Negri Valentina, Vázquez Daniel, Sales-Pardo Marta, Guimerà Roger, Guillén-Gosálbez Gonzalo
Institute for Chemical and Bioengineering, Department of Chemistry and Applied Biosciences, ETH Zürich, Vladimir-Prelog-Weg 1, 8093Zürich, Switzerland.
Department of Chemical Engineering, Universitat Rovira i Virgili, Tarragona43007, Catalonia, Spain.
ACS Omega. 2022 Nov 2;7(45):41147-41164. doi: 10.1021/acsomega.2c04736. eCollection 2022 Nov 15.
Process modeling has become a fundamental tool to guide experimental work. Unfortunately, process models based on first principles can be expensive to develop and evaluate, and hard to use, particularly when convergence issues arise. This work proves that Bayesian symbolic learning can be applied to derive simple closed-form expressions from rigorous process simulations, streamlining the process modeling task and making process models more accessible to experimental groups. Compared to conventional surrogate models, our approach provides analytical expressions that are easier to communicate and manipulate algebraically to get insights into the process. We apply this method to synthetic data obtained from two basic CO capture processes simulated in Aspen HYSYS, identifying accurate simplified interpretable equations for key variables dictating the process economic and environmental performance. We then use these expressions to analyze the process variables' elasticities and benchmark an emerging CO capture process against the business as usual technology.
过程建模已成为指导实验工作的基本工具。不幸的是,基于第一原理的过程模型开发和评估成本高昂,且难以使用,尤其是在出现收敛问题时。这项工作证明,贝叶斯符号学习可用于从严格的过程模拟中推导简单的闭式表达式,简化过程建模任务,并使实验团队更容易使用过程模型。与传统的替代模型相比,我们的方法提供的解析表达式更易于交流和进行代数运算,以便深入了解过程。我们将此方法应用于从在Aspen HYSYS中模拟的两个基本CO捕集过程获得的合成数据,为决定过程经济和环境性能的关键变量确定了准确的简化可解释方程。然后,我们使用这些表达式来分析过程变量的弹性,并将一种新兴的CO捕集过程与常规技术进行基准比较。