z-logo
Premium
Artificial neural‐network‐assisted stochastic process optimization strategies
Author(s) -
Nandi Somnath,
Ghosh Soumitra,
Tambe Sanjeev S.,
Kulkarni Bhaskar D.
Publication year - 2001
Publication title -
aiche journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.958
H-Index - 167
eISSN - 1547-5905
pISSN - 0001-1541
DOI - 10.1002/aic.690470113
Subject(s) - simultaneous perturbation stochastic approximation , artificial neural network , mathematical optimization , computer science , genetic algorithm , continuous stirred tank reactor , stochastic optimization , process (computing) , rotation formalisms in three dimensions , stochastic process , mathematics , engineering , artificial intelligence , statistics , geometry , chemical engineering , operating system
This article presents two hybrid robust process optimization approaches integrating artificial neural networks (ANN) and stochastic optimization formalism—genetic algorithms (Gas) and simultaneous perturbation stochastic approximation (SPSA). An ANN‐based process model was developed solely from process input–output data and then its input space comprising design and operating variables was optimized by employing either the GA or the SPSA methodology. These methods possess certain advantages over widely used deterministic gradient‐based techniques. The efficacy of ANN‐GA and ANN‐SPSA formalisms in the presence of noise‐free as well as noisy process data was demonstrated for a representative system involving a nonisothermal CSTR. The case study considered a nontrivial optimization objective, which, in addition to the conventional parameter design, also addresses the issue of optimal tolerance design. Comparison of the results with those from a robust deterministic modeling/optimization strategy suggests that the hybrid methodologies can be gainfully employed for process optimization.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here