Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-objective optimization problems deal with finding a set of candidate optimal solutions to be presented to the decision maker. In industry, this could be the problem of finding alternative car designs given the usually conflicting objectives of performance, safety, environmental friendliness, ease of maintenance, price among others. Despite the significance of this problem, most of the non-evolutionary algorithms which are widely used cannot find a set of diverse and nearly optimal solutions due to the huge size of the search space. At the same time, the solution set produced by most of the currently used evolutionary algorithms lacks diversi...
Swarm Computation is a relatively new optimisation paradigm. The basic premise is to model the coll...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
In Particle Swarm Optimization, it has been observed that swarms often stall as opposed to converge....
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
The particle filter is usually used as a tracking algorithm in non-linear under the Bayesian trackin...
Due to economic reason, not every process variable can be measured by a sensor. The problem of opti...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
A computational framework is built and demonstrated which is capable of testing plant growth strateg...
This work presents heuristics for searching large sets of molecular structures for low-energy, stabl...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
PSO is a population based evolutionary algorithm and is motivated from the simulation of social beha...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Swarm Computation is a relatively new optimisation paradigm. The basic premise is to model the coll...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
In Particle Swarm Optimization, it has been observed that swarms often stall as opposed to converge....
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
The particle filter is usually used as a tracking algorithm in non-linear under the Bayesian trackin...
Due to economic reason, not every process variable can be measured by a sensor. The problem of opti...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
A computational framework is built and demonstrated which is capable of testing plant growth strateg...
This work presents heuristics for searching large sets of molecular structures for low-energy, stabl...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
PSO is a population based evolutionary algorithm and is motivated from the simulation of social beha...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Swarm Computation is a relatively new optimisation paradigm. The basic premise is to model the coll...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Over recent years, Evolutionary Algorithms have emerged as a practical approach to solve hard optimi...