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Model predictive control and optimization of vacuum pressure swing adsorption for carbon dioxide capture

机译:二氧化碳捕集的变压吸附模型预测控制与优化

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This study presents a control strategy of carbon dioxide capture from flue gas by Vacuum Pressure Swing Adsorption (VPSA). The key objective of this work is to control and optimize the purity and recovery of the adsorption product (carbon dioxide) by manipulating the time duration of the VPSA cycle steps. Based on a single fixed-bed 6-step VPSA process simulation using 5A zeolite as adsorbent for CO capture from gas mixture with 15% CO and 85% N (resembling post-combustion flue gases of power stations), a two-input/two-output control model was obtained, in which Feed step time and Purge step time are taken as manipulative variables and CO Purity and Recovery are the controlled variables. For control purpose, a multi-input/multi-output model predictive control (MIMO-MPC) system is proposed to handle the inherent non-linear nature and discontinuous operation of the VPSA process. The MIMO-MPC control scheme is tested and showed good results in terms of system stability and fast tracking of the set-points. Finally, PSO algorithm is applied to maximize the purity and recovery by finding the optimal duration time of feed step and purge step, the results shows that with such VPSA process, over 98% of CO is recovered with purity of 59%, at t = 202s and t= 114s.
机译:这项研究提出了通过真空变压吸附(VPSA)从烟气中捕获二氧化碳的控制策略。这项工作的关键目标是通过控制VPSA循环步骤的持续时间来控制和优化吸附产品(二氧化碳)的纯度和回收率。基于单一固定床6步VPSA工艺模拟,使用5A沸石作为吸附剂,从含15%CO和85%N(类似于电站的燃烧后烟道气)的混合气体中捕集CO,采用二进样/二进样获得了输出控制模型,其中以进料步骤时间和吹扫步骤时间为操作变量,CO纯度和回收率为控制变量。出于控制目的,提出了一种多输入/多输出模型预测控制(MIMO-MPC)系统,以处理VPSA过程的固有非线性特性和不连续操作。测试了MIMO-MPC控制方案,并在系统稳定性和设定点的快速跟踪方面显示了良好的结果。最后,应用PSO算法通过找到进料步骤和吹扫步骤的最佳持续时间来最大程度地提高纯度和回收率,结果表明,采用这种VPSA工艺,在t =时回收了98%的CO,纯度为59%。 202s,t = 114s。

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