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English(EN) Hybrid Neural Ordinary Differential Equations for Data-Efficient Polymerization Modeling with Incomplete Kinetics

混合NODE模型以更少数据改进聚合预测

研究人员开发了一个混合神经常微分方程(NODE)框架,以提高聚合过程建模中的数据效率。该方法结合了显式机理模型和用于学习未知动力学项的神经网络代理,并专门针对甲基丙烯酸甲酯聚合进行了测试。与纯数据驱动模型相比,混合NODE在有限数据训练下,展现出显著更低的预测误差和更好的外推能力。 AI

影响 这种混合建模方法有望在化学工程领域实现更准确、更高效的工艺设计和控制,同时减少数据需求。

排序理由 该集群包含一篇详细介绍新建模框架的研究论文。

在 arXiv cs.LG 阅读 →

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报道来源 [2]

  1. arXiv cs.LG TIER_1 English(EN) · Marah Almanasreh, Alexander Mitsos, Eike Cramer ·

    Hybrid Neural Ordinary Differential Equations for Data-Efficient Polymerization Modeling with Incomplete Kinetics

    arXiv:2606.02145v1 Announce Type: new Abstract: Accurate prediction of polymerization dynamics is essential for process design, control, and optimization. Yet, purely mechanistic models require labor-intensive parameterization of partially characterized kinetics, while purely dat…

  2. arXiv cs.LG TIER_1 English(EN) · Eike Cramer ·

    Hybrid Neural Ordinary Differential Equations for Data-Efficient Polymerization Modeling with Incomplete Kinetics

    Accurate prediction of polymerization dynamics is essential for process design, control, and optimization. Yet, purely mechanistic models require labor-intensive parameterization of partially characterized kinetics, while purely data-driven models demand large, diverse datasets t…