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Quantitative Nondestructive Testing of Broken Wires for Wire Rope Based on Magnetic and Infrared Information

机译:基于磁性和红外信息的钢丝绳断线定量无损检测

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The lifetime of wire rope is crucial in industry manufacturing, mining, and so on. The damage can be detected by using appropriate nondestructive testing techniques or destructive tests by cutting the part. For broken wires classification problems, this work is aimed at improving the recognition accuracy. Facing the defects at the exterior of the rope, a novel method for recognition of broken wires is firstly developed based on magnetic and infrared information fusion. A denoising method, which is adopted for magnetic signal, is proposed for eliminating baseline signal and wave strand. An image segmentation method is employed for parting the defects of infrared images. Characteristic vectors are extracted from magnetic images and infrared images, then kernel extreme learning machine network is applied to implement recognition of broken wires. Experimental results show that the denoising method and image segmentation are effective and the information fusion can improve the classification accuracy, which can provide useful information for estimating the residual lifetime of wire rope.
机译:钢丝绳的寿命在工业制造,采矿等方面至关重要。通过使用适当的非破坏性测试技术或通过切割部分来检测损坏。对于断线分类问题,这项工作旨在提高识别准确性。面对绳索外部的缺陷,基于磁性和红外信息融合首先开发了一种识别断线的新方法。提出了一种用于消除基线信号和波段的磁信号采用的去噪方法。采用图像分割方法来分配红外图像的缺陷。特征向量从磁性图像和红外图像中提取,然后应用内核极端学习机网络来实现破碎线的识别。实验结果表明,去噪方法和图像分割是有效的,信息融合可以提高分类精度,可以提供用于估计钢丝绳的剩余寿命的有用信息。

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