Deep Learning based Time-Series Classification for Robotic Inspection of Pipe Condition using Non-Contact Ultrasonic Testing

IF 2 Q2 ENGINEERING, MULTIDISCIPLINARY
Steven Hespeler, Hamidreza Nemati, Nihar Masurkar, Fernando Alvidrez, Hamidreza Marvi, Ehsan Dehghan Niri
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Abstract

Abstract This journal paper explores the application of Deep Learning (DL)-based Time-Series Classification (TSC) algorithms in ultrasonic testing for pipeline inspection. The utility of Electromagnetic Acoustic Transducers (EMAT) as a non-contact ultrasonic testing technique for compact robotic platforms is emphasized, prioritizing computational efficiency in defect detection over pinpoint accuracy. To address limited sample availability, the study conducts benchmarking of four methods to enable comparative evaluation of classification times. The core of the DL-based TSC approach involves training DL models using varied proportions (60%, 80%, and 100%) of the available training dataset. This investigation demonstrates the adaptability of DL-enabled anomaly detection with shifting data sizes, showcasing the AI-driven process's robustness in identifying pipeline irregularities. The outcomes underscore the pivotal role of artificial intelligence (AI) in facilitating semi-accurate but swift anomaly detection, thereby streamlining subsequent focused inspections on pipeline areas of concern. By synergistically integrating EMAT technology and DL-driven TSC, this research contributes to enhancing the precision and near real-time inspection capabilities of pipeline assessment. This investigation collectively highlights the potential of DL networks to revolutionize pipeline inspection by rapidly and accurately analyzing ultrasound waveform data.
基于深度学习的非接触式超声管道状态机器人检测时序分类
摘要:本文探讨了基于深度学习(DL)的时间序列分类(TSC)算法在管道超声检测中的应用。强调了电磁声换能器(EMAT)作为紧凑型机器人平台的非接触式超声波检测技术的实用性,优先考虑缺陷检测的计算效率而不是精确的精度。为了解决有限的样本可用性,本研究对四种方法进行基准测试,以便对分类时间进行比较评估。基于DL的TSC方法的核心是使用可用训练数据集的不同比例(60%、80%和100%)来训练DL模型。该研究展示了基于dl的异常检测随数据大小变化的适应性,展示了人工智能驱动过程在识别管道不规则性方面的鲁棒性。研究结果强调了人工智能(AI)在促进半准确但快速的异常检测方面的关键作用,从而简化了后续对管道关注区域的集中检查。本研究将EMAT技术与dl驱动的TSC技术协同集成,有助于提高管道评估的精度和近实时检测能力。这项研究共同强调了DL网络通过快速准确地分析超声波形数据来彻底改变管道检查的潜力。
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
CiteScore
3.80
自引率
9.10%
发文量
25
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