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Crack fault identification in rotor shaft with artificial neural network

机译:人工神经网络识别转子轴裂纹

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Based on the truth of the change of the mode shapes of cracked structure and ANN's strong capability on nonlinear approximation, a novel method by combining modal analysis of cracked rotor system and artificial neural network (ANN) and is proposed for fast and precise identification of crack fault in rotor shaft, including single crack case and multi-crack case. To obtain the specific mode shapes of cracked rotor system, fracture mechanics theory and the energy principle of Paris are introduced into the modeling of finite element (FE) model of the cracked rotor system. Thus, a set of different mode shapes of a rotor system with one or several localized on-edge non-propagating open cracks in different positions and depths will be produced to be fed into the pre-designed ANN model with back-propagation learning algorithm. Then the validation of the method is verified by several selected crack cases. The results show that the trained ANN models have good performance to identify the crack location and depth, single crack and dual cracks, with higher accuracy and efficiency. The idea can be used in fast identification of crack fault in rotating machinery.
机译:结合裂纹结构模态变化的真实性和人工神经网络对非线性逼近的强大能力,结合裂纹转子模态分析和人工神经网络(ANN)提出了一种新的方法,用于裂纹的快速,精确识别。转子轴故障,包括单裂纹情况和多裂纹情况。为了获得裂纹转子系统的特定模态形状,将断裂力学理论和Paris的能量原理引入了裂纹转子系统的有限元(FE)模型的建模中。因此,将产生一组具有不同位置和深度的一个或几个局部边缘非传播性开放裂纹的转子系统的不同模式形状,并利用反向传播学习算法将其馈送到预先设计的ANN模型中。然后,通过几个选定的裂纹案例验证了该方法的有效性。结果表明,经过训练的人工神经网络模型能够较好地识别裂纹的位置和深度,单裂纹和双裂纹,具有较高的精度和效率。该思想可用于快速识别旋转机械中的裂纹故障。

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