论文标题
通过分层增强学习和图形神经网络的流程表合成
Flowsheet synthesis through hierarchical reinforcement learning and graph neural networks
论文作者
论文摘要
过程合成经历了数字化和人工智能加速的破坏性转换。我们提出了一种基于最先进的演员批评逻辑的化学过程设计的增强学习算法。我们提出的算法表示化学过程作为图形,并使用图形卷积神经网络从过程图中学习。特别是,图形神经网络是在代理体系结构中实现的,以处理状态并做出决策。此外,我们实施了层次结构和混合决策过程来生成流程表,在该过程中,将单位操作作为离散决策进行迭代放置,并选择相应的设计变量作为连续决策。我们证明了我们的方法在包括平衡反应,共济型分离和回收的一个说明性案例研究中设计经济可行的流程表的潜力。结果显示在离散,连续和混合动作空间中快速学习。由于拟议的增强学习代理的灵活体系结构,该方法被预定为包括大型动作状态空间和在未来研究中处理模拟器的接口。
Process synthesis experiences a disruptive transformation accelerated by digitization and artificial intelligence. We propose a reinforcement learning algorithm for chemical process design based on a state-of-the-art actor-critic logic. Our proposed algorithm represents chemical processes as graphs and uses graph convolutional neural networks to learn from process graphs. In particular, the graph neural networks are implemented within the agent architecture to process the states and make decisions. Moreover, we implement a hierarchical and hybrid decision-making process to generate flowsheets, where unit operations are placed iteratively as discrete decisions and corresponding design variables are selected as continuous decisions. We demonstrate the potential of our method to design economically viable flowsheets in an illustrative case study comprising equilibrium reactions, azeotropic separation, and recycles. The results show quick learning in discrete, continuous, and hybrid action spaces. Due to the flexible architecture of the proposed reinforcement learning agent, the method is predestined to include large action-state spaces and an interface to process simulators in future research.