A neural network machine-learning approach for characterising hydrogen trapping parameters from TDS experiments
By: N. Marrani, T. Hageman, E. Martínez-Pañeda
Potential Business Impact:
Finds how much hydrogen metal can hold.
The hydrogen trapping behaviour of metallic alloys is generally characterised using Thermal Desorption Spectroscopy (TDS). However, as an indirect method, extracting key parameters (trap binding energies and densities) remains a significant challenge. To address these limitations, this work introduces a machine learning-based scheme for parameter identification from TDS spectra. A multi-Neural Network (NN) model is developed and trained exclusively on synthetic data to predict trapping parameters directly from experimental data. The model comprises two multi-layer, fully connected, feed-forward NNs trained with backpropagation. The first network (classification model) predicts the number of distinct trap types. The second network (regression model) then predicts the corresponding trap densities and binding energies. The NN architectures, hyperparameters, and data pre-processing were optimised to minimise the amount of training data. The proposed model demonstrated strong predictive capabilities when applied to three tempered martensitic steels of different compositions. The code developed is freely provided.
Similar Papers
Machine Learning for Improved Density Functional Theory Thermodynamics
Materials Science
Makes computer predictions of metal mixes more accurate.
Machine learning driven search of hydrogen storage materials
Materials Science
Finds better ways to store hydrogen fuel.
A Neural Network Approach to Multi-radionuclide TDCR Beta Spectroscopy
Machine Learning (CS)
AI helps measure radioactive stuff automatically.