Zhao Yiming, Yan Jing, Wang Yanxin, Jing Qianzhen, Liu Tingliang
State Key Laboratory of Electrical Insulation and Power Equipment, Xi'an Jiaotong University, Xi'an 710049, China.
Entropy (Basel). 2021 Apr 20;23(4):486. doi: 10.3390/e23040486.
A porcelain insulator is an important part to ensure that the insulation requirements of power equipment can be met. Under the influence of their structure, porcelain insulators are prone to mechanical damage and cracks, which will reduce their insulation performance. After a long-term operation, crack expansion will eventually lead to breakdown and safety hazards. Therefore, it is of great significance to detect insulator cracks to ensure the safe and reliable operation of a power grid. However, most traditional methods of insulator crack detection involve offline detection or contact measurement, which is not conducive to the online monitoring of equipment. Hyperspectral imaging technology is a noncontact detection technology containing three-dimensional (3D) spatial spectral information, whereby the data provide more information and the measuring method has a higher safety than electric detection methods. Therefore, a model of positioning and state classification of porcelain insulators based on hyperspectral technology is proposed. In this model, image data were used to extract edges to locate cracks, and spectral information was used to classify the surface states of porcelain insulators with EfficientNet. Lastly, crack extraction was realized, and the recognition accuracy of cracks and normal states was 96.9%. Through an analysis of the results, it is proven that the crack detection method of a porcelain insulator based on hyperspectral technology is an effective non-contact online monitoring approach, which has broad application prospects in the era of the Internet of Things with the rapid development of electric power.
瓷绝缘子是确保电力设备绝缘要求得以满足的重要部件。在其结构的影响下,瓷绝缘子容易出现机械损伤和裂纹,这会降低其绝缘性能。经过长期运行,裂纹扩展最终会导致击穿并带来安全隐患。因此,检测绝缘子裂纹对于确保电网的安全可靠运行具有重要意义。然而,大多数传统的绝缘子裂纹检测方法涉及离线检测或接触式测量,不利于设备的在线监测。高光谱成像技术是一种包含三维(3D)空间光谱信息的非接触检测技术,其数据提供了更多信息,且测量方法比电气检测方法具有更高的安全性。因此,提出了一种基于高光谱技术的瓷绝缘子定位与状态分类模型。在该模型中,利用图像数据提取边缘来定位裂纹,并利用光谱信息通过高效神经网络(EfficientNet)对瓷绝缘子的表面状态进行分类。最后,实现了裂纹提取,裂纹与正常状态的识别准确率为96.9%。通过对结果的分析,证明基于高光谱技术的瓷绝缘子裂纹检测方法是一种有效的非接触在线监测方法,在电力快速发展的物联网时代具有广阔的应用前景。