化工学报 ›› 2020, Vol. 71 ›› Issue (2): 669-679.DOI: 10.11949/0438-1157.20190857
收稿日期:
2019-07-25
修回日期:
2019-12-24
出版日期:
2020-02-05
发布日期:
2020-02-05
通讯作者:
张东辉
作者简介:
邢瑞(1995—),男,硕士研究生, 基金资助:
Rui XING(),Nan JIANG,Bing LIU,Yaxiong AN,Yayan WANG,Donghui ZHANG()
Received:
2019-07-25
Revised:
2019-12-24
Online:
2020-02-05
Published:
2020-02-05
Contact:
Donghui ZHANG
摘要:
针对真空变压吸附制氧在gPROMS软件中建立了严格的数学模型,基于LiLSX吸附剂设计了两塔八步的真空变压吸附流程生产纯度为92%的O 2。对此流程进行优化,其纯度和回收率有了明显的改进。在此基础上,引入实际生产中经常存在的如进料流量的变化以及吸附性能降低等扰动因素,使模拟工作更接近实际。根据产品气中O 2纯度的反馈,采用模型辨识技术设计了MPC控制器,用于预测控制VPSA过程的动态行为。开环和闭环控制结果的对比显示,流程在设计的MPC控制下展现出更好的结果,这表明MPC控制策略可以明显改善空气分离制氧的生产过程。
中图分类号:
邢瑞, 江南, 刘冰, 安亚雄, 汪亚燕, 张东辉. 基于MPC控制技术优化VPSA制氧工艺的模拟[J]. 化工学报, 2020, 71(2): 669-679.
Rui XING, Nan JIANG, Bing LIU, Yaxiong AN, Yayan WANG, Donghui ZHANG. Simulation of oxygen production via VPSA optimized based on MPC control strategy[J]. CIESC Journal, 2020, 71(2): 669-679.
Parameter | N 2 | O 2 | Ar |
---|---|---|---|
IP 1/(kmol·kg -1·Pa -1) | 7.107×10 -10 | 6.861×10 -9 | 6.254×10 -9 |
IP 2/K | 2910 | 1567 | 1334 |
IP 3/Pa -1 | 2.563×10 -8 | 4.625×10 -8 | 4.374×10 -8 |
IP 4/K | 1612 | 441.3 | 450.6 |
Δ H/(kJ·mol -1) | -23.43 | -13.22 | -12.65 |
表1 扩展Langmuir模型的拟合参数
Table 1 Fitting parameters of extended Langmuir model
Parameter | N 2 | O 2 | Ar |
---|---|---|---|
IP 1/(kmol·kg -1·Pa -1) | 7.107×10 -10 | 6.861×10 -9 | 6.254×10 -9 |
IP 2/K | 2910 | 1567 | 1334 |
IP 3/Pa -1 | 2.563×10 -8 | 4.625×10 -8 | 4.374×10 -8 |
IP 4/K | 1612 | 441.3 | 450.6 |
Δ H/(kJ·mol -1) | -23.43 | -13.22 | -12.65 |
Parameter | Value |
---|---|
Tfeed/K | 298 |
c pg/(kJ·kg -1·K -1) | 1.03 |
c ps/(kJ·kg -1·K -1) | 1.21 |
Rp/m | 8.5×10 -4 |
1.30×10 -4 | |
1.29×10 -4 | |
D, v, Ar/(m 2·s -1) | 1.24×10 -4 |
h/(W·m -2·K -1) | 0.3 |
kg/(W·m -1·K -1) | 0.02452 |
ks/(W·m -1·K -1) | 0.48 |
表2 传质传热模型参数
Table 2 Mass and heat transfer parameters
Parameter | Value |
---|---|
Tfeed/K | 298 |
c pg/(kJ·kg -1·K -1) | 1.03 |
c ps/(kJ·kg -1·K -1) | 1.21 |
Rp/m | 8.5×10 -4 |
1.30×10 -4 | |
1.29×10 -4 | |
D, v, Ar/(m 2·s -1) | 1.24×10 -4 |
h/(W·m -2·K -1) | 0.3 |
kg/(W·m -1·K -1) | 0.02452 |
ks/(W·m -1·K -1) | 0.48 |
时间 /s | BED1 | BED2 |
---|---|---|
6 | AD 1 | VU 2 |
3 | AD 2 | PUR |
3 | ED | ER |
10 | VU 1 | FR |
6 | VU 2 | AD 1 |
3 | PUR | AD 2 |
3 | ER | ED |
10 | FR | VU 1 |
表3 VPSA流程的时序
Table 3 Schedule of VPSA process
时间 /s | BED1 | BED2 |
---|---|---|
6 | AD 1 | VU 2 |
3 | AD 2 | PUR |
3 | ED | ER |
10 | VU 1 | FR |
6 | VU 2 | AD 1 |
3 | PUR | AD 2 |
3 | ER | ED |
10 | FR | VU 1 |
方程 | 方程表达式 |
---|---|
组分质量方程 | |
总质量方程 | |
能量衡算方程 | |
动量方程 | |
Langmuir 吸附等温方程 | |
线性推动力方程 | |
扩散系数 | |
边界条件 | |
阀门方程 |
表4 VPSA过程模型方程
Table 4 Model equations of VPSA process
方程 | 方程表达式 |
---|---|
组分质量方程 | |
总质量方程 | |
能量衡算方程 | |
动量方程 | |
Langmuir 吸附等温方程 | |
线性推动力方程 | |
扩散系数 | |
边界条件 | |
阀门方程 |
变量 | 初始值 | 下限值 | 上限值 | 优化值 |
---|---|---|---|---|
决策变量 | ||||
进料流量/(m 3·h -1) | 3.0 | 1.0 | 15.0 | 4.2 |
终升压流量/(m 3·h -1) | 4.8 | 1.0 | 15.0 | 6.0 |
抽真空流量/(m 3·h -1) | 7.2 | 1.0 | 30.0 | 18.6 |
吸附出口阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 100.0 | 0.97 |
均压步骤阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 10.0 | 0.86 |
冲洗步骤阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 30.0 | 2.6 |
优化目标 | ||||
纯度/% | 90.2 | 92 | 100 | 92.03 |
回收率/% | 58.7 | 60 | 100 | 60.5 |
能耗/(kW·h·m -3) | 0.42 | 0.31 |
表5 决策变量与优化目标的上限值、下限值、初始值以及最佳值
Table 5 Upper and lower bounds, initial and optimal value of decision variables and optimization objectives
变量 | 初始值 | 下限值 | 上限值 | 优化值 |
---|---|---|---|---|
决策变量 | ||||
进料流量/(m 3·h -1) | 3.0 | 1.0 | 15.0 | 4.2 |
终升压流量/(m 3·h -1) | 4.8 | 1.0 | 15.0 | 6.0 |
抽真空流量/(m 3·h -1) | 7.2 | 1.0 | 30.0 | 18.6 |
吸附出口阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 100.0 | 0.97 |
均压步骤阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 10.0 | 0.86 |
冲洗步骤阀门开度/(mol·(bar·s) -1) | 0.2 | 0.01 | 30.0 | 2.6 |
优化目标 | ||||
纯度/% | 90.2 | 92 | 100 | 92.03 |
回收率/% | 58.7 | 60 | 100 | 60.5 |
能耗/(kW·h·m -3) | 0.42 | 0.31 |
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