混合建模方法的回顾与展望

IF 3 Q2 ENGINEERING, CHEMICAL
Artur M. Schweidtmann, Dongda Zhang, Moritz von Stosch
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引用次数: 0

摘要

所谓混合建模,是指参数模型(通常来自系统知识)与非参数模型(通常来自数据推导)的结合。尽管经过 20 多年的研究,发表了 150 多篇科学论文(Agharafeie 等人,2023 年),最近还出现了一些有关这一主题的工业应用,但混合建模的能力似乎经常被低估、误解,并被其他学科视为 "只是简单地组合了一些模型",或者根本没有引起人们的注意。事实上,混合建模可能成为各研究领域和工业领域的一项使能技术,如系统和合成生物学、个性化医学、材料设计或流程工业。因此,有必要对混合模型的特性进行系统研究,以充分挖掘机器学习的潜力,减少实验工作量,增加模型能够可靠预测的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review and perspective on hybrid modeling methodologies

The term hybrid modeling refers to the combination of parametric models (typically derived from knowledge about the system) and nonparametric models (typically deduced from data). Despite more than 20 years of research, over 150 scientific publications (Agharafeie et al., 2023), and some recent industrial applications on this topic, the capabilities of hybrid models often seem underrated, misunderstood, and disregarded by other disciplines as “simply combining some models” or maybe it has gone unnoticed at all. In fact, hybrid modeling could become an enabling technology in various areas of research and industry, such as systems and synthetic biology, personalized medicine, material design, or the process industries. Thus, a systematic investigation of the hybrid model properties is warranted to scoop the full potential of machine learning, reduce experimental effort, and increase the domain in which models can predict reliably.

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