摘要:AbstractA large amount of energy requirement for solvent regeneration is a major barrier to the widespread adoption of amine-based post-combustion CO2capture (PCC). Flexible operation is one of the ways to lower the energy penalty by responding to changes in economic factors like the energy price. However, for effective implementation of flexible operation strategies, it is necessary to identify the most economic operating condition under various potential scenarios and to establish an appropriate control strategy to operate the process. As flexible operation will inherently involve a large operating envelope, we investigate the use of nonlinear model predictive control (NMPC) technology. To circumvent the problem of solving a large-scale nonlinear programming problem online, a simpler NARX model is identified and used. With the NARX model, an offset-free NMPC is designed and simulated under various dynamic scenarios. The developed NARX-based NMPC shows satisfactory control performance, stabilizing the CO2capture rate faster than LMPC by 60-100 min.
关键词:KeywordsPost-combustion CO2captureDynamic simulationSystem identificationNonlinear model predictive control