Multiobjective Pareto optimal solutions for three different grades of nylon-6 produced in an industrial semibatch reactor are obtained by using the adapted Nondominated Sorting Genetic Algorithm (adapted NSGA). The two objective functions minimized are the total reaction time and the concentration o
Multiobjective dynamic optimization of an industrial nylon 6 semibatch reactor using genetic algorithm
โ Scribed by K. Mitra; K. Deb; Santosh K. Gupta
- Publisher
- John Wiley and Sons
- Year
- 1998
- Tongue
- English
- Weight
- 323 KB
- Volume
- 69
- Category
- Article
- ISSN
- 0021-8995
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โฆ Synopsis
The nondominated sorting genetic algorithm (NSGA) is adapted and used to obtain multiobjective Pareto optimal solutions for three grades of nylon 6 being produced in an industrial semibatch reactor. The total reaction time and the concentration of an undesirable cyclic dimer in the product are taken as two individual objectives for minimization, while simultaneously requiring the attainment of design values of the final monomer conversion and for the number-average chain length. Substantial improvements in the operation of the nylon 6 reactor are indicated by this study. The technique used is very general in nature and can be used for multiobjective optimization of other reactors. Good mathematical models accounting for all the physicochemical aspects operative in a reactor (and which have been preferably tested on industrial data) are a prerequisite for such optimization studies.
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