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Main Authors: Morán-Cortés, Jesús Israel, Pacheco-Vázquez, Felipe
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.15660
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author Morán-Cortés, Jesús Israel
Pacheco-Vázquez, Felipe
author_facet Morán-Cortés, Jesús Israel
Pacheco-Vázquez, Felipe
contents We introduce an optimized protocol of fracture pattern classification using an artificial neural network to identify the solvent involved in the desiccation cracking process of starch-liquid slurries, even after it has been completely evaporated. For this purpose, image analysis techniques were used to characterize patterns obtained from drying suspensions using single solvents (water, ethanol, acetone) and two-component solvents (water-ethanol mixtures at different concentrations). Frequency histograms were generated based on nine morphological features, taking into account their size, shape, geometry and orientational ordering. Subsequently, we used these histograms as input data into artificial neural network variants to determine the set of features that lead to the higher accuracy in solvent identification. We obtained an average accuracy of $96(\pm 1)\%$ considering all solvents in the analysis. The highest accuracy was obtained with sets of features that include the crack area distribution. The proposed protocol can help to determine the combination of features that optimize pattern recognition in other fields of science and engineering.
format Preprint
id arxiv_https___arxiv_org_abs_2603_15660
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Machine Learning Based Identification of Solvents from Post-Desiccation Patterns
Morán-Cortés, Jesús Israel
Pacheco-Vázquez, Felipe
Soft Condensed Matter
Machine Learning
Applied Physics
Computational Physics
Data Analysis, Statistics and Probability
We introduce an optimized protocol of fracture pattern classification using an artificial neural network to identify the solvent involved in the desiccation cracking process of starch-liquid slurries, even after it has been completely evaporated. For this purpose, image analysis techniques were used to characterize patterns obtained from drying suspensions using single solvents (water, ethanol, acetone) and two-component solvents (water-ethanol mixtures at different concentrations). Frequency histograms were generated based on nine morphological features, taking into account their size, shape, geometry and orientational ordering. Subsequently, we used these histograms as input data into artificial neural network variants to determine the set of features that lead to the higher accuracy in solvent identification. We obtained an average accuracy of $96(\pm 1)\%$ considering all solvents in the analysis. The highest accuracy was obtained with sets of features that include the crack area distribution. The proposed protocol can help to determine the combination of features that optimize pattern recognition in other fields of science and engineering.
title Machine Learning Based Identification of Solvents from Post-Desiccation Patterns
topic Soft Condensed Matter
Machine Learning
Applied Physics
Computational Physics
Data Analysis, Statistics and Probability
url https://arxiv.org/abs/2603.15660