A high-throughput framework for pile-up correction in high-speed nanoindentation maps

Edoardo Rossi, Daniele Duranti, Saqib Rashid, Michal Zitek, Rostislav Daniel, Marco Sebastiani

Research output: Contribution to journalArticleResearchpeer-review

Abstract

Accurate mapping of mechanical properties across extensive areas in heterogeneous materials is essential for understanding phase-specific contributions to strength and hardness. High-speed nanoindentation mapping enables their x-y spatial mapping through a fast and dense grid of indents. However, accurate measurements are complicated by pile-up, the plastic displacement of material laterally and vertically around an indent, causing hardness and modulus overestimation, especially in materials with varying phase compliance. Traditional correction methods rely on time-consuming, localized Atomic Force Microscopy measurements, which are impractical for large-area mapping. This study presents a fast and semi-automated solution using High-speed nanoindentation mapping-induced surface roughness changes Sa, quantifiable by optical profilometry, with machine learning to correct pile-up over extensive areas selectively. By correlating these roughness changes with the Atomic Force Microscopy-measured pile-up height, we derived universal calibration functions for a wide range of bulk materials and thin films, validated through Finite Element Modeling. Applied to a benchmark cobalt-based, chromium-tungsten alloy, the method uses unsupervised clustering to identify piling-up phases in the cobalt matrix while excluding the hard carbides. This approach reduced the hardness and modulus errors by up to 7 %, uniquely enabling accurate phase-specific property mapping in high-speed nanoindentation, advancing the mechanical microscopy frontier.
Original languageEnglish
Article number113708
Number of pages18
JournalMaterials and Design
Volume251.2025
Issue numberMarch
DOIs
Publication statusPublished - 11 Feb 2025

Bibliographical note

Publisher Copyright:
© 2025 The Author(s)

Keywords

  • Machine learning
  • Mechanical property mapping
  • Nanoindentation
  • Pile-up

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