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Intelligent Fault Diagnosis of Delta 3D Printers Using Attitude Sensors Based on Support Vector Machines

机译:基于支持向量机的基于姿态传感器的Delta 3D打印机智能故障诊断

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摘要

Health condition is a vital factor affecting printing quality for a 3D printer. In this work, an attitude monitoring approach is proposed to diagnose the fault of the delta 3D printer using support vector machines (SVM). An attitude sensor was mounted on the moving platform of the printer to monitor its 3-axial attitude angle, angular velocity, vibratory acceleration and magnetic field intensity. The attitude data of the working printer were collected under different conditions involving 12 fault types and a normal condition. The collected data were analyzed for diagnosing the health condition. To this end, the combination of binary classification, one-against-one with least-square SVM, was adopted for fault diagnosis modelling by using all channels of attitude monitoring data in the experiment. For comparison, each one channel of the attitude monitoring data was employed for model training and testing. On the other hand, a back propagation neural network (BPNN) was also applied to diagnose fault using the same data. The best fault diagnosis accuracy (94.44%) was obtained when all channels of the attitude monitoring data were used with SVM modelling. The results indicate that the attitude monitoring with SVM is an effective method for the fault diagnosis of delta 3D printers.
机译:健康状况是影响3D打印机打印质量的重要因素。在这项工作中,提出了一种姿态监测方法,以使用支持向量机(SVM)诊断增量3D打印机的故障。姿态传感器安装在打印机的移动平台上,以监视其3轴姿态角,角速度,振动加速度和磁场强度。在不同情况下收集工作打印机的姿态数据,包括12种故障类型和正常情况。分析收集的数据以诊断健康状况。为此,通过在实验中使用姿态监测数据的所有通道,将二进制分类,一对一和最小二乘SVM相结合,用于故障诊断建模。为了进行比较,将姿态监测数据的每个通道用于模型训练和测试。另一方面,反向传播神经网络(BPNN)也被用于使用相同数据诊断故障。当姿态监测数据的所有通道都与SVM建模一起使用时,可以获得最佳的故障诊断准确度(94.44%)。结果表明,使用SVM进行姿态监测是对增量3D打印机进行故障诊断的有效方法。

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