Optimization of Socks Production in South African Knitting Plant: A Cost-Effective Alternative to Industry 4.0

Authors

  • Kemlall Ramdass Department of Industrial Engineering, University of South Africa, UNISA Florida Campus. Roodepoort, Johannesburg, 1710, South Africa https://orcid.org/0000-0001-5480-3368
  • Isaac Olalere Department of Industrial Engineering, University of South Africa, UNISA Florida Campus. Roodepoort, Johannesburg, 1710, South Africa

DOI:

https://doi.org/10.12928/si.v23i2.303

Keywords:

Digital transformation, Industry 4.0, Mean time to failure, Reliability engineering, Textile industry

Abstract

The textile industry, particularly sock manufacturing, faces increasing demands for productivity and cost efficiency amid global competition. This study presents a comprehensive case study on optimizing sock production in a South African knitting plant as a cost-effective alternative to Industry 4.0 adoption. The Research aims to identify and address key factors contributing to low productivity by employing a data-driven approach integrating Six Sigma methodologies and simulation analysis. Production data revealed that frequent system failures caused significant stoppages, material waste, and reduced operational efficiency, with approximately 8% of production output lost to defective socks. Detailed analysis using Failure Mode and Effect Analysis (FMEA) and a cause–and–effect diagram identified machine- and material-related issues as the primary contributors to poor performance. A planned maintenance strategy was developed based on the Mean Time to Failure (MTTF) of major equipment, and its impact was simulated using Any Logic software. Simulation results demonstrated that implementing scheduled maintenance, reducing failure rates by 50%, could increase system availability to 91% and substantially decrease fabric waste. The novelty of this study lies in demonstrating an effective optimization strategy that avoids the high cost and implementation barriers of full Industry 4.0 integration while achieving comparable productivity gains. This simulation-based maintenance framework provides a practical, data-supported solution for enhancing efficiency, reliability, and competitiveness in conventional manufacturing systems. The findings suggest that similar textile plants can adopt this approach to achieve sustainable production improvements without undergoing complete digital transformation.

Author Biography

Kemlall Ramdass, Department of Industrial Engineering, University of South Africa, UNISA Florida Campus. Roodepoort, Johannesburg, 1710, South Africa

Prof. K. Ramdass Pr.Tech Eng. (FSAIIE)

Department of Industrial Engineering

UNISA Florida Campus. Roodepoort

GJ Gerwel Building. Room 3-061

Tel: +27 11 471 2117   Cell: +27  082 417 3545

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Published

2025-10-31

How to Cite

Ramdass, K., & Olalere, I. (2025). Optimization of Socks Production in South African Knitting Plant: A Cost-Effective Alternative to Industry 4.0. Spektrum Industri, 23(2), 205–224. https://doi.org/10.12928/si.v23i2.303

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Section

Industrial Management and Entrepreneurship