Tech : Journal of Engineering Science
Vol 1 No 2 (2025): Inovasi dan Aplikasi Terbaru dalam Teknik dan Sains Terapan untuk Mendukung Produ

Design and Optimization of Sustainable Green Composites for High-Performance Applications

Chiedu Ezeanyim Okechukwu (Industrial/Production Engineering Department, Nnamdi Azikiwe University, Awka, Anambra State Nigeria.)
Charles Chikwendu Okpala (Industrial/Production Engineering Department, Nnamdi Azikiwe University, Awka, Anambra State Nigeria.)
Somto Kenneth Onukwuli (Department of Business Management, Accounting and Finance, University of Chester, England.)



Article Info

Publish Date
03 Dec 2025

Abstract

This study presents a data-driven framework for the design and optimization of next-generation sustainable green composites that are aimed at high-performance industrial applications. A hybrid dataset that comprises 180 experimental records of natural fiber-reinforced biopolymer composites was analyzed using Machine Learning (ML) algorithms, including Random Forest Regression (R² = 0.962), Artificial Neural Network (R² = 0.948), and Support Vector Regression (R² = 0.921). Feature importance analysis identified fiber volume fraction (38.5%), filler type (24.7%), and matrix viscosity (18.9%) as the most influential variables that govern tensile strength and biodegradability. Multi-objective optimization with the application of NSGA-II achieved a tensile strength of 127 MPa and biodegradability of 73%, which represent a 19.6% increase in mechanical performance and a 42% improvement in environmental compatibility when compared to conventional composites. Life-cycle assessment revealed significant sustainability advantages: embodied energy reduced by 33.8% (from 68 MJ/kg to 45 MJ/kg), carbon footprint lowered by 52% (from 2.5 kg CO₂-eq/kg to 1.2 kg CO₂-eq/kg), and end-of-life recyclability enhanced from 42% to 78%. Furthermore, the optimized composite achieved a processing temperature reduction of 21.4% and a 20.5% lower material cost. These results confirm that the integration of ML-driven prediction and optimization with green composite fabrication can accelerate sustainable materials development, reduce resource waste by up to 60%, and provide a replicable model for digital twin-assisted design. The proposed framework demonstrates clear potential for adoption in automotive, aerospace, and packaging sectors, where lightweight, recyclability, and environmental performance are critical.

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Journal Info

Abbrev

tech

Publisher

Subject

Automotive Engineering Chemical Engineering, Chemistry & Bioengineering Civil Engineering, Building, Construction & Architecture Electrical & Electronics Engineering Engineering

Description

Tech : Journal of Engineering Science (E-ISSN 3109-7790) is a journal published by Yayasan Penelitian dan Pengabdian Masyarakat Sisi Indonesia with the aim of developing research that focuses on the field of engineering. Focus and Scope: Civil and Infrastructure Engineering, Mechanical Engineering, ...