中的故障诊断中的应用

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This paper presents an intelligent diagnosis technique for wind turbine imbalance fault identification based on generator current signals. For this aim, Probabilistic Neural Network (PNN), which is powerful algorithm for classification problems that needs small training time in solving nonlinear problems and applicable to high dimension applications, is employed. The complete dynamics of a permanent magnet synchronous generator (PMSG) based wind-turbine (WTG) model are imitated in an amalgamated domain of Simulink, FAST and TurbSim under six distinct conditions, i.e., aerodynamic asymmetry, rotor furl imbalance, tail furl imbalance, blade imbalance, nacelle-yaw imbalance and normal operating scenarios. The simulation results in time domain of the PMSG stator current are decomposed into the Intrinsic Mode Frequency (IMF) using EMD method, which are utilized as input variable in PNN. The analyzed results proclaim the effectiveness of the proposed approach to identify the healthy condition from imbalance faults in WTG. The presented work renders initial results that are helpful for online condition monitoring and health assessment of WTG.
机译:本文提出了一种基于发电机电流信号的风轮机不平衡故障智能诊断技术。为此,采用了概率神经网络(PNN),它是用于解决非线性问题的分类算法的强大算法,该算法需要较少的训练时间来解决非线性问题,并且适用于高维应用。在六个不同的条件下,即Simulink,FAST和TurbSim的合并域中,模拟了基于永磁同步发电机(PMSG)的风力涡轮机(WTG)模型的完整动力学,这六个条件是空气动力学不对称,转子糠不平衡,尾糠不平衡,刀片不平衡,机舱-偏航不平衡和正常运行情况。使用EMD方法将PMSG定子电流的时域仿真结果分解为固有模式频率(IMF),并将其用作PNN中的输入变量。分析结果表明,该方法可有效地从WTG中的失衡故障中识别出健康状况。提出的工作提供了初步的结果,有助于在线监测WTG的状况并进行健康评估。

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