Title of article :
Adaptive Hybrid Genetic Algorithm for Groundwater Remediation Design
Author/Authors :
Minsker، Barbara S. نويسنده , , A.M.ASCE، نويسنده , , Espinoza، Felipe P. نويسنده , , Goldberg، David E. نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2005
Abstract :
Optimal groundwater remediation design problems are often complex, nonlinear, and computationally intensive. Genetic algorithms allow solution of more complex nonlinear problems than traditional gradient-based approaches, but they are more computationally intensive. One way to improve performance is through inclusion of local search, creating a hybrid genetic algorithm (HGA). This paper presents a new self-adaptive HGA (SAHGA) and compares its performance to a nonadaptive hybrid genetic algorithm (NAHGA) and the simple genetic algorithm (SGA) on a groundwater remediation problem. Of the two hybrid algorithms, SAHGA is shown to be far more robust than NAHGA, providing fast convergence across a broad range of parameter settings. For the test problem, SAHGA needs 75% fewer function evaluations than SGA, even with an inefficient local search method. These findings demonstrate that SAHGA has substantial promise for enabling solution of larger-scale problems than was previously possible.
Keywords :
Hybrid reactor , Power flattening , fissile fuel breeding
Journal title :
Journal of Water Resources Planning and Management
Journal title :
Journal of Water Resources Planning and Management