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A Novel Personalized Diagnosis Methodology Using Numerical Simulation and an Intelligent Method to Detect Faults in a Shaft

机译:一种新颖的基于数值模拟和智能方法的竖井故障个性化诊断方法

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Personalized medicine is a hot topic to develop a medical procedure for healthcare. Motivated by molecular dynamics simulation-based personalized medicine, we propose a novel numerical simulation-based personalized diagnosis methodology and explain the fundamental procedures. As an example, a personalized fault diagnosis method is developed using the finite element method (FEM), wavelet packet transform (WPT) and support vector machine (SVM) to detect faults in a shaft. The shaft unbalance, misalignment, rub-impact and the combination of rub-impact and unbalance are investigated using the present method. The method includes three steps. In the first step, Theil’s inequality coefficient (TIC)-based FE model updating technique is employed to determine the boundary conditions, and the fault-induced FE model of the faulty shaft is constructed. Further, the vibration signals of the faulty shaft are obtained using numerical simulation. In the second step, WPT is employed to decompose the vibration signal into several signal components. Specific time-domain feature parameters of all of the signal components are calculated to generate the training samples to train the SVM. Finally, the measured vibration signal and its components decomposed by WPT serve as a test sample to the trained SVM. The fault types are finally determined. In the simulation of a simple shaft, the classification accuracy rates of unbalance, misalignment, rub-impact and the combination of rub-impact and unbalance are 93%, 95%, 89% and 91%, respectively, whereas in the experimental investigations, these decreased to 82%, 87%, 73% and 79%. In order to increase the fault diagnosis precision and general applicability, further works are continuously improving the personalized diagnosis methodology and the corresponding specific methods.
机译:个性化医学是开发医疗保健程序的热门话题。受基于分子动力学模拟的个性化医学的推动,我们提出了一种新颖的基于数值模拟的个性化诊断方法并解释了基本程序。例如,使用有限元方法(FEM),小波包变换(WPT)和支持向量机(SVM)开发了个性化的故障诊断方法,以检测轴中的故障。使用本方法研究轴的不平衡,不对中,摩擦影响以及摩擦影响和不平衡的组合。该方法包括三个步骤。第一步,采用基于泰尔不等式系数(TIC)的有限元模型更新技术确定边界条件,并建立故障轴的故障诱发有限元模型。此外,使用数值模拟获得故障轴的振动信号。在第二步中,使用WPT将振动信号分解为几个信号分量。计算所有信号分量的特定时域特征参数,以生成训练样本以训练SVM。最后,测得的振动信号及其通过WPT分解的分量作为训练SVM的测试样本。最终确定故障类型。在简单轴的模拟中,不平衡,未对准,摩擦冲击以及摩擦冲击与不平衡的组合的分类准确率分别为93%,95%,89%和91%,而在实验研究中,分别降至82%,87%,73%和79%。为了提高故障诊断的准确性和通用性,进一步的工作是不断改进个性化诊断方法和相应的具体方法。

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