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Nonlinear and parametric coupled vibrations of the rotor-shaft system as fault identification symptom using stochastic methods

机译:转子轴系统的非线性和参数耦合振动作为随机识别故障的征兆

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摘要

In the paper several stochastic methods for detection and identification of cracks in the shafts of rotating machines are proposed. All these methods are based on the Monte Carlo simulations of the rotor-shaft lateral-torsional-longitudinal vibrations mutually coupled by transverse cracks of randomly selected depths and locations on the shaft. For this purpose there is applied a structural hybrid model of a real cracked rotor-shaft. This model is characterized by a high practical reliability and great computational efficiency, so important for hundreds of thousands numerical simulations necessary to build databases used in solving the inverse problem, i.e. crack parameter identifications. In order to ensure a good identification accuracy, for creating the Monte Carlo samples of data points there are proposed special probability density functions for locations and depths of the crack. Such an approach helps in enhancing databases corresponding to the most probable faults of the rotor-shaft system of the considered rotor machine. In the presented study six different database sizes are considered to compare identification efficiency and accuracy of considered methods. A sufficiently large database enables us to estimate almost immediately (usually in less than one second) the crack parameters with precision that is in most of the cases acceptable in practice. Then, as a next stage, one of the proposed fast improvement algorithms can be applied to refine identification results in a reasonable time. The proposed methods seem to provide very convenient diagnostic tools for industrial applications.
机译:在本文中,提出了几种用于检测和识别旋转机械轴中裂纹的随机方法。所有这些方法均基于转子轴横向-纵向-纵向振动的蒙特卡罗模拟,该模拟是通过随机选择深度和位置的横向裂纹相互耦合的。为此,应用了真实裂纹转子轴的结构混合模型。该模型的特点是具有很高的实用可靠性和很高的计算效率,因此对于建立用于解决反问题(即裂纹参数识别)的数据库所必需的数十万数值模拟非常重要。为了确保良好的识别精度,为创建数据点的蒙特卡洛样本,提出了针对裂纹位置和深度的特殊概率密度函数。这种方法有助于增强与所考虑的转子机器的转子轴系统的最可能故障相对应的数据库。在本研究中,考虑了六个不同的数据库大小,以比较识别效率和所考虑方法的准确性。一个足够大的数据库使我们能够几乎立即(通常在不到一秒钟的时间内)估算出裂纹参数,其精度在大多数情况下是可以接受的。然后,作为下一阶段,可以将所提出的快速改进算法之一应用于在合理的时间内改进识别结果。所提出的方法似乎为工业应用提供了非常方便的诊断工具。

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