使用遮蔽代理的强化学习方法设计化学工艺流程表

IF 3.5 3区 工程技术 Q2 ENGINEERING, CHEMICAL
AIChE Journal Pub Date : 2024-08-30 DOI:10.1002/aic.18584
Simone Reynoso‐Donzelli, Luis Alberto Ricardez‐Sandoval
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引用次数: 0

摘要

本研究介绍了两种用于设计和优化化学工艺流程表(CPF)的新型强化学习(RL)代理:离散掩蔽近端策略优化(mPPO)和混合掩蔽近端策略优化(mHPPO)。这项工作的新颖之处在于在混合框架中使用了掩蔽技术,即纳入专家输入或设计规则,从而将行动排除在代理的决策范围之外。这项工作有别于其他工作,它在仿真环境中无缝集成了遮蔽代理和严格的单元操作(UOs)模型,即先进的热力学和守恒平衡方程,以设计和优化 CPF。通过案例研究,包括使用 ASPEN Plus® 等化学工程模拟器的案例研究,对这些代理的功效以及性能比较进行了评估。这些案例研究的结果表明了代理的学习能力,即代理能够找到可行的工艺流程设计,满足规定的工艺流程设计要求,例如达到用户定义的产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A reinforcement learning approach with masked agents for chemical process flowsheet design
This study introduces two novel Reinforcement Learning (RL) agents for the design and optimization of chemical process flowsheets (CPFs): a discrete masked Proximal Policy Optimization (mPPO) and a hybrid masked Proximal Policy Optimization (mHPPO). The novelty of this work lies in the use of masking within the hybrid framework, i.e., the incorporation of expert input or design rules that allows the exclusion of actions from the agent's decision spectrum. This work distinguishes from others by seamlessly integrating masked agents with rigorous unit operations (UOs) models, that is, advanced thermodynamic and conservation balance equations, in its simulation environment to design and optimize CPF. The efficacy of these agents, along with performance comparisons, is evaluated through case studies, including one that employs a chemical engineering simulator such as ASPEN Plus®. The results of these case studies reveal learning on the part of the agents, that is, the agent is able to find viable flowsheet designs that meet the stipulated process flowsheet design requirements, for example, achieve a user‐defined product quality.
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来源期刊
AIChE Journal
AIChE Journal 工程技术-工程:化工
CiteScore
7.10
自引率
10.80%
发文量
411
审稿时长
3.6 months
期刊介绍: The AIChE Journal is the premier research monthly in chemical engineering and related fields. This peer-reviewed and broad-based journal reports on the most important and latest technological advances in core areas of chemical engineering as well as in other relevant engineering disciplines. To keep abreast with the progressive outlook of the profession, the Journal has been expanding the scope of its editorial contents to include such fast developing areas as biotechnology, electrochemical engineering, and environmental engineering. The AIChE Journal is indeed the global communications vehicle for the world-renowned researchers to exchange top-notch research findings with one another. Subscribing to the AIChE Journal is like having immediate access to nine topical journals in the field. Articles are categorized according to the following topical areas: Biomolecular Engineering, Bioengineering, Biochemicals, Biofuels, and Food Inorganic Materials: Synthesis and Processing Particle Technology and Fluidization Process Systems Engineering Reaction Engineering, Kinetics and Catalysis Separations: Materials, Devices and Processes Soft Materials: Synthesis, Processing and Products Thermodynamics and Molecular-Scale Phenomena Transport Phenomena and Fluid Mechanics.
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