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Application of Self Organizing Map for Intelligent Machine Fault Diagnostics Based on Infrared Thermography Images

机译:自组织图在红外热像仪图像在智能机械故障诊断中的应用

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This paper concerns with implementation of self organizing map (SOM) for intelligent machine fault diagnostics. The present study employs infrared images acquired by thermography camera as data base of machine diagnostics system. Image processing is carried out using thresholding for image segmentation and clustering by means of k-means algorithm. Feature extraction of images is conducted by calculating area, perimeter and central moment of region of interest (ROI). All data of this work was acquired by capturing the images of rolling element bearings from rotating machine fault simulator (MFS). The simulator is able to experiment a normal and seeded fault conditions such as outer and inner race defects of rolling element bearing, unbalance, misalignment and looseness. Pattern recognition technique is then employed to diagnose the machine conditions by mapping the image features through SOM. The result shows that SOM based infrared thermography image can perform intelligent machine fault diagnostics with plausible accuracy.
机译:本文涉及用于智能机器故障诊断的自组织图(SOM)的实现。本研究采用热成像相机获取的红外图像作为机器诊断系统的数据库。借助k-means算法,使用阈值进行图像分割和聚类,从而进行图像处理。图像的特征提取是通过计算感兴趣区域(ROI)的面积,周长和中心矩来进行的。通过从旋转机械故障模拟器(MFS)捕获滚动轴承的图像来获取这项工作的所有数据。该模拟器能够试验正常的故障状态,例如滚动轴承的内外圈缺陷,不平衡,不对中和松动。然后采用模式识别技术通过SOM映射图像特征来诊断机器状况。结果表明,基于SOM的红外热像仪图像可以以合理的精度执行智能的机器故障诊断。

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