A Scalability Study and New Algorithms for Large-Scale Many-Objective Optimization
Contribuinte(s) |
Department of Computer Science |
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Data(s) |
09/05/2016
09/05/2016
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Resumo |
Many real-world optimization problems contain multiple (often conflicting) goals to be optimized concurrently, commonly referred to as multi-objective problems (MOPs). Over the past few decades, a plethora of multi-objective algorithms have been proposed, often tested on MOPs possessing two or three objectives. Unfortunately, when tasked with solving MOPs with four or more objectives, referred to as many-objective problems (MaOPs), a large majority of optimizers experience significant performance degradation. The downfall of these optimizers is that simultaneously maintaining a well-spread set of solutions along with appropriate selection pressure to converge becomes difficult as the number of objectives increase. This difficulty is further compounded for large-scale MaOPs, i.e., MaOPs possessing large amounts of decision variables. In this thesis, we explore the challenges of many-objective optimization and propose three new promising algorithms designed to efficiently solve MaOPs. Experimental results demonstrate the proposed optimizers to perform very well, often outperforming state-of-the-art many-objective algorithms. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Brock University |
Palavras-Chave | #Multi-objective Optimization #Many-objective Optimization #Computational Intelligence #Pareto Optimality #Optimization Algorithms |
Tipo |
Electronic Thesis or Dissertation |