Hua Chenquan, Chen Siwei, Xu Guoyan, Chen Yang
College of Control Science and Engineering, China University of Petroleum (East China), Qingdao 266580, China.
Sensors (Basel). 2022 Jul 11;22(14):5189. doi: 10.3390/s22145189.
Because of its unique characteristics of small specific gravity, high strength, and corrosion resistance, the carbon fiber sucker rod has been widely used in petroleum production. However, there is still a lack of corresponding online testing methods to detect its integrity during the process of manufacturing. Ultrasonic nondestructive testing has become one of the most accepted methods for inspection of homogeneous and fixed-thickness composites, or layered and fixed-interface-shape composites, but a carbon fiber sucker rod with multi-layered structures and irregular interlayer interfaces increases the difficulty of testing. In this paper, a novel defect detection method based on multi-sensor information fusion and a deep belief network (DBN) model was proposed to identify online its defects. A water-immersed ultrasonic array with 32 ultrasonic probes was designed to realize the online and full-coverage scanning of carbon fiber rods in radial and axial positions. Then, a multi-sensor information fusion method was proposed to integrate amplitudes and times-of-flight of the received ultrasonic pulse-echo signals with the spatial angle information of each probe into defect images with obvious defects including small cracks, transverse cracks, holes, and chapped cracks. Three geometric features and two texture features from the defect images characterizing the four types of defects were extracted. Finally, a DBN-based defect identification model was constructed and trained to identify the four types of defects of the carbon fiber rods. The testing results showed that the defect identification accuracy of the proposed method was 95.11%.
由于碳纤维抽油杆具有比重小、强度高、耐腐蚀等独特特性,已在石油生产中得到广泛应用。然而,在制造过程中仍缺乏相应的在线检测方法来检测其完整性。超声无损检测已成为检测均匀且厚度固定的复合材料或分层且界面形状固定的复合材料最常用的方法之一,但具有多层结构和不规则层间界面的碳纤维抽油杆增加了检测难度。本文提出了一种基于多传感器信息融合和深度置信网络(DBN)模型的新型缺陷检测方法,用于在线识别其缺陷。设计了一种具有32个超声探头的水浸超声阵列,以实现对碳纤维抽油杆在径向和轴向位置的在线全覆盖扫描。然后,提出了一种多传感器信息融合方法,将接收到的超声脉冲回波信号的幅度和飞行时间与每个探头的空间角度信息整合到包含小裂纹、横向裂纹、孔洞和干裂等明显缺陷的缺陷图像中。从表征这四种缺陷的缺陷图像中提取了三种几何特征和两种纹理特征。最后,构建并训练了基于DBN的缺陷识别模型,以识别碳纤维抽油杆的四种缺陷类型。测试结果表明,所提方法的缺陷识别准确率为95.11%。