Title of article :
An Efficient Coupled Genetic Algorithm-NLP Method for Heat Exchanger Network Synthesis.
Author/Authors :
Rezaei, E. sahand university of technology - Faculty of Chemical Engineering, تبريز, ايران , Shafiei, S. sahand university of technology - Faculty of Chemical Engineering, تبريز, ايران
Abstract :
Synthesis of heat exchanger networks (HENs) is inherently a mixed integer and nonlinear programming (MINLP) problem. Solving such problems leads to difficulties in the optimization of continuous and binary variables. This paper presents a new efficient and robust method in which structural parameters are optimized by genetic algorithm (G.A.) and continuous variables are handled due to a modified objective function for maximum energy recovery (MER). Node representation is used for addressing the exchangers and networks are considered as a sequence of genes. Each gene consists of nodes for generating different structures within a network. Results show that this method may find new or near optimal solutions with a less than 2% increase in Hen annual costs.
Keywords :
Heat exchanger networks (HENs) , Optimization , Genetic Algorithm (G.A.) , NLP formulation.
Journal title :
Iranian Journal of Chemical Engineering
Journal title :
Iranian Journal of Chemical Engineering