Process design is a creative task that is currently performed manually by engineers. Artificial intelligence provides new potential to facilitate process design. Specifically, reinforcement learning (RL) has shown some success in automating process design by integrating data-driven models that learn to build process flowsheets with process simulation in an iterative design process. However, one major challenge in the learning process is that the RL agent demands numerous process simulations in rigorous process simulators, thereby requiring long simulation times and expensive computational power. Therefore, typically short-cut simulation methods are employed to accelerate the learning process. Short-cut methods can, however, lead to inaccurate results. We thus propose to utilize transfer learning for process design with RL in combination with rigorous simulation methods. Transfer learning is an established approach from machine learning that stores knowledge gained while solving one problem and reuses this information on a different target domain. We integrate transfer learning in our RL framework for process design and apply it to an illustrative case study comprising equilibrium reactions, azeotropic separation, and recycles, our method can design economically feasible flowsheets with stable interaction with DWSIM. Our results show that transfer learning enables RL to economically design feasible flowsheets with DWSIM, resulting in a flowsheet with an 8% higher revenue. And the learning time can be reduced by a factor of 2.
翻译:工艺设计是目前由工程师手工完成的创造性任务。人工智能提供了促进工艺设计的新潜力。具体地说,强化学习(RL)通过整合数据驱动模型,在通过迭代设计过程模拟建立流程流程表的过程中学习建立流程流程表的模拟,在流程设计中表现出一定的成功。然而,学习过程中的一个主要挑战是,RL代理器要求用严格的流程模拟器进行许多流程模拟,从而需要较长的模拟时间和昂贵的计算能力。因此,通常使用短期模拟方法来加速学习过程。但是,短期模拟方法可能导致不准确的结果。因此,我们提议在与严格的模拟方法相结合的情况下,将转移学习用于与RL一起的流程设计。转移学习是一种既定方法,从机器学习中存储在解决一个问题时获得的知识,并在不同的目标领域再利用这一信息。我们将转移学习纳入我们的流程模拟器框架,从而需要较长的模拟时间和昂贵的计算能力。因此,我们的方法可以设计经济上可行的流程表,与DWSIM进行稳定的互动。我们的结果显示,与DWSIM的流程表的转移能够使RL产生一个可操作性流程表的8的升级。