2022 Annual Meeting
(363c) Process Operability Mapping Using Neural Networks
Authors
In particular, the NN model is trained and tested against the data generated from the first-principles model. The produced surrogate models can be used to predict the outputs of the system under consideration. These outputs are then used in the NLP-based approach to compute the feasible DIS (DIS*) from the DOS. The proposed approach can replace the current existing operability framework by employing ML-based surrogates in the current tools.
To give an illustration of the proposed framework, the ML NN-based operability method is applied to process systems of non-linear nature, such as a membrane reactor for the Direct Methane Aromatization system. Results of the proposed approach will be discussed regarding the obtained error margins and the reduction of computational time that could be achieved with the proposed method when compared to the traditional approaches. This work thus has the potential to significantly change the way process intensification and design problems are addressed with the help of the Machine Learning-based process operability framework.
References
[1] Vitor Gazzaneo and Fernando V. Lima. Multilayer operability framework for process design, intensification, and modularization of nonlinear energy systems. Industrial & Engineering Chemistry Research, 58(15):6069â6079, 2019.
[2] Vitor Gazzaneo, Juan C. Carrasco, David R. Vinson, and Fernando V. Lima. Process operability algorithms: Past, present, and future developments. Industrial & Engineering Chemistry Research, 59(6):2457â2470, 2020.
[3] Juan C. Carrasco and Fernando V. Lima. Bilevel and parallel programing-based operability approaches for process intensification and modularity. AIChE Journal, 64(8):3042â3054.