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Détail de l'auteur
Auteur Aaditya Agarwal
Documents disponibles écrits par cet auteur
Affiner la rechercheMultiobjective optimal design of heat exchanger networks using new adaptations of the elitist nondominated sorting genetic algorithm, NSGA-II / Aaditya Agarwal in Industrial & engineering chemistry research, Vol. 47 N°10 (Mai 2008)
[article]
in Industrial & engineering chemistry research > Vol. 47 N°10 (Mai 2008) . - p. 3489–3501
Titre : Multiobjective optimal design of heat exchanger networks using new adaptations of the elitist nondominated sorting genetic algorithm, NSGA-II Type de document : texte imprimé Auteurs : Aaditya Agarwal, Auteur ; Santosh K. Gupta, Auteur Année de publication : 2008 Article en page(s) : p. 3489–3501 Note générale : Bibliogr. p. 3500-3501 Langues : Anglais (eng) Mots-clés : Heat exchanger networks; NSGA-II-sJG Résumé : A new approach for generating optimal heat exchanger networks (HENs) is described that does not use any heuristics. This approach involves generating the number of intermediate temperatures in each of the hot and cold streams and their values, randomly, using the binary coded NSGA-II-sJG. The substreams so generated are then matched randomly. This procedure results in a variable number of decision variables in each solution (chromosome). Dummy decision variables are introduced so as to make the length of each chromosome the same. A new crossover strategy, crossA, as well as a few other adaptations, are described that enable faster convergence to the optimal solution(s). Three single-objective problems involving the minimization of the annualized cost are solved and the results compared with those reported in the literature. Thereafter, a few problems with two- and three-objective functions are solved. In these, the objective functions are selected from among the annualized cost, the amount of (hot + cold) utilities required (these are important due the environmental issues associated with them), the energy recovery, and the total number of units. To the best of our knowledge, such multiobjective optimization of HENs has not been reported in the open literature yet. A decision maker can choose any of the solutions from among the set of several nondominated (equally good) Pareto-optimal solutions generated. These are more meaningful than those obtained using single objective functions. Though the algorithm developed is specific to HENs, it can easily be applied to other similar optimization problems. En ligne : http://pubs.acs.org/doi/abs/10.1021/ie070805g [article] Multiobjective optimal design of heat exchanger networks using new adaptations of the elitist nondominated sorting genetic algorithm, NSGA-II [texte imprimé] / Aaditya Agarwal, Auteur ; Santosh K. Gupta, Auteur . - 2008 . - p. 3489–3501.
Bibliogr. p. 3500-3501
Langues : Anglais (eng)
in Industrial & engineering chemistry research > Vol. 47 N°10 (Mai 2008) . - p. 3489–3501
Mots-clés : Heat exchanger networks; NSGA-II-sJG Résumé : A new approach for generating optimal heat exchanger networks (HENs) is described that does not use any heuristics. This approach involves generating the number of intermediate temperatures in each of the hot and cold streams and their values, randomly, using the binary coded NSGA-II-sJG. The substreams so generated are then matched randomly. This procedure results in a variable number of decision variables in each solution (chromosome). Dummy decision variables are introduced so as to make the length of each chromosome the same. A new crossover strategy, crossA, as well as a few other adaptations, are described that enable faster convergence to the optimal solution(s). Three single-objective problems involving the minimization of the annualized cost are solved and the results compared with those reported in the literature. Thereafter, a few problems with two- and three-objective functions are solved. In these, the objective functions are selected from among the annualized cost, the amount of (hot + cold) utilities required (these are important due the environmental issues associated with them), the energy recovery, and the total number of units. To the best of our knowledge, such multiobjective optimization of HENs has not been reported in the open literature yet. A decision maker can choose any of the solutions from among the set of several nondominated (equally good) Pareto-optimal solutions generated. These are more meaningful than those obtained using single objective functions. Though the algorithm developed is specific to HENs, it can easily be applied to other similar optimization problems. En ligne : http://pubs.acs.org/doi/abs/10.1021/ie070805g