Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (5/5 displayed)

  • 20243-Dimensional residual neural architecture search for ultrasonic defect detection5citations
  • 2023Application of eddy currents for inspection of carbon fibre compositescitations
  • 2023Using neural architecture search to discover a convolutional neural network to detect defects From volumetric ultrasonic testing data of compositescitations
  • 2022Transfer learning for classification of experimental ultrasonic non-destructive testing images from synthetic datacitations
  • 2022Automated bounding box annotation for NDT ultrasound defect detectioncitations

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Tunukovic, Vedran
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Mackinnon, Christopher
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Wathavana Vithanage, Randika Kosala
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Mohseni, Ehsan
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Mcknight, Shaun
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Co-Authors (by relevance)

  • Tunukovic, Vedran
  • Mackinnon, Christopher
  • Wathavana Vithanage, Randika Kosala
  • Mohseni, Ehsan
  • Mcknight, Shaun
  • Macleod, Charles N.
  • Pierce, Stephen
  • Munro, Gavin
  • Burnham, Kenneth Charles
  • Foster, Euan
  • Dobie, Gordon
  • Lawley, Alistair
OrganizationsLocationPeople

document

Using neural architecture search to discover a convolutional neural network to detect defects From volumetric ultrasonic testing data of composites

  • Tunukovic, Vedran
  • Mackinnon, Christopher
  • Ohare, Tom
  • Mohseni, Ehsan
  • Mcknight, Shaun
  • Macleod, Charles N.
  • Pierce, Stephen
Abstract

Carbon Fiber Reinforced Polymers (CFRPs) are increasingly employed in both civilian and military aerospace industries due to their exceptional physical properties, such as high specific strength and corrosion resistance. However, the growing utilization of composite components necessitates extensive Non-Destructive Testing (NDT) inspections during the manufacturing process, with ultrasonic testing (UT) being the most commonly employed method. While the deployment of phased array probes can be automated using robotic inspection techniques [1], it results in the generation of substantial amounts of data. Despite advancements, the interpretation of this data remains primarily reliant on skilled operators in industrial settings. Automating this testing process poses significant challenges and the manual interpretation of data can become a major bottleneck for large-scale manufacturing. This manual interpretation process is not only time-consuming but also introduces the potential for human errors. Deep Learning methods offer an exciting possibility to help address the automated interpretation of NDT data interpretation. The scarcity of reliable training data in NDT poses significant challenges when it comes to training and testing Deep Learning (DL) algorithms. Despite this limitation, there has been a growing body of research exploring the use of DL for Ultrasonic Testing (UT) in NDT, particularly in the automated detection and characterization of defects [2]. These studies typically work with B or C scan images. The former sacrifices spatial information about the defect, while the latter retains spatial information but compresses the acoustic response data and requires manual pre-processing to remove the front and back wall responses. Unfortunately, this pre-processing step eliminates useful features, as the absence of backwall data can also lead to missed defect indications. This work presents a novel method for automated inspection of full volumetric ultrasonic data using 3D-CNNs. The method reduces the need for manual processing (such as gating) by detecting and classifying full ultrasonic volumetric data. The proposed research contributes a new technique for generating full volumetric synthetic UT data, allowing for training of a 3D-CNN with vastly reduced pre-processing. In addition, the use of domain specific augmentation methods for training which significantly increase classification performance by 22.4% are introduced. A Neural Architecture Search is performed on a ResNet based search space that was modified to account for 3D volumetric data. The resulting model showed impressive classification results when trained on augmented synthetic data and tested on data experimentally gathered from manufactured defects. The model successfully detected all back drilled hole defects, which ranged in diameter from 3 mm to 9 mm. References: [1] AIP Conference Proceedings, vol. 1806, no. 1, p. 020026, Feb. 2017 [2] NDT and E International, Article number. 102703, Volume 131, 20 Jul 2022

Topics
  • impedance spectroscopy
  • polymer
  • Carbon
  • corrosion
  • strength
  • composite
  • defect
  • ultrasonic