A Case Study Applying Mesoscience to Deep Learning

IF 10.1 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
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引用次数: 0

Abstract

In this paper, we propose mesoscience-guided deep learning (MGDL), a deep learning modeling approach guided by mesoscience, to study complex systems. When establishing sample dataset based on the same system evolution data, different from the operation of conventional deep learning method, MGDL introduces the treatment of the dominant mechanisms of complex system and interactions between them according to the principle of compromise in competition (CIC) in mesoscience. Mesoscience constraints are then integrated into the loss function to guide the deep learning training. Two methods are proposed for the addition of mesoscience constraints. The physical interpretability of the model-training process is improved by MGDL because guidance and constraints based on physical principles are provided. MGDL was evaluated using a bubbling bed modeling case and compared with traditional techniques. With a much smaller training dataset, the results indicate that mesoscience-constraint-based model training has distinct advantages in terms of convergence stability and prediction accuracy, and it can be widely applied to various neural network configurations. The MGDL approach proposed in this paper is a novel method for utilizing the physical background information during deep learning model training. Further exploration of MGDL will be continued in the future.

将中间科学应用于深度学习的案例研究
本文提出了一种以中间科学为指导的深度学习建模方法--中间科学指导的深度学习(MGDL)来研究复杂系统。在建立基于同一系统演化数据的样本数据集时,与传统深度学习方法的操作不同,MGDL根据中观科学中的竞争折中(CIC)原理,引入了对复杂系统主导机制和它们之间相互作用的处理。然后将中观科学约束纳入损失函数,以指导深度学习训练。本文提出了两种添加中间科学约束的方法。由于提供了基于物理原理的指导和约束,MGDL 提高了模型训练过程的物理可解释性。利用气泡床建模案例对 MGDL 进行了评估,并与传统技术进行了比较。结果表明,在训练数据集更小的情况下,基于介观约束的模型训练在收敛稳定性和预测准确性方面具有明显优势,可广泛应用于各种神经网络配置。本文提出的 MGDL 方法是一种在深度学习模型训练过程中利用物理背景信息的新方法。未来将继续对 MGDL 进行深入探索。
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来源期刊
Engineering
Engineering Environmental Science-Environmental Engineering
自引率
1.60%
发文量
335
审稿时长
35 days
期刊介绍: Engineering, an international open-access journal initiated by the Chinese Academy of Engineering (CAE) in 2015, serves as a distinguished platform for disseminating cutting-edge advancements in engineering R&D, sharing major research outputs, and highlighting key achievements worldwide. The journal's objectives encompass reporting progress in engineering science, fostering discussions on hot topics, addressing areas of interest, challenges, and prospects in engineering development, while considering human and environmental well-being and ethics in engineering. It aims to inspire breakthroughs and innovations with profound economic and social significance, propelling them to advanced international standards and transforming them into a new productive force. Ultimately, this endeavor seeks to bring about positive changes globally, benefit humanity, and shape a new future.
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