将强化学习应用于染色工艺以减少残留染料

IF 5.3 3区 工程技术 Q1 ENGINEERING, MANUFACTURING
Whan Lee, Seyed Mohammad Mehdi Sajadieh, Hye Kyung Choi, Jisoo Park, Sang Do Noh
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引用次数: 0

摘要

可持续发展已成为制造业的一个突出主题,其重点是优化工艺配置,以实现环保和经济可行的运营。特别是纺织染整业,由于其大量的用水量和随之产生的废水,引起了人们的特别关注。此外,纺织废水中的染料残留物含有多种化学物质,对环境污染构成严重威胁。因此,迫切需要有效的决策工具来减少染料残留。在本研究中,我们介绍了一种基于强化学习的模型,用于预测纺织染整行业的废物排放,并推荐染色工艺变量,以最大限度地减少此类废物。利用从实际生产设施中收集到的生产数据,我们构建了一个用于废物预测的梯度提升模型,并开发了一个基于 Q-learning 的工艺变量推荐模型,用于减少染料残留。该推荐模型的 R 值为 0.96,显示出很高的预测性能,通过工艺配置推荐,平均减少了 66.58% 的染料残留量。通过收集现场信息和实验,这些结果得到了验证。这项研究提出了一种创新方法,可有效预测和减少染色加工业产生的残留染料。然而,所开发的染色工艺推荐模型的局限性在于,它仅在 124 种配方中的两种配方上进行了测试,因此要推广该模型的性能具有挑战性。需要更多的训练数据。这些事实表明,如果在今后的研究中加以解决,改进后的模型可以克服实际限制,并有助于改善未来决策的前景。预计这些进步将加强染色和加工行业的可持续性,促进环保型运营,为可持续发展的未来做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of Reinforcement Learning to Dyeing Processes for Residual Dye Reduction

Application of Reinforcement Learning to Dyeing Processes for Residual Dye Reduction

Sustainability has become a prominent theme in the manufacturing industry, with an emphasis on optimal process configurations that enable environmentally friendly and economically viable operations. Particularly, the textile dyeing and finishing industry has garnered special attention due to its substantial water consumption and consequential wastewater generation. Moreover, dye residues in textile wastewater contain a multitude of chemical substances, posing a serious threat to environmental pollution. Therefore, there is a pressing need for effective decision-making tools to reduce dye residues. In this study, we introduce a reinforcement learning-based model to predict waste discharge in the textile dyeing and finishing industry and recommend dyeing process variables to minimize such waste. Leveraging manufacturing data collected from real production facilities, we constructed a Gradient Boosting model for waste prediction and developed a Q-learning-based process variables recommendation model for dye residue reduction. The recommendation model demonstrated high predictive performance with an R-value of 0.96, and through process configuration recommendations, achieved an average reduction of 66.58% in dye residue. These results have been validated through the collection of on-site information and experiments. This study proposes an innovative approach to effectively predict and reduce residual dyes generated in the dyeing and processing industry. However, a limitation of the developed dyeing process recommendation model is that it was tested on only two out of 124 formulations, making it challenging to generalize the model's performance. More extensive training data is necessary. These facts suggest that, if addressed in future research, improvements can overcome practical constraints and contribute to enhancing the prospects for future decision-making. It is anticipated that such advancements will strengthen the sustainability of the dyeing and processing industry, fostering environmentally friendly operations and contributing to a sustainable future.

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来源期刊
CiteScore
10.30
自引率
9.50%
发文量
65
审稿时长
5.3 months
期刊介绍: Green Technology aspects of precision engineering and manufacturing are becoming ever more important in current and future technologies. New knowledge in this field will aid in the advancement of various technologies that are needed to gain industrial competitiveness. To this end IJPEM - Green Technology aims to disseminate relevant developments and applied research works of high quality to the international community through efficient and rapid publication. IJPEM - Green Technology covers novel research contributions in all aspects of "Green" precision engineering and manufacturing.
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