Generalized Modular Representation Framework for the Synthesis of Extractive Separation Systems

Title Generalized Modular Representation Framework for the Synthesis of Extractive Separation Systems
Publication Type Journal Article
Authors
Keywords
Abstract
In this work, a systematic process synthesis and intensification method is presented for extractive separation based on the Generalized Modular Representation Framework (GMF). GMF employs a mass/heat exchange module-based superstructure representation, incorporating detailed thermodynamic model, to investigate conventional or intensified process options for nonideal azeotropic separation without a pre-postulation of plausible unit/flowsheet configurations. Orthogonal Collocation is also applied to enhance GMF representation to obtain intra-module operation information and module dimensionality estimation while maintaining model size compactness. Thus, entrainer selection, process synthesis, design, and intensification are examined within a single mixed-integer nonlinear optimization (MINLP) problem. A case study on the separation of ethanol-water mixture is presented to highlight the potential of the proposed approach in deriving optimal and verifiable extractive separation systems.
Year of Publication
2019
Journal
Computer Aided Chemical Engineering
Volume
47
Number of Pages
475-480
URL
DOI
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