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用于支持包装材料行业全面生产维护的轴承在线状态监测

Online Condition Monitoring of Bearings to Support Total Productive Maintenance in the Packaging Materials Industry.

作者信息

Gligorijevic Jovan, Gajic Dragoljub, Brkovic Aleksandar, Savic-Gajic Ivana, Georgieva Olga, Di Gennaro Stefano

机构信息

Faculty of Engineering, University of Kragujevac, Kragujevac 34000, Serbia.

Tetra Pak, Gornji Milanovac Packaging Materials Plant, Gornji Milanovac 32300, Serbia.

出版信息

Sensors (Basel). 2016 Mar 1;16(3):316. doi: 10.3390/s16030316.

Abstract

The packaging materials industry has already recognized the importance of Total Productive Maintenance as a system of proactive techniques for improving equipment reliability. Bearing faults, which often occur gradually, represent one of the foremost causes of failures in the industry. Therefore, detection of their faults in an early stage is quite important to assure reliable and efficient operation. We present a new automated technique for early fault detection and diagnosis in rolling-element bearings based on vibration signal analysis. Following the wavelet decomposition of vibration signals into a few sub-bands of interest, the standard deviation of obtained wavelet coefficients is extracted as a representative feature. Then, the feature space dimension is optimally reduced to two using scatter matrices. In the reduced two-dimensional feature space the fault detection and diagnosis is carried out by quadratic classifiers. Accuracy of the technique has been tested on four classes of the recorded vibrations signals, i.e., normal, with the fault of inner race, outer race, and ball operation. The overall accuracy of 98.9% has been achieved. The new technique can be used to support maintenance decision-making processes and, thus, to increase reliability and efficiency in the industry by preventing unexpected faulty operation of bearings.

摘要

包装材料行业已经认识到全面生产维护作为一种提高设备可靠性的主动技术体系的重要性。轴承故障往往是逐渐发生的,是该行业故障的主要原因之一。因此,早期检测轴承故障对于确保可靠高效运行非常重要。我们提出了一种基于振动信号分析的滚动轴承早期故障检测与诊断的新自动化技术。在将振动信号小波分解为几个感兴趣的子带后,提取得到的小波系数的标准差作为代表性特征。然后,使用散度矩阵将特征空间维数最优地降至二维。在降维后的二维特征空间中,通过二次分类器进行故障检测与诊断。该技术的准确性已在四类记录的振动信号上进行了测试,即正常信号、内圈故障信号、外圈故障信号和滚珠运行故障信号。总体准确率达到了98.9%。这项新技术可用于支持维护决策过程,从而通过防止轴承意外故障运行来提高行业的可靠性和效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fe6c/4813891/2725d16371e7/sensors-16-00316-g001.jpg

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