列车轴箱轴承红外图像智能检测与故障识别OA
Intelligent Infrared Imaging Inspection and Fault Detection of Train Axle Box Bearings
红外热成像技术结合图像处理技术可实现远距离、无损伤、高精度、智能化的故障诊断及状态监测,将其应用到列车故障率较高的轴箱轴承故障诊断及状态识别具有重要意义.本文首先采用列车红外图像数据集对内置卷积神经网络(CNN)的单阶段深度学习目标检测 YOLOv8 检测模型进行训练、验证、测试之后进行列车轴箱识别;然后通过 Comsol 有限元仿真模拟列车 4 种轴箱不同轴承故障的红外图像,生成图像数据集后,分别采用视觉词袋模型(bag of visual words,BoVW)、Hog特征(histogram of oriented gradient)提取与支持向量机(SVM)、YOLOv8 目标检测分类 3 种图像分类模型进行图像分类识别,结果表明:内置卷积神经网络深度学习目标检测YOLOv8分类模型分类精度最高,可达100%精度;其次为 BoVW 模型分类精度最高可达 99.39%;Hog特征结合 SVM的分类效果表现不佳,只能达到37.00%的分类精度.
Infrared thermal imaging technology,when combined with image processing techniques,enables long-distance,non-destructive,high-precision,and intelligent fault diagnosis and condition monitoring.Its application to the fault diagnosis and condition identification of axle box bearings—components with a high train failure rate—is therefore of significant practical importance.In this study,a train infrared thermal image dataset is utilized to train,validate,and test the single-stage deep learning object detection model YOLOv8,which incorporates a Convolutional Neural Network(CNN),for axle box detection.Subsequently,infrared thermal images corresponding to different bearing fault conditions of four axle boxes are simulated using COMSOL finite element analysis to generate an additional dataset.Three classification approaches—Bag of Visual Words(BoVW)with HOG Characteristic Gradient extraction,Support Vector Machine(SVM),and YOLOv8-based classification—are then employed for image classification and fault recognition.The results show that the YOLOv8-based classification model,which integrates a convolutional neural network for deep learning-based object detection,achieves the highest classification accuracy,reaching 100%.In comparison,the BoVW model attains an accuracy of up to 99.39%.In contrast,the combination of HOG features with SVM demonstrates relatively poor performance,with a classification accuracy of only 37.00%.
王建鑫;郭佑民;杨君;赵鸿亮
兰州交通大学 机电技术研究所,甘肃 兰州 730070||兰州万里航空机电有限责任公司,甘肃 兰州 730070兰州交通大学 机电技术研究所,甘肃 兰州 730070兰州交通大学 机电技术研究所,甘肃 兰州 730070兰州交通大学 机电技术研究所,甘肃 兰州 730070
信息技术与安全科学
列车轴箱红外图像视觉词袋CNNHog特征与SVM
train axleboxinfrared thermal imagevisual bag of wordsCNNHog features and SVM
《红外技术》 2026 (4)
508-515,8
国家自然科学基金资助项目(72061021).
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