SPMTRL-SCILGNov 25, 2024

Deciphering Acoustic Emission with Machine Learning

arXiv:2411.17755v11 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work addresses a specific challenge in materials science for researchers studying avalanche-like events, offering a novel method but with incremental improvements in prediction accuracy.

The authors tackled the problem of inferring microscopic details of dislocation avalanches from acoustic emission data in micropillar compression tests, achieving outstanding prediction of avalanche temporal locations and magnitudes.

Acoustic emission signals have been shown to accompany avalanche-like events in materials, such as dislocation avalanches in crystalline solids, collapse of voids in porous matter or domain wall movement in ferroics. The data provided by acoustic emission measurements is tremendously rich, but it is rather challenging to precisely connect it to the characteristics of the triggering avalanche. In our work we propose a machine learning based method with which one can infer microscopic details of dislocation avalanches in micropillar compression tests from merely acoustic emission data. As it is demonstrated in the paper, this approach is suitable for the prediction of the force-time response as it can provide outstanding prediction for the temporal location of avalanches and can also predict the magnitude of individual deformation events. Various descriptors (including frequency dependent and independent ones) are utilised in our machine learning approach and their importance in the prediction is analysed. The transferability of the method to other specimen sizes is also demonstrated and the possible application in more generic settings is discussed.

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