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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Materials Map under construction

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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Tampere University

in Cooperation with on an Cooperation-Score of 37%

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Publications (1/1 displayed)

  • 2020Machine learning depinning of dislocation pileups11citations

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Skaugen, Audun
1 / 2 shared
Laurson, Lasse
1 / 19 shared
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2020

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  • Skaugen, Audun
  • Laurson, Lasse
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article

Machine learning depinning of dislocation pileups

  • Skaugen, Audun
  • Sarvilahti, Mika
  • Laurson, Lasse
Abstract

We study a one-dimensional model of a dislocation pileup driven by an external stress and interacting with random quenched disorder, focusing on the predictability of the plastic deformation process. Upon quasistatically ramping up the externally applied stress from zero, the system responds by exhibiting an irregular stress-strain curve consisting of a sequence of strain bursts, i.e., critical-like dislocation avalanches. The strain bursts are power-law distributed up to a cutoff scale that increases with the stress level up to a critical flow stress value. There, the system undergoes a depinning phase transition and the dislocations start moving indefinitely, i.e., the strain burst size diverges. Using sample-specific information about the pinning landscape as well as the initial dislocation configuration as input, we employ predictive models such as linear regression, simple neural networks, and convolutional neural networks to study the predictability of the simulated stress-strain curves of individual samples. Our results show that the response of the system - including the flow stress value - can be predicted quite well, with the correlation coefficient between the predicted and actual stress exhibiting a non-monotonic dependence on strain. We also discuss our attempts to predict the individual strain bursts. ; Peer reviewed

Topics
  • polymer
  • phase
  • stress-strain curve
  • phase transition
  • dislocation
  • random
  • one-dimensional
  • machine learning