Polyolefin ductile-brittle transition temperature predictions by machine learning

Research output: Contribution to journalArticlepeer-review

Abstract

<p>Polymers show a transition from ductile-to brittle fracture behavior at decreasing temperatures. Consequently, the material toughness has to be determined across wide temperature ranges in order to determine the Ductile-Brittle Transition Temperature This usually necessitates multiple impact experiments. We present a machine-learning methodology for the prediction of DBTTs from single Instrumented Puncture Tests Our dataset consists of 7,587 IPTs that comprise 181 Polyethylene and Polypropylene compounds. Based on a combination of feature engineering and Principal Component Analysis, relevant information of instrumentation signals is extracted. The transformed data is explored by unsupervised machine learning algorithms and is used as input for Random Forest Regressors to predict DBTTs. The proposed methodology allows for fast screening of new materials. Additionally, it offers estimations of DBTTs without thermal specimen conditioning. Considering only IPTs tested at room temperature, predictions on the test set hold an average error of 5.3°C when compared to the experimentally determined DBTTs.</p>
Original languageEnglish
Article number1275640
Number of pages13
JournalFrontiers in Materials
Volume10
DOIs
Publication statusPublished - 2024

Fields of science

  • 205 Materials Engineering
  • 604008 Design
  • 205015 Composites
  • 211912 Product design
  • 104019 Polymer sciences

JKU Focus areas

  • Digital Transformation
  • Sustainable Development: Responsible Technologies and Management

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