Computing optimal dynamic experiments for model calibration in predictive microbiology

被引:23
作者
Balsa-Canto, E. [1 ]
Alonso, A. A. [1 ]
Banga, J. R. [1 ]
机构
[1] Spanish Council Sci Res, IIM CSIC, Proc Engn Grp, Vigo 36208, Spain
关键词
D O I
10.1111/j.1745-4530.2007.00147.x
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
The potential of mathematical models describing the microbial behavior during food processing and storage largely depends on their predictive capabilities and, in this concern, model calibration plays a crucial role. Unfortunately, model calibration may only be performed successfully if the sources of information are sufficiently rich. Therefore, a careful experimental design is required. This contribution formulated the optimal experimental design (OED) problem as a general dynamic optimization problem where the objective was to optimize a certain criterion depending on the Fisher information matrix. This formulation allows for more flexibility in the experimental design, including initial conditions, sampling times, experimental durations, time-dependent manipulable variables and number of experiments as degrees of freedom. Moreover, the use of robust confidence regions for the parameter estimates was suggested as an alternative to evaluate the quality of the proposed experimental schemes. The OED for the calibration of the thermal death time and Ratkowsky-type secondary models was considered for illustrative purposes, showing how the usually disregarded E-optimality criterion results in the experimental schemes offering the best compromise precision/decorrelation among the parameters.
引用
收藏
页码:186 / 206
页数:21
相关论文
共 34 条
[1]   Application of stochastic global optimization algorithms to practical problems [J].
Ali, MM ;
Storey, C ;
Torn, A .
JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS, 1997, 95 (03) :545-563
[2]   Optimal sensor placement for state reconstruction of distributed process systems [J].
Alonso, AA ;
Frouzakis, CE ;
Kevrekidis, IG .
AICHE JOURNAL, 2004, 50 (07) :1438-1452
[3]   Designing robust optimal dynamic experiments [J].
Asprey, SP ;
Macchietto, S .
JOURNAL OF PROCESS CONTROL, 2002, 12 (04) :545-556
[4]  
BALSACANTO E, 1998, ACOFOP 4 AUT CONTR F
[5]   Dynamic optimization of bioprocesses: Efficient and robust numerical strategies [J].
Banga, JR ;
Balsa-Canto, E ;
Moles, CG ;
Alonso, AA .
JOURNAL OF BIOTECHNOLOGY, 2005, 117 (04) :407-419
[6]   Computation of optimal identification experiments for nonlinear dynamic process models: a stochastic global optimization approach [J].
Banga, JR ;
Versyck, KJ ;
Van Impe, JF .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2002, 41 (10) :2425-2430
[7]   Improving food processing using modern optimization methods [J].
Banga, JR ;
Balsa-Canto, E ;
Moles, CG ;
Alonso, AA .
TRENDS IN FOOD SCIENCE & TECHNOLOGY, 2003, 14 (04) :131-144
[8]   Stochastic dynamic optimization of batch and semicontinuous bioprocesses [J].
Banga, JR ;
Alonso, AA ;
Singh, RP .
BIOTECHNOLOGY PROGRESS, 1997, 13 (03) :326-335
[9]  
Banga JR, 1996, NONCON OPTIM ITS APP, V7, P563
[10]   A DYNAMIC APPROACH TO PREDICTING BACTERIAL-GROWTH IN FOOD [J].
BARANYI, J ;
ROBERTS, TA .
INTERNATIONAL JOURNAL OF FOOD MICROBIOLOGY, 1994, 23 (3-4) :277-294