Energy-Efficient Prediction in Textile Manufacturing: Enhancing Accuracy and Data Efficiency With Ensemble Deep Transfer Learning
Yan-Chen Chen, Wei-Yu Chiu, Qun-Yu Wang, Jing-Wei Chen, and Hao-Ting Zhao

TL;DR
This paper introduces EDTL, a novel ensemble deep transfer learning framework that significantly improves prediction accuracy and data efficiency in textile manufacturing, reducing energy consumption and operational costs.
Contribution
The paper presents a new ensemble deep transfer learning method that enhances prediction accuracy and data efficiency in textile manufacturing, especially with limited data.
Findings
EDTL improves prediction accuracy by 5.66% over traditional DNNs.
EDTL increases model robustness by 3.96%.
Effective in scenarios with only 20-40% of the data.
Abstract
Traditional textile factories consume substantial energy, making energy-efficient production optimization crucial for sustainability and cost reduction. Meanwhile, deep neural networks (DNNs), which are effective for factory output prediction and operational optimization, require extensive historical data, posing challenges due to high sensor deployment and data collection costs. To address this, we propose Ensemble Deep Transfer Learning (EDTL), a novel framework that enhances prediction accuracy and data efficiency by integrating transfer learning with an ensemble strategy and a feature alignment layer. EDTL pretrains DNN models on data-rich production lines (source domain) and adapts them to data-limited lines (target domain), reducing dependency on large datasets. Experiments on real-world textile factory datasets show that EDTL improves prediction accuracy by 5.66% and enhances…
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