This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is proposed that uses variable relocation vectors to adapt the current population to the new environment. The relocation vectors introduce a certain radius of uncertainty to be applied specifically to each individual and in effect restoring diversity and accelerating exploration. Furthermore, the algorithm provides higher re-usage, faster convergence and better adaptation. As a technique to be used at transient periods, the proposed algorithm provides the next evolutionary cycle with better initial population than any other randomly generated population. The algorithm can be easily integrated into standard evolutionary algorithms and other uncertainty...
Dr. James Keller, Dissertation Supervisor.Includes vita.Field of study: Electrical and computer engi...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Differential evolution (DE) has been extensively used in optimization studies since its development ...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
Evolutionary trajectories of quantitative traits are influenced by the underlying genetic architectu...
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
Genetic Algorithms (GAs) are loosely based on the concept of the natural cycle of reproduction with ...
In Particle Swarm Optimization, it has been observed that swarms often stall as opposed to converge....
Genomics data is transforming medicine and our understanding of life in fundamental ways; however, i...
The study of biological invasions is not only essential to regulate their vast potential for ecologi...
The work in this thesis makes connections between statistical mechanics and genotype frequencies in ...
Deriving weights for a Value Focused Thinking (VFT) hierarchy demands considerable time and input fr...
A financial portfolio contains assets that offer a return with a certain level of risk. To maximise ...
Dr. James Keller, Dissertation Supervisor.Includes vita.Field of study: Electrical and computer engi...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Differential evolution (DE) has been extensively used in optimization studies since its development ...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
Evolutionary trajectories of quantitative traits are influenced by the underlying genetic architectu...
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
Genetic Algorithms (GAs) are loosely based on the concept of the natural cycle of reproduction with ...
In Particle Swarm Optimization, it has been observed that swarms often stall as opposed to converge....
Genomics data is transforming medicine and our understanding of life in fundamental ways; however, i...
The study of biological invasions is not only essential to regulate their vast potential for ecologi...
The work in this thesis makes connections between statistical mechanics and genotype frequencies in ...
Deriving weights for a Value Focused Thinking (VFT) hierarchy demands considerable time and input fr...
A financial portfolio contains assets that offer a return with a certain level of risk. To maximise ...
Dr. James Keller, Dissertation Supervisor.Includes vita.Field of study: Electrical and computer engi...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...