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Frontiers of Mechanical Engineering

ISSN 2095-0233

ISSN 2095-0241(Online)

CN 11-5984/TH

Postal Subscription Code 80-975

2018 Impact Factor: 0.989

Front. Mech. Eng.    2020, Vol. 15 Issue (1) : 24-42    https://doi.org/10.1007/s11465-019-0558-6
RESEARCH ARTICLE
Performance design of a cryogenic air separation unit for variable working conditions using the lumped parameter model
Jinghua XU, Tiantian WANG, Qianyong CHEN, Shuyou ZHANG(), Jianrong TAN
State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, China; Key Laboratory of Advanced Manufacturing Technology of Zhejiang Province, School of Mechanical Engineering, Zhejiang University, Hangzhou 310027, China
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Abstract

Large-scale cryogenic air separation units (ASUs), which are widely used in global petrochemical and semiconductor industries, are being developed with high operating elasticity under variable working conditions. Different from discrete processes in traditional machinery manufacturing, the ASU process is continuous and involves the compression, adsorption, cooling, condensation, liquefaction, evaporation, and distillation of multiple streams. This feature indicates that thousands of technical parameters in adsorption, heat transfer, and distillation processes are correlated and merged into a large-scale complex system. A lumped parameter model (LPM) of ASU is proposed by lumping the main factors together and simplifying the secondary ones to achieve accurate and fast performance design. On the basis of material and energy conservation laws, the piecewise-lumped parameters are extracted under variable working conditions by using LPM. Takagi–Sugeno (T–S) fuzzy interval detection is recursively utilized to determine whether the critical point is detected or not by using different thresholds. Compared with the traditional method, LPM is particularly suitable for “rough first then precise” modeling by expanding the feasible domain using fuzzy intervals. With LPM, the performance of the air compressor, molecular sieve adsorber, turbo expander, main plate-fin heat exchangers, and packing column of a 100000 Nm3 O2/h large-scale ASU is enhanced to adapt to variable working conditions. The designed value of net power consumption per unit of oxygen production (kW/(Nm3 O2)) is reduced by 6.45%.

