A platform for research: civil engineering, architecture and urbanism
Linking structure and process in dendritic growth using persistent homology with energy analysis
We present a material analysis method that links structure and process in dendritic growth using explainable machine learning approaches. We employed persistent homology (PH) to quantitatively characterize the morphology of dendritic microstructures. By using interpretable machine learning with energy analysis, we established a robust relationship between structural features and Gibbs free energy. Through a detailed analysis of how Gibbs free energy evolves with morphological changes in dendrites, we uncovered specific conditions that influence the branching of dendritic structures. Moreover, energy gradient analysis based on morphological feature provides a deeper understanding of the branching mechanisms and offers a pathway to optimize thin-film growth processes. Integrating topology and free energy enables the optimization of a range of materials from fundamental research to practical applications.
Linking structure and process in dendritic growth using persistent homology with energy analysis
We present a material analysis method that links structure and process in dendritic growth using explainable machine learning approaches. We employed persistent homology (PH) to quantitatively characterize the morphology of dendritic microstructures. By using interpretable machine learning with energy analysis, we established a robust relationship between structural features and Gibbs free energy. Through a detailed analysis of how Gibbs free energy evolves with morphological changes in dendrites, we uncovered specific conditions that influence the branching of dendritic structures. Moreover, energy gradient analysis based on morphological feature provides a deeper understanding of the branching mechanisms and offers a pathway to optimize thin-film growth processes. Integrating topology and free energy enables the optimization of a range of materials from fundamental research to practical applications.
Linking structure and process in dendritic growth using persistent homology with energy analysis
Misato Tone (author) / Shunsuke Sato (author) / Sotaro Kunii (author) / Ippei Obayashi (author) / Yasuaki Hiraoka (author) / Yui Ogawa (author) / Hirokazu Fukidome (author) / Alexandre Lira Foggiatto (author) / Chiharu Mitsumata (author) / Ryunsuke Nagaoka (author)
2025
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
Persistent homology analysis of protein structure, flexibility, and folding
British Library Online Contents | 2014
|Unsupervised space–time clustering using persistent homology
Wiley | 2019
|Microstructure evolution of Solid Oxide Fuel Cell anodes characterized by persistent homology
DOAJ | 2023
|Growth of dendritic bismuth microspheres by solution-phase process
British Library Online Contents | 2007
|British Library Online Contents | 2018
|