DocumentCode :
3658228
Title :
Multiple objective Evolution Strategies using Data Envelopment Analysis
Author :
James V. Lill;Timothy Anderson
Author_Institution :
Engility Corporation, Air Force Research Laboratory / Department of Defense Supercomputing Resource Center, Wright-Patterson Air Force Base, Ohio, USA
fYear :
2015
Firstpage :
1969
Lastpage :
1977
Abstract :
Often in science and engineering we are faced with complicated nonlinear problems in optimization that involve simultaneously minimizing or maximizing various non-commensurate quantities. For example, a basic task in design engineering or technology management is to balance suitable measures of performance against the cost. We present a simplified approach for performing multiple objective optimization by combining standard single objective Evolution Strategies with Data Envelopment Analysis. This latter method employs linear programming to compute an L1 distance of a given solution from the Pareto frontier defined by the evolving population of solutions, or from a related frontier defined by DEA. This quantity is then used in a fitness function. Real variable linear programs must be solved for the optimization of convex problems, while the solution of mixed integer linear programs is required to optimize general non-convex problems. This hybrid method yields highly converged results with good coverage of the Pareto frontier when applied to a standardized suite of multiple objective problems. Several current applications will be discussed that employ a massively parallel program (MOES) written in C and MPI that runs on supercomputers. This material was assigned a clearance of CLEARED, Case Number 88ABW-2015-0638.
Keywords :
"Optimization","Sociology","Statistics","Evolutionary computation","Standards","Pins","Convergence"
Publisher :
ieee
Conference_Titel :
Management of Engineering and Technology (PICMET), 2015 Portland International Conference on
Type :
conf
DOI :
10.1109/PICMET.2015.7273135
Filename :
7273135
Link To Document :
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