Detail publikačního výsledku

Non-Destructive Characterization of Cured-in-Place Pipe Defects

DVOŘÁK, R.; JAKUBKA, L.; TOPOLÁŘ, L.; RABENDA, M.; WIROWSKI, A.; PUCHÝŘ, J.; KUSÁK, I.; PAZDERA, L.

Originální název

Non-Destructive Characterization of Cured-in-Place Pipe Defects

Anglický název

Non-Destructive Characterization of Cured-in-Place Pipe Defects

Druh

Článek WoS

Originální abstrakt

Sewage and water networks are crucial infrastructures of modern urban society. The uninterrupted functionality of these networks is paramount, necessitating regular maintenance and rehabilitation. In densely populated urban areas, trenchless methods, particularly those employing cured-in-place pipe technology, have emerged as the most cost-efficient approach for network rehabilitation. Common diagnostic methods for assessing pipe conditions, whether original or retrofitted with-cured-in-place pipes, typically include camera examination or laser scans, and are limited in material characterization. This study introduces three innovative methods for characterizing critical aspects of pipe conditions. The impact-echo method, ground-penetrating radar, and impedance spectroscopy address the challenges posed by polymer liners and offer enhanced accuracy in defect detection. These methods enable the characterization of delamination, identification of caverns behind cured-in-place pipes, and evaluation of overall pipe health. A machine learning algorithm using deep learning on images acquired from impact-echo signals using continuous wavelet transformation is presented to characterize defects. The aim is to compare traditional machine learning and deep learning methods to characterize selected pipe defects. The measurement conducted with ground-penetrating radar is depicted, employing a heuristic algorithm to estimate caverns behind the tested polymer composites. This study also presents results obtained through impedance spectroscopy, employed to characterize the delamination of polymer liners caused by uneven curing. A comparative analysis of these methods is conducted, assessing the accuracy by comparing the known positions of defects with their predicted characteristics based on laboratory measurements.

Anglický abstrakt

Sewage and water networks are crucial infrastructures of modern urban society. The uninterrupted functionality of these networks is paramount, necessitating regular maintenance and rehabilitation. In densely populated urban areas, trenchless methods, particularly those employing cured-in-place pipe technology, have emerged as the most cost-efficient approach for network rehabilitation. Common diagnostic methods for assessing pipe conditions, whether original or retrofitted with-cured-in-place pipes, typically include camera examination or laser scans, and are limited in material characterization. This study introduces three innovative methods for characterizing critical aspects of pipe conditions. The impact-echo method, ground-penetrating radar, and impedance spectroscopy address the challenges posed by polymer liners and offer enhanced accuracy in defect detection. These methods enable the characterization of delamination, identification of caverns behind cured-in-place pipes, and evaluation of overall pipe health. A machine learning algorithm using deep learning on images acquired from impact-echo signals using continuous wavelet transformation is presented to characterize defects. The aim is to compare traditional machine learning and deep learning methods to characterize selected pipe defects. The measurement conducted with ground-penetrating radar is depicted, employing a heuristic algorithm to estimate caverns behind the tested polymer composites. This study also presents results obtained through impedance spectroscopy, employed to characterize the delamination of polymer liners caused by uneven curing. A comparative analysis of these methods is conducted, assessing the accuracy by comparing the known positions of defects with their predicted characteristics based on laboratory measurements.

Klíčová slova

non-destructive testing; machine learning; retrofitting; cured-in-place pipes; polymers; pipe defects

Klíčová slova v angličtině

non-destructive testing; machine learning; retrofitting; cured-in-place pipes; polymers; pipe defects

Autoři

DVOŘÁK, R.; JAKUBKA, L.; TOPOLÁŘ, L.; RABENDA, M.; WIROWSKI, A.; PUCHÝŘ, J.; KUSÁK, I.; PAZDERA, L.

Rok RIV

2024

Vydáno

08.12.2023

Nakladatel

MDPI

Místo

Basel, Switzerland

ISSN

1996-1944

Periodikum

Materials

Svazek

16

Číslo

24

Stát

Švýcarská konfederace

Strany od

1

Strany do

31

Strany počet

31

URL

Plný text v Digitální knihovně

BibTex

@article{BUT185707,
  author="Richard {Dvořák} and Luboš {Jakubka} and Libor {Topolář} and Martyna {Rabenda} and Artur {Wirowski} and Jan {Puchýř} and Ivo {Kusák} and Luboš {Pazdera}",
  title="Non-Destructive Characterization of Cured-in-Place Pipe Defects",
  journal="Materials",
  year="2023",
  volume="16",
  number="24",
  pages="1--31",
  doi="10.3390/ma16247570",
  issn="1996-1944",
  url="https://www.mdpi.com/1996-1944/16/24/7570"
}

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