化学端口-哈密顿系统贝叶斯优化的物理引导迁移学习

IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Negareh Mahboubi, Junyao Xie, Biao Huang
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引用次数: 0

摘要

贝叶斯优化(BO)作为复杂系统的一种强大的黑盒优化方法,通过高斯过程(GP)模型进行顺序决策来探索复杂的搜索空间。然而,传统的BO在应用于化学系统优化时面临着一定的挑战,特别是在有限的测量数据和物理约束下。本文提出了一种将迁移学习与物理信息GP相结合的自适应框架,以提高BO在化工过程优化中的性能。该方法通过高斯过程端口-哈密顿系统(GP-PHS)在点对点迁移学习方法中结合基于物理的先验,在满足物理约束的情况下动态地利用相关源域的知识。该框架的有效性在三个化学系统中得到了验证,包括水箱、电化学电池和等温连续搅拌槽反应器(CSTR)。结果表明,与传统的BO方法相比,优化精度和收敛速度都有所提高。该方法弥合了数据驱动优化与物理原理之间的差距,为数据稀缺条件下的复杂化工系统优化提供了一个可靠的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physics-guided transfer learning for Bayesian optimization of chemical port-Hamiltonian systems
Bayesian optimization (BO) has emerged as a powerful black-box optimization approach for complex systems, making sequential decisions through Gaussian process (GP) models to explore complex search spaces. However, conventional BO faces certain challenges when applies to optimizations of chemical systems, particularly with limited measurement data and physical constraints. This paper proposes an adaptive framework combining transfer learning with physics-informed GP to enhance BO performance for chemical process optimization. By incorporating physics-based priors through Gaussian Process Port-Hamiltonian Systems (GP-PHS) in the point-by-point transfer learning methodology, the proposed approach dynamically leverages knowledge from related source domains while satisfying physical constrains. The framework’s effectiveness is demonstrated across three chemical systems including a water tank, an electrochemical cell, and an isothermal continuous stirred tank reactor (CSTR). Results show improvements in both optimization accuracy and convergence speed compared to traditional BO methods. This proposed approach bridges the gap between data-driven optimization and physical principles, offering a robust solution for complex chemical system optimization under data scarcity.
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来源期刊
Computers & Chemical Engineering
Computers & Chemical Engineering 工程技术-工程:化工
CiteScore
8.70
自引率
14.00%
发文量
374
审稿时长
70 days
期刊介绍: Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.
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