Title of article :
Optimization of Agricultural BMPs Using a Parallel ComputingBased Multi-Objective Optimization Algorithm
Author/Authors :
Liu، Y. نويسنده Department of Geography, University of Guelph , , Shen، H. نويسنده Singapore-MIT, Singapore , , Yang، W. نويسنده Department of Geography, University of Guelph , , Yang، J. نويسنده Singapore-MIT, Singapore ,
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2013
Abstract :
Beneficial Management Practices (BMPs) are important measures for reducing agricultural non-point source (NPS) pollution. However, selection of BMPs for placement in a watershed requires optimizing available resources to maximize possible water quality benefits. Due to its iterative nature, the optimization typically takes a long time to achieve the BMP trade-off resultswhich is not desirable in practice.In this study, anoptimization model, consisting of a multi-objective genetic algorithm, ?-NSGA-II, in combination with the Soil Water and Assessment Tool (SWAT) and the parallel computation technique, is developed and tested in the Fairchild Creek watershed in southern Ontario of Canada. The two objectives are to minimize BMPs costs and maximize total phosphorous load reduction. The parallel computation allows the run of multiple SWAT models simultaneously and can reduce the ?-NSGA-II optimization time significantly to achieve the objective. The Pareto-optimal fronts generated between the two objective functions can be used to achieve desired water quality goals with minimum BMP implementation cost to support spatial watershed management and policy making.
Journal title :
Environmental Resources Research
Journal title :
Environmental Resources Research