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A Machine Learning Based Approach for Statistical Analysis of Detonation Cells from Soot Foils

Authors :
Sharma, Vansh
Ullman, Michael
Raman, Venkat
Publication Year :
2024

Abstract

This study presents a novel algorithm based on machine learning (ML) for the precise segmentation and measurement of detonation cells from soot foil images, addressing the limitations of manual and primitive edge detection methods prevalent in the field. Using advances in cellular biology segmentation models, the proposed algorithm is designed to accurately extract cellular patterns without a training procedure or dataset, which is a significant challenge in detonation research. The algorithm's performance was validated using a series of test cases that mimic experimental and numerical detonation studies. The results demonstrated consistent accuracy, with errors remaining within 10%, even in complex cases. The algorithm effectively captured key cell metrics such as cell area and span, revealing trends across different soot foil samples with uniform to highly irregular cellular structures. Although the model proved robust, challenges remain in segmenting and analyzing highly complex or irregular cellular patterns. This work highlights the broad applicability and potential of the algorithm to advance the understanding of detonation wave dynamics.<br />Comment: 23 pages, 12 figures, submitted to Comb. and Flame; v2 - added section

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.06466
Document Type :
Working Paper