An Unconventional Approach for Analyzing the Mechanical Properties of Natural Fiber Composite Using Convolutional Neural Network

Ramkumar, Govindaraj and Sahoo, Satyajeet and Anitha, G. and Ramesh, S. and Nirmala, P. and Tamilselvi, M. and Subbiah, Ram and Rajkumar, S. and M, Ravichandran (2021) An Unconventional Approach for Analyzing the Mechanical Properties of Natural Fiber Composite Using Convolutional Neural Network. Advances in Materials Science and Engineering, 2021. pp. 1-15. ISSN 1687-8434

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Abstract

Over the past few years, natural fiber composites have been a strategy of rapid growth. The computational methods have become a significant tool for many researchers to design and analyze the mechanical properties of these composites. The mechanical properties such as rigidity, effects, bending, and tensile testing are carried out on natural fiber composites. The natural fiber composites were modeled by using some of the computation techniques. The developed convolutional neural network (CNN) is used to accurately predict the mechanical properties of these composites. The ground-truth information is used for the training process attained from the finite element analyses below the plane stress statement. After completion of the training process, the developed design is authorized using the invisible data through the training. The optimum microstructural model is identified by a developed model embedded with a genetic algorithm (GA) optimizer. The optimizer converges to conformations with highly enhanced properties. The GA optimizer is used to improve the mechanical properties to have the soft elements in the area adjacent to the tip of the crack.

Item Type: Article
Subjects: Open Asian Library > Engineering
Depositing User: Unnamed user with email support@openasianlibrary.com
Date Deposited: 30 Jan 2023 10:09
Last Modified: 28 Oct 2024 08:18
URI: http://publications.eprintglobalarchived.com/id/eprint/102

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