This article describes a methodology that implements a Markov decision process (MDP) optimization technique in a real time fed-batch experiment. Biological systems can be better modeled under the stochastic framework and MDP is shown to be a suitable technique for their optimization. A nonlinear inp
A new approach to batch process optimization using experimental design
β Scribed by Paul J. Wissmann; Martha A. Grover
- Publisher
- American Institute of Chemical Engineers
- Year
- 2009
- Tongue
- English
- Weight
- 573 KB
- Volume
- 55
- Category
- Article
- ISSN
- 0001-1541
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β¦ Synopsis
Abstract
Empirical and mechanistic experimental design methods are combined to construct partial models, which are, thus, used to design a process. The grid algorithm restricts the next experimental point to potential process optima, according to the confidence intervals around the optimal points, and works with any experimental design algorithm such as Dβoptimal. Two case studies show the advantages of implementing the grid algorithm. On average the improvement due to the grid algorithm was 15β20% in the first case study. The second case study is based on thin film growth using four potential models, with the most probable model used for experimental design. The grid algorithm balances the tradeβoff between two extremes: Dβoptimal designs and sampling at the predicted optimal point. The methodology presented shows that the experimenter does not have to decide ahead of time on purely empirical or mechanistic experimental design methods, since both may be useful. Β© 2008 American Institute of Chemical Engineers AIChE J, 2009
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