Composites - Part A: Applied Science and Manufacturing, volume 185, pages 108324
Study on the composition-property relationships of basalt fibers based on symbolic regression and physics-informed neural network
Xiaomeng Wang
1
,
Qianhua Kan
1
,
M. Petrů
2
,
Kang Gao
1
Publication type: Journal Article
Publication date: 2024-10-01
scimago Q1
SJR: 1.688
CiteScore: 15.2
Impact factor: 8.1
ISSN: 1359835X, 18785840
Abstract
Despite the known influence of chemical composition on the mechanical properties of basalt fibers, a clear understanding of this relationship is lacking. Chemical composition analysis and mechanical property tests are performed on basalt fiber samples. Test data is collected from various countries and regions to expand the dataset. An improved Physics-Informed Neural Network (PINN) approach is specifically designed to address the complexities of this relationship. By incorporating physical models like the Makishima-Mackenzie model, Rocherulle model and a symbolic regression formula, the PINN leverages established physical principles to enhance its ability to understand the underlying mechanisms governing the influence of chemical composition on mechanical properties. This focus on physical mechanisms not only improves the interpretability of the model but also empowers it to make accurate predictions, as evidenced by the high squared correlation coefficients of 0.8767 and 0.8145 between predicted and experimental values of modulus and strength, respectively.
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