info:eu-repo/semantics/article
Optimization of Triple-Pressure Combined-Cycle Power Plants by Generalized Disjunctive Programming and Extrinsic Functions
Fecha
2020-12Registro en:
Manassaldi, Juan Ignacio; Mussati, Miguel Ceferino; Scenna, Nicolas Jose; Mussati, Sergio Fabian; Optimization of Triple-Pressure Combined-Cycle Power Plants by Generalized Disjunctive Programming and Extrinsic Functions; Pergamon-Elsevier Science Ltd; Computers and Chemical Engineering; 146; 12-2020; 1-19
0098-1354
1873-4375
CONICET Digital
CONICET
Autor
Manassaldi, Juan Ignacio
Mussati, Miguel Ceferino
Scenna, Nicolas Jose
Mussati, Sergio Fabian
Resumen
A new mathematical framework for optimal synthesis, design, and operation of triple-pressure steam-reheat combined-cycle power plants (CCPP) is presented. A superstructure-based representation of the process, which embeds a large number of candidate configurations, is first proposed. Then, a generalized disjunctive programming (GDP) mathematical model is derived from it. Series, parallel, and combined series-parallel arrangements of heat exchangers are simultaneously embedded. Extrinsic functions executed outside GAMS from dynamic-link libraries (DLL) are used to estimate the thermodynamic properties of the working fluids. As a main result, improved process configurations with respect to two reported reference cases were found. The total heat transfer areas calculated in this work are by around 15% and 26% lower than those corresponding to the reference cases.This paper contributes to the literature in two ways: (i) with a disjunctive optimization model of natural gas CCPP and the corresponding solution strategy, and (ii) with improved HRSG configurations.