Keywords performance design      air separation unit (ASU)      lumped parameter model (LPM)      variable working conditions      T–S fuzzy interval detection     
Corresponding Author(s): Shuyou ZHANG   
Just Accepted Date: 10 October 2019   Online First Date: 26 November 2019    Issue Date: 21 February 2020
 Cite this article:   
Jinghua XU,Tiantian WANG,Qianyong CHEN, et al. Performance design of a cryogenic air separation unit for variable working conditions using the lumped parameter model[J]. Front. Mech. Eng., 2020, 15(1): 24-42.
 URL:  
https://academic.hep.com.cn/fme/EN/10.1007/s11465-019-0558-6
https://academic.hep.com.cn/fme/EN/Y2020/V15/I1/24
Fig.1  Typical external compression cryogenic air separation process.
Fig.2  Typical internal compression cryogenic air separation process.
Fig.3  T–S fuzzy interval detection to judge the critical point of ASU.
Fig.4  AC. (a) AC in a factory; (b) digital mockup of the AC; (c) CFD simulation of the work flow in the AC; (d) air temperature change in the AC.
Fig.5  MSA. (a) Two vertical radial flow MSAs; (b) simulation process of MSAs.
Fig.6  TE. Experiment on TE: (a) Expansive end and (b) supercharging end. (c) TE structure. The left part is the expansive end, and the right part is the supercharging end. (d) Simulated flow process of TE.
Fig.7  Vertical brazed aluminum PFHE. (a) Overall structure of the PFHE; (b) a layer of passage.
Fig.8  Feedstock inside PCs. (a) Cold box; (b) CFD simulation process of the upper column; (c) gas–liquid distributor; (d) flow state of the air in PC.
Fig.9  Comparison of hl between ω =75% and ω =105% PCs.
Fig.10  SCF experimental platforms for measuring physical properties. (a) Cryogenic fluid; (b) oscilloscope.
Components Status Tc/K Pc /MPa ρc /(kg·m−3) Cp/(kJ·kg−1·K−1) μ/(Pa·s) ν/(m2?s−1)
Nitrogen (N2) Theoretical 126.19 3.3958 313.30 1.1239 5.4400×10−6 1.7363×10−8
Experimental 125.32 3.4720 315.60 1.1527 5.3500×10−6 1.7154×10−8
Oxygen (O2) Theoretical 154.58 5.0430 436.16 1.6994 5.4437×10−6 1.2481×10−8
Experimental 155.82 5.1020 437.36 1.7503 5.3639×10−6 1.2583×10−8
Argon (Ar) Theoretical 150.69 4.8630 535.60 0.5658 7.1618×10−6 1.3372×10−8
Experimental 150.31 4.9240 536.80 0.5762 7.1527×10−6 1.3518×10−8
Tab.1  Comparisons of experimental and theoretical critical physical properties of various components in ASU
Fig.11  (a) AC efficiency; (b) pressure drop of MSA.
Fig.12  (a) Main PFHEs’ efficiency; (b) pressure drop of PC.
Products and parameters Minimum working condition/(Nm3?h−1) Designed working condition/(Nm3?h−1) Maximum working condition/(Nm3?h−1) Purity/ppm Outlet pressure/MPa
High-pressure oxygen 75375 100500 106550 9.96× 105 O2 5.9
High-pressure nitrogen 6850 6850 9250 10 O2 7.0
Low-pressure nitrogen 69500 69500 78500 10 O2 1.0
LOX 2500 1500 0 9.96× 105 O2
LIN 2500 1000 0 10 O2
Tab.2  Products and parameters of 100000 Nm3 O2/h large-scale ASU
Processes Units Status Performance parameters Performance before using LPM Performance after using LPM Ratio
Adsorption process AC Axial flow type Shaft power Ps=26138 kW Ps=27561 kW 5.44%
Isentropic efficiency ηAC=82.6% ηAC=89.6% 8.47%
Centrifugal type Shaft power Ps=12894 kW Ps=13195 kW 2.33%
Isentropic efficiency ηAC=84.3% ηAC=87.6% 3.91%
MSA Adsorption Adsorption pressure drop ΔPMSA=7.26 kPa ΔPMSA=6.79 kPa –6.47%
Regeneration Regeneration pressure drop ΔPMSA=7.13 kPa ΔPMSA=6.74 kPa –5.47%
Maximum Maximum pressure drop ΔPMSA=14.39 kPa ΔPMSA=13.53 kPa –5.98%
Heat transfer process TE Expansive end Isentropic efficiency ηTE=86% ηTE=89% 3.49%
Supercharging end Isentropic efficiency ηTE=81% ηTE=82% 1.23%
PFHEs Whole Isentropic efficiency ηPFHEs=86.78% ηPFHEs=88.40% 1.87%
Total heat transfer coefficient U=2286 W/(m2·°C) U=2518 W/(m2·°C) 10.15%
Heat transfer efficiency ψ=87.6% ψ=93.8% 7.08%
Maximum Pressure drop ΔPPFHEs=17 kPa ΔPPFHEs=16 kPa –5.88%
Distillation process PC Whole Upper column Pressure drop ΔPPC=3.6 kPa ΔPPC=3.4 kPa –5.56%
Lower column Pressure drop ΔPPC=4.3 kPa ΔPPC=4.1 kPa –4.65%
Tab.3  Comparison of results before and after using LPM in the 100000 Nm3 O2/h large-scale ASU
ai, b i, ci Parameter set of the shape-changing degree of the membership function
Af Total area of the hole (m2)
Cp Specific heat capacity at constant pressure (J?kg−1?K−1)
C1, C2 , C 3 Constants
d Bore diameter (m)
dp Particle diameter (m)
D Diameter of PC (m)
De Equivalent diameter of the flowing passage (m)
f Friction factor
f0 Friction factor for flow past a single particle
Ff Packing factor of the flooding point (m?s−1·(kg?m−3)0.5)
F rl Froude number for liquid
g Gravitational acceleration (m/s2)
h Specific enthalpy (J/kg)
Δh Enthalpy drop (kJ/kg)
h0 Liquid holdup below the loading point
hd Dynamic liquid holdup of the packing column
hl Liquid holdup of the packing column
hs Static liquid holdup of the packing column
H Height of MSA (m)
k1, k2 Constants
L Heat exchanger length (m)
m˙ Fluid mass flow rate (kg/s)
N Iteration number
ΔP Pressure drop (MPa)
Pc Critical pressure (MPa)
Ps Shaft power of AC (kW)
Q˙ Heat transfer rate (kW)
Q˙ ac t Actual cooling capacity of TE (kW)
R eg Reynolds number for the gas
S State parameter set
T Temperature of fluid (K)
Tc Critical temperature (K)
ΔTm Mean temperature difference between streams (K)
u Fluid flow speed (m/s)
uf Flooding velocity (m/s)
ug Actual gas flow velocity (m/s)
U Overall heat transfer coefficient (W?m−2?K−1)
ν Kinematic viscosity (m2/s)
Vs Volume flow rate of fluid under working conditions (m3/s)
x Input or variables in premise
y Output of the model
Z Total height of packing (m)
αp Specific surface area of packing (m2/g)
β Truncation error
γ Compression ratio of the air compressor
ε Porosity
η Isentropic efficiency
λi Fuzzy approximation error of ith judgement
μ Dynamic viscosity (Pa·s)
ρl Fluid density (kg/m3)
ρc Critical density (kg/m3)
ψ Heat transfer efficiency
ω Degree of variable working condition of PC in ASU
  
AC Air compressor
c Cold streams
d Unirrigated (dry) bed
EC Evaporator condenser
g Gas fluid
h Hot streams
i Inlet
irr Irrigated bed
k Known
l Liquid fluid
LC Lower column
MSA molecular sieve adsorber
o Outlet
PC Packing column
PFHEs Plate-fin heat exchangers
TE Turbo expander
UC Upper column
  
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