Back to Search Start Over

Boosting Inter-ply Fracture Toughness Data on Carbon Nanotube-Engineered Carbon Composites for Prognostics

Authors :
Sunil C. Joshi
School of Mechanical and Aerospace Engineering
Source :
Journal of Composites Science; Volume 4; Issue 4; Pages: 170
Publication Year :
2020
Publisher :
MDPI AG, 2020.

Abstract

In order to build predictive analytic for engineering materials, large data is required for machine learning (ML). Gathering such a data can be demanding due to the challenges involved in producing specialty specimen and conducting ample experiments. Additionally, numerical simulations require efforts. Smaller datasets are still viable, however, they need to be boosted systematically for ML. A newly developed, knowledge-based data boosting (KBDB) process, named COMPOSITES, helps in logically enhancing the dataset size without further experimentation or detailed simulation. This process and its successful usage are discussed in this paper, using a combination of mode-I and mode-II inter-ply fracture toughness (IPFT) data on carbon nanotube (CNT) engineered carbon fiber reinforced polymer (CFRP) composites. The amount of CNT added to strengthen the mid-ply interface of CFRP vs the improvement in IPFT is studied. A simpler way of combining mode-I and mode-II values of IPFT to predict delamination resistance is presented. Every step of the 10-step KBDB process, its significance and implementation are explained and the results presented. The KBDB helped in not only adding a number of data points reliably, but also in finding boundaries and limitations of the augmented dataset. Such an authentically boosted dataset is vital for successful ML. Published version

Details

ISSN :
2504477X
Volume :
4
Database :
OpenAIRE
Journal :
Journal of Composites Science
Accession number :
edsair.doi.dedup.....f9194cae27d92879624f082699b91a05
Full Text :
https://doi.org/10.3390/jcs4040170