A robust parallel adaptive genetic simulated annealing algorithm and its application in process synthesis

Advanced Control of Industrial Processes(2011)

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Abstract
A robust hybrid genetic algorithm which can be used to solve process synthesis problems with Mixed Integer Nonlinear Programming (MINLP) models is developed. The proposed hybrid approach constructs an efficient genetic simulated annealing (GSA) algorithm for global search, while the iterative hill climbing (IHC) method as a local search technique is incorporated into GSA loop to speed up the convergence of the algorithm. In order to efficiently locate quality solution to complex optimization problem, a self-adaptive mechanism is developed to maintain a tradeoff between the global and local search. The computational results indicate that the global searching ability and the convergence speed of this hybrid algorithm are significantly improved. Further, the proposed algorithm is tailored to find optimum solution to HENS problem, The results show that the proposed approach could provide designers with a least-cost HEN with less computational cost comparing with other optimization methods.
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Key words
local search technique,iterative hill climbing method,heat exchangers,integer programming,mixed integer nonlinear programming model,process synthesis,complex optimization problem,parallel adaptive genetic simulated annealing algorithm,linear programming,search problems,convergence,parallel algorithms,self-adaptive mechanism,genetic algorithms,robust hybrid genetic algorithm,global search technique,simulated annealing,chemical engineering,iterative methods,heat exchanger network synthesis,local search,hill climbing,optimization problem,simulated annealing algorithm,electronics packaging,hybrid algorithm,robustness,genetics
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