高级检索

基于Swin Transformer的引流板缺陷超声检测技术及智能识别方法

Ultrasonic Detection Technology and Intelligent Recognition Method for Drainage Plate Defects Based on Swin Transformer

  • 摘要: 引流板缺陷若未及时发现和处理会导致其接触电阻逐渐增大,严重时会发生熔断事故,影响电力系统的稳定运行。超声检测方法通过分析声阻抗差异实现对引流板缺陷检测,但由于噪声及中间层回波干扰,超声B扫图像中的缺陷特征难以提取。基于此,本文提出基于Swin Transformer模型的引流板缺陷检测及智能识别方法,通过Swin Transformer解决引流板B扫图像中的噪声干扰和特征提取困难的问题,实现引流板缺陷的准确高效识别。本文首先通过仿真确定最佳超声频率区间,并搭建试验平台对引流板进行超声检测。随后,结合合成孔径聚焦技术和相位相干技术优化图像质量和分辨率,减少噪声干扰。最终,本文通过对5种深度学习模型的对比试验验证了Swin Transformer在引流板缺陷检测中的优势。

     

    Abstract: If defects in drainage plates are not detected and addressed in a timely manner, they can cause a gradual increase in contact resistance, which may lead to fuse blowouts and affect the stability of the power system. Ultrasonic detection methods identify defects in drainage plates by analyzing differences in acoustic impedance; however, noise and interlayer echo interference make it difficult to extract defect features from ultrasonic B-scan images. To address this, this paper proposes a defect detection and intelligent recognition method for drainage plates based on the Swin Transformer model. The Swin Transformer effectively mitigates noise interference and feature extraction difficulties in B-scan images, enabling accurate and efficient identification of drainage plate defects. First, the optimal ultrasonic frequency range is determined through simulations, and an experimental platform is set up for ultrasonic testing of drainage plates. Then, synthetic aperture focusing technology (SAFT) and phase coherence techniques are employed to improve image quality and resolution while reducing noise interference. Finally, comparative experiments with five deep learning models demonstrate the superiority of the Swin Transformer in drainage plate defect detection.

     

/

返回文章
返回