Title of article :
A non-dominated sorting based evolutionary algorithm for many-objective optimization problems
Author/Authors :
Mane, S.U. Department of Computer Science and Engineering - Koneru Lakshmaiah Education Foundation (Deemed to be University), Vaddeswaram, Guntur Dist., AP, India , Narasinga Rao, M.R. Department of Computer Science and Engineering - Koneru Lakshmaiah Education Foundation (Deemed to be University), Vaddeswaram, Guntur Dist., AP, India
Abstract :
The optimization problems with more than three objectives are Manyobjective
Optimization Problems (MaOPs) that exist in various scientic and engineering
domains. The existing multi-objective evolutionary algorithms are not found eective in
addressing the MaOPs. Its limitations initiated the need to develop an algorithm that
eciently solves MaOPs. The proposed work presents the design of the Many-Objective
Hybrid Dierential Evolution (MaOHDE) algorithm to address MaOPs. Initially, two
multi-objective evolutionary algorithms viz. Non-dominated Sorting based Multi-Objective
Dierential Evolution (NS-MODE) and Non-dominated Sorting based Multi-Objective
Particle Swarm Optimization (NS-MOPSO) algorithms were designed. These algorithms
were developed by incorporating the non-dominated sorting approach from Non-dominated
Sorting-based Genetic Algorithm II (NSGA-II), the ranking approach, weight vector, and
reference points. Tchebyche{a decomposition-based approach, was applied to decompose
the MaOPs. The MaOHDE algorithm was developed by hybridizing the NS-MODE with
the NS-MOPSO algorithm. The strength of the presented approach was determined using
20 instances of DTLZ functions, and its eectiveness and eciency were veried upon its
comparison with the recently developed state of algorithms existing in the literature. From
the results, it is observed that the MaOHDE responds better than its competitors or is
competitive for most of the test instances and the convergence rate is also good.
Farsi abstract :
فاقد وابستگي سازماني
Keywords :
Many-objective hybrid , differential evolution algorithm , Non-dominated sorting , Decomposition-based approach , Differential evolution algorithm , Particle swarm optimization algorithm , Many-objective optimization problems
Journal title :
Scientia Iranica(Transactions D: Computer Science and Electrical Engineering)