Reduction of greenhouse gas emissions by optimizing the textile dyeing process using digital twin technology

Author:

Kim Minsuk,Shim Jae Yun,Lim Seungju,Lee Heedong,Kwon Soon Chul,Hong Seokil,Ryu SujinORCID

Abstract

AbstractOwing to global warming and pollution concerns, reducing the environmental footprint of the textile and fashion industry has received considerable attention. Within this industry, the dyeing and finishing processes contribute significantly to greenhouse gas emissions and water pollution. This study introduces an innovative approach to address these challenges by leveraging digital twin technology to optimize the textile dyeing process. A smart analysis module was developed to continuously monitor and analyze the dyeing parameters in real time to implement control actions to automatically reduce the process duration. Integrated with this module, a digital twin of the dyeing machine enabled the real-time monitoring of energy consumption and process parameters. A case study comparing the traditional dyeing process with the optimized process was conducted. The results showed that dyeing time was reduced by ~ 17.5% without compromising dyeing quality. Energy consumption and greenhouse gas emissions were also reduced by ~ 12.1% when using the optimized process. This study offers a practical and sustainable option for textile dyeing, particularly for small and medium-sized enterprises.

Funder

Korea Institute of Industrial Technology

Publisher

Springer Science and Business Media LLC

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