以二氧化碳为原料合成聚碳酸酯的人工智能洞察力:数据库建设及其他

IF 4.7 3区 工程技术 Q1 POLYMER SCIENCE
Polymers Pub Date : 2024-10-19 DOI:10.3390/polym16202936
Aritz D Martinez, Adriana Navajas-Guerrero, Harbil Bediaga-Bañeres, Julia Sánchez-Bodón, Pablo Ortiz, Jose Luis Vilas-Vilela, Isabel Moreno-Benitez, Sergio Gil-Lopez
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引用次数: 0

摘要

材料科学的最新进展引起了研究界的极大关注。在过去的十年中,人们一直致力于探索开发新材料的创新方法。这些努力包括改进现有产品或工艺,以及设计新型材料。其中尤为重要的是通过环氧化物与二氧化碳的共聚合成特定聚合物。然而,在这一化学过程中出现了一些不确定因素,包括与成功聚合有关的挑战和所产生材料的特性。这些不确定性使得新聚合物的设计成为一项反复试验的工作,往往会导致失败的结果,由于试验不成功,需要投入大量的财力、人力和时间。人工智能(AI)是一种很有前途的技术,可以在实验阶段减少这些弊端。然而,高质量数据的可用性仍然至关重要,这对聚合物材料提出了特别的挑战,主要是因为聚合物的随机性阻碍了它们的均匀表征,而且它们的特性在加工过程中也会发生变化。在本研究中,描述了第一个将环氧共聚单体的结构、所使用的催化剂以及聚合反应的实验条件与反应成功与否联系起来的数据集。介绍了一种基于 ML 的新型分析管道,以有效利用所构建的数据库。初步结果强调了解决维度问题的重要性。所提议的分析管道可推断出分子量、多分散指数和转化率,其结果表明所有目标参数的调整值都很有希望。最佳结果以所有三个目标值的实际值和预测值之间的(确定系数)R2 来衡量。建议的最佳解决方案在分子量、多分散指数和转化率方面的 R2 分别为 0.79、0.86 和 0.93。建议的分析管道是自动化的(包括用于 ML 模型超参数调整的 AutoML 技术),可随着数据库的增长而轻松扩展,为未来的研究奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Driven Insight into Polycarbonate Synthesis from CO2: Database Construction and Beyond.

Recent advancements in materials science have garnered significant attention within the research community. Over the past decade, substantial efforts have been directed towards the exploration of innovative methodologies for developing new materials. These efforts encompass enhancements to existing products or processes and the design of novel materials. Of particular significance is the synthesis of specific polymers through the copolymerization of epoxides with CO2. However, several uncertainties emerge in this chemical process, including challenges associated with successful polymerization and the properties of the resulting materials. These uncertainties render the design of new polymers a trial-and-error endeavor, often resulting in failed outcomes that entail significant financial, human resource, and time investments due to unsuccessful experimentation. Artificial Intelligence (AI) emerges as a promising technology to mitigate these drawbacks during the experimental phase. Nonetheless, the availability of high-quality data remains crucial, posing particular challenges in the context of polymeric materials, mainly because of the stochastic nature of polymers, which impedes their homogeneous representation, and the variation in their properties based on their processing. In this study, the first dataset linking the structure of the epoxy comonomer, the catalyst employed, and the experimental conditions of polymerization to the reaction's success is described. A novel analytical pipeline based on ML to effectively exploit the constructed database is introduced. The initial results underscore the importance of addressing the dimensionality problem. The outcomes derived from the proposed analytical pipeline, which infer the molecular weight, polydispersity index, and conversion rate, demonstrate promising adjustment values for all target parameters. The best results are measured in terms of the (Determination Coefficient) R2 between real and predicted values for all three target magnitudes. The best proposed solution provides a R2 equal to 0.79, 0.86, and 0.93 for the molecular weight, polydispersity index, and conversion rate, respectively. The proposed analytical pipeline is automatized (including AutoML techniques for ML models hyperparameter tuning), allowing easy scalability as the database grows, laying the foundation for future research.

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来源期刊
Polymers
Polymers POLYMER SCIENCE-
CiteScore
8.00
自引率
16.00%
发文量
4697
审稿时长
1.3 months
期刊介绍: Polymers (ISSN 2073-4360) is an international, open access journal of polymer science. It publishes research papers, short communications and review papers. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Polymers provides an interdisciplinary forum for publishing papers which advance the fields of (i) polymerization methods, (ii) theory, simulation, and modeling, (iii) understanding of new physical phenomena, (iv) advances in characterization techniques, and (v) harnessing of self-assembly and biological strategies for producing complex multifunctional structures.
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