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Revision as of 13:26, 24 May 2013 by Zhangy (talk | contribs)


Description

Preparative liquid chromatography as a crucial separation and purification tool has been widely employed in food, fine chemical and pharmaceutical industries. Chromatographic separation at industry scale can be operated either discontinuously or in a continuous mode. The continuous case will be discussed in the benchmark SMB, and here we focus on the discontinuous mode -- batch chromatography. The schematic diagram for the binary separation is shown below. During the injection period tinj, a mixture consisting of A and B is injected at the inlet of the column packed with a suitable stationary phase. With the help of the mobile phase, the feed mixture then flows through the column. Since the solutes to be separated exhibit different adsorption affinities to the stationary phase, they move at different velocities in the column, and thus separate from each other when exiting the column. At the column outlet, component A is collected between cutting points t1 and t2, and component B is collected between t3 and t4. Here the positions of t1 and t4 are determined by a minimum concentration threshold that the detector can resolve. The positions of t2 and t3 are determined by the purity specifications imposed on the products. After the cycle period tcyc, the injection is repeated. The feed flow-rate Q and injection period tinj are often considered as the operating variables. By properly choosing them, the process can achieve the desired performance criterion, such as production rate, while respecting the product specifications (e.g., purity, recovery yield).

The dynamics of the batch chromatographic column can be described precisely by an axially dispersed plug-flow model with a limited mass-transfer rate characterized by a linear driving force (LDF) approximation. In this model the differential mass balance of component i (i=A,B,) in the liquid phase can be written as:

cit+1ϵϵqit+ucizDi2ciz2=0,z(0,L),(1)

where ci and qi are the concentrations of solute i in the liquid and solid phases, respectively, u the interstitial liquid velocity, ϵ the column porosity, t the time coordinate, z the axial coordinate along the column, L the column length, Di=uLPe the axial dispersion coefficient and Pe the Péclet number. The adsorption rate is modeled by the LDF approximation:

qit=κi(qiEqqi),z[0,L],

where κi is the mass-transfer coefficient of component i and qiEq is the adsorption equilibrium concentration calculated by the isotherm equation for component i. Here the bi-Langmuir isotherm model is used to describe the adsorption equilibrium:

qiEq=Hi,1ci1+j=A,BKj,1cj+Hi,2ci1+j=A,BKj,2cj,i=A,B,

where Hi,1 and Hi,2 are the Henry constants, and Kj,1 and Kj,2 the thermodynamic coefficients.

The boundary conditions for (1) are specified by the Danckwerts relations:

Diciz|z=0=u(ci|z=0ciin),ciz|z=L=0,

where ciin is the concentration of component i at the inlet of the column. A rectangular injection is assumed for the system and thus

ciin={ciF,if ttinj;0,if t>tinj.

Here ciF is the feed concentration for component i and tinj is the injection period. In addition, the column is assumed unloaded initially:

ci(t=0,z)=qi(t=0,z)=0,z[0,L],i=A,B.

More details about the mathematical modeling for batch chromatography can be found in the literature [1].

Discretization

In this model, the feed volumetric flow-rate Q and injection period tinj are considered as the operating parameters, and denoted as the parameter μ=(Q,tinj). Using the finite volume discretization, we can get the full order model as follows,

{𝐀𝐜ik+1=𝐁𝐜ik+bik1ϵϵΔt𝐡ik,𝐪ik+1=𝐪ik+Δt𝐡ik,

where 𝐜ik,𝐪ik𝒩,i=A,B are the solution vector of ci and Failed to parse (unknown function "\math"): {\displaystyle q_i<\math> at the time instance <math>t=t^k, k\in \mathbb K = \{0,1,\cdots,K\}} , respectively. 𝐡ik=κi(𝐪iEq𝐪ik), is a nonlinear function, and is time- and parameter-dependent, the boldface 𝐀,𝐁 are constant matrices. As a result, it is a nonlinear parametric system.

Generation of ROM

The reduced order model (ROM) can be obtained by reduced bases methods, which is applicable for nonlinear parametric systems, see Reduced Basis PMOR method. For parametrized time-dependent problems, the reduced basis can often be obtained by using POD-Greedy algorithm. Notice that the nonlinear functions 𝐡i,i=A,B can be approximated by the empirical interpolation method [2], such that the ROM can be obtained more efficiently by the offline-online technique.


References

  1. G. Guiochon, A. Felinger, D. G. Shirazi, A. M. Katti, Fundamentals of Preparative and Nonlinear Chromatography, 2nd Edition, Academic Press, 2006.
  2. M. Barrault, Y. Maday, N.C. Nguyen, and A.T. Patera, "An 'empirical interpolation' method: application to efficient reduced-basis discretization of partial differential equations", C. R. Acad. Sci. Paris Series I, 339 (2004), 667-672.

Contact

Yongjin Zhang

Suzhou Li