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Automatic image detection of multi-type surface defects on wind turbine blades based on cascade deep learning network

机译:基于级联深度学习网络的风力涡轮机叶片多型表面缺陷自动图像检测

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摘要

A safe operation protocol of the wind blades is a critical factor to ensure the stability of a wind turbine. Sensors are most commonly applied for defect detection on wind turbine blades (WTBs). However, due to the high cost and the sensitivity to stochastic noise, computer vision-guided automatic detection remains a challenge for surface defect detection on WTBs in particularly, its accuracy in locating defects is yet to be optimized. In this paper, we developed a visual inspection model that can automatically and precisely classify and locate the surface defects, through the utilization of a deep learning framework based on the Cascade R-CNN. In order to obtain high mean average precision (mAP) according to the characteristics of the dataset, a model named Contextual Aligned-Deformable Cascade R-CNN (CAD Cascade R-CNN) using improved strategies of transfer learning, Deformable Convolution and Deformable RoI Align, as well as context information fusion is proposed and a dataset with surface defects categorized and labeled as crack, breakage and oil pollution is generated. Moreover to alleviate the problem of false detection under a complex background, an improved bisecting k-means is presented during the test process. The adaptability and generalization of the proposed CAD Cascade R-CNN model were validated by each type of defects in dataset and different IoU thresholds, whereas, each of the above improved strategies was verified by gradual ablation experiments. Finally experiments that compared with the baseline Cascade R-CNN, Faster R-CNN and YOLO-v3 demonstrate its superiority over these existing approaches with a maximum of 92.1% mAP.
机译:风刀片的安全操作协议是确保风力涡轮机稳定性的关键因素。传感器最常应用于风力涡轮机叶片(WTBS)上的缺陷检测。然而,由于高成本和对随机噪声的敏感性,计算机视觉引导的自动检测仍然是对WTBS的表面缺陷检测的挑战,特别是其在定位缺陷中的精度尚未优化。在本文中,我们通过利用基于级联R-CNN的深度学习框架,自动和精确地分类和定位表面缺陷的视觉检查模型。为了根据数据集的特性获得高平均平均精度(MAP),使用改进的转移学习策略,可变形卷积和可变形ROI对齐的策略,命名为上下文对准可变形级联R-CNN(CAD Cascade R-CNN)的模型以及提出了上下文信息融合,并且产生了分类和标记为裂缝,破损和油污的地表缺陷的数据集。此外,为了减轻复杂背景下的假检测问题,在测试过程中提出了一种改进的分化k型。所提出的CAD级联R-CNN模型的适应性和泛化由数据集中的每种类型的缺陷验证,而不同的IOU阈值验证,而通过逐渐消融实验验证了上述改进的策略。最后的实验与基线级联R-CNN相比,更快的R-CNN和YOLO-V3将其在这些现有方法上展示了其优势,最多92.1%图。

著录项

  • 来源
    《Intelligent data analysis》 |2021年第2期|463-482|共20页
  • 作者单位

    Beijing Jiaotong Univ Sch Mech Elect & Control Engn 3 Shangyuancun Beijing 100044 Peoples R China;

    Beijing Jiaotong Univ Sch Mech Elect & Control Engn 3 Shangyuancun Beijing 100044 Peoples R China;

    Liverpool John Moores Univ Control Syst Ctr Sch Engn Liverpool Merseyside England;

    Beijing Jiaotong Univ Sch Mech Elect & Control Engn 3 Shangyuancun Beijing 100044 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep learning; Cascade R-CNN; surface defect detection wind turbine blades; accuracy;

    机译:深入学习;级联R-CNN;表面缺陷检测风力涡轮机叶片;精度;
  • 入库时间 2022-08-19 01:59:03

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