K-mer Frequency Encoding Model for Cable Defect Identification: A Combination of Non-Destructive Testing Approach with Artificial Intelligence

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY
Brijesh Patel, Zih Fong Huang, Chih-Ho Yeh, Yen-Ru Shih, Po Ting Lin
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引用次数: 0

Abstract

This paper describes a non-destructive detection method for identifying cable defects using K-mer frequency encoding. The detection methodology combines magnetic leakage detection equipment with artificial intelligence for precise identification. The cable defect identification process includes cable signal acquisition, K-mer frequency encoding, and artificial intelligence-based identification. A magnetic leakage detection device detects signals via sensors and records their corresponding positions to obtain cable signals. The K-mer frequency encoding method consists of several steps, including cable signal normalization, the establishment of K-mer frequency encoding, repeated sampling of cable signals, and conversion for comparison to derive the K-mer frequency. The K-mer frequency coding method has advantages in data processing and repeated sampling. In the identification step of the artificial intelligence identification model, an autoencoder model is used as the algorithm, and the K-mer frequency coding method is used to introduce artificial parameters. Proper adjustments of these parameters are required for optimal cable defect identification performance in various applications and usage scenarios. Experiment results show that the proposed K-mer frequency encoding method is effective, with a cable identification accuracy rate of 91% achieved through repeated sampling.
电缆缺陷识别的K-mer频率编码模型:无损检测与人工智能的结合
本文介绍了一种利用K-mer频率编码对电缆缺陷进行无损检测的方法。该检测方法将漏磁检测设备与人工智能相结合,进行精确识别。电缆缺陷识别过程包括电缆信号采集、K-mer频率编码和基于人工智能的识别。漏磁检测装置是一种通过传感器检测信号并记录其对应位置,从而获取电缆信号的装置。K-mer频率编码方法包括电缆信号归一化、建立K-mer频率编码、电缆信号重复采样、转换比较推导K-mer频率等几个步骤。K-mer频率编码方法在数据处理和重复采样方面具有优势。在人工智能识别模型的识别步骤中,采用自编码器模型作为算法,并采用K-mer频率编码方法引入人工参数。在各种应用和使用场景中,需要适当调整这些参数以获得最佳的电缆缺陷识别性能。实验结果表明,所提出的K-mer频率编码方法是有效的,通过重复采样,电缆识别准确率达到91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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