Fast prediction of optimal reaction conditions and dyeing effects of natural dyes on silk fabrics by lightweight integrated learning (XGBoost) models

IF 2 4区 工程技术 Q3 CHEMISTRY, APPLIED
Jie Chen, Yuyang Lin, Ying Liu
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引用次数: 0

Abstract

There is a lot of repetitive work involved in exploring the dyeing performance of natural dyes. To improve the experimental efficiency, save material, reduce time costs and shorten the research cycle, this study collects and analyses the literature data of 350 natural dye experiments to construct the Natural Dyes Dataset, and achieves rapid prediction of the optimal reaction conditions and dyeing effects of natural dyes using a lightweight integrated learning model. The size of the trained XGBoost model is only 562 KB; only the name of the dye and its approximate chemical composition need to be input to predict the results of the reaction environment pH, colour fastness to washing (CFW) and colour fastness to rubbing (CFR) of the natural dye on silk fabrics with the highest K/S in a very short time of 52 ms. The prediction accuracies for pH, CFW and CFR in the validation set are as high as 94.12%, 93.75% and 100%, respectively, and 77.78%, 91.67% and 83.33% for the real test set, with both validity and transferability. The integrated learning approach provides valuable guidance for exploring the dyeing performance of natural dyes with very small deployment costs and a very short inference time, expanding the possibilities of cross‐application of the disciplines of machine learning and textile dyeing.
利用轻量级集成学习(XGBoost)模型快速预测丝织物上天然染料的最佳反应条件和染色效果
天然染料的染色性能探索涉及大量重复性工作。为了提高实验效率、节省材料、降低时间成本、缩短研究周期,本研究收集并分析了 350 个天然染料实验的文献数据,构建了天然染料数据集,并利用轻量级集成学习模型实现了对天然染料最佳反应条件和染色效果的快速预测。训练好的 XGBoost 模型大小仅为 562 KB,只需输入染料名称及其大致化学成分,即可在 52 ms 的极短时间内预测出 K/S 最高的天然染料在丝织物上的反应环境 pH 值、水洗色牢度(CFW)和摩擦色牢度(CFR)的结果。验证集的 pH 值、CFW 值和 CFR 值的预测准确率分别高达 94.12%、93.75% 和 100%,实际测试集的预测准确率分别为 77.78%、91.67% 和 83.33%,具有有效性和可移植性。该集成学习方法以极小的部署成本和极短的推理时间为天然染料染色性能的探索提供了宝贵的指导,拓展了机器学习与纺织品染色学科交叉应用的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Coloration Technology
Coloration Technology 工程技术-材料科学:纺织
CiteScore
3.60
自引率
11.10%
发文量
67
审稿时长
4 months
期刊介绍: The primary mission of Coloration Technology is to promote innovation and fundamental understanding in the science and technology of coloured materials by providing a medium for communication of peer-reviewed research papers of the highest quality. It is internationally recognised as a vehicle for the publication of theoretical and technological papers on the subjects allied to all aspects of coloration. Regular sections in the journal include reviews, original research and reports, feature articles, short communications and book reviews.
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