首页> 外文期刊>Nature reviews Cancer >A Personalized Diagnosis Method to Detect Faults in a Bearing Based on Acceleration Sensors and an FEM Simulation Driving Support Vector Machine
【24h】

A Personalized Diagnosis Method to Detect Faults in a Bearing Based on Acceleration Sensors and an FEM Simulation Driving Support Vector Machine

机译:基于加速度传感器的轴承故障的个性化诊断方法和有限元仿真驾驶支持向量机

获取原文
获取原文并翻译 | 示例
           

摘要

Classification of faults in mechanical components using machine learning is a hot topic in the field of science and engineering. Generally, every real-world running mechanical system exhibits personalized vibration behaviors that can be measured with acceleration sensors. However, faulty samples of such systems are difficult to obtain. Therefore, machine learning methods, such as support vector machine (SVM), neural network (NNs), etc., fail to obtain agreeable fault detection results through smart sensors. A personalized diagnosis fault method is proposed to activate the smart sensor networks using finite element method (FEM) simulations. The method includes three steps. Firstly, the cosine similarity updated FEM models with faults are constructed to obtain simulation signals (fault samples). Secondly, every simulation signal is separated into sub-signals to solve the time-domain indexes to generate the faulty training samples. Finally, the measured signals of unknown samples (testing samples) are inserted into the trained SVM to classify faults. The personalized diagnosis method is applied to detect bearing faults of a public bearing dataset. The classification accuracy ratios of six types of faults are 90% and 92.5%, 87.5% and 87.5%, 85%, and 82.5%, respectively. It confirms that the present personalized diagnosis method is effectiveness to detect faults in the absence of fault samples.
机译:使用机器学习的机械部件故障的分类是科学与工程领域的热门话题。通常,每个现实世界运行的机械系统都表现出可用加速度传感器测量的个性化振动行为。然而,这种系统的错误样本难以获得。因此,机器学习方法,例如支持向量机(SVM),神经网络(NNS)等,无法通过智能传感器获得宽容的故障检测结果。建议使用有限元方法(FEM)模拟来激活智能传感器网络的个性化诊断故障方法。该方法包括三个步骤。首先,构造具有故障的余弦相似性更新的FEM模型以获得模拟信号(故障样本)。其次,每个模拟信号被分成子信号以解决时域索引以产生故障的训练样本。最后,将未知样本(测试样本)的测量信号插入训练的SVM中以对故障进行分类。个性化诊断方法应用于检测公共轴承数据集的轴承故障。六种故障的分类精度比例分别为90%和92.5%,87.5%和87.5%,85%和82.5%。它证实,目前的个性化诊断方法是在没有故障样品的情况下检测故障的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号