Deep Learning–Based Time-Series Classification for Robotic Inspection of Pipe Condition Using Non-Contact Ultrasonic Testing

Author:

Hespeler Steven C.1,Nemati Hamidreza2,Masurkar Nihar2,Alvidrez Fernando3,Marvi Hamidreza4,Dehghan-Niri Ehsan5

Affiliation:

1. Oak Ridge National Laboratory Computer Science and Mathematics Division, , Oak Ridge, TN 37830

2. Arizona State University Intelligent Structures and Nondestructive Evaluation (ISNDE) Laboratory, , Mesa, AZ 85212

3. New Mexico State University Department of Civil Engineering, , Las Cruces, NM 88003

4. Arizona State University School for Engineering of Matter, Transport, and Energy, , Mesa, AZ 85212

5. Arizona State University Intelligent Structures and Non-destructive Evaluation (ISNDE) Laboratory, School of Manufacturing Systems and Networks, , Mesa, AZ 85212

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.

Funder

U.S. Department of Energy

Publisher

ASME International

Subject

Mechanics of Materials,Safety, Risk, Reliability and Quality,Civil and Structural Engineering

Reference49 articles.

1. Integrating Electromagnetic Acoustic Transducers in a Modular Robotic Gripper for Inspecting Tubular Components;Nemati;Mater. Eval.,2021

2. Nondestructive Evaluation of Creep and Overheating Damage in Low-Carbon Steel Boiler Tubes;Vakhguelt,2017

3. Locomotion Methods of Pipe Climbing Robots: A Review;Chattopadhyay;J. Eng. Sci. Technol. Rev.,2018

4. Failure Analysis of a Boiler Tube in USC Coal Power Plant;Lee;Eng. Failure Anal.,2009

5. Failure Analysis of Boiler Cold and Hot Reheater Tubes;Ranjbar;Eng. Failure Anal.,2007

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