In Particle Swarm Optimization, it has been observed that swarms often stall as opposed to converge. A stall occurs when all of the forward progress that could occur is instead rejected as Failed Exploration. Since the swarms particles are in good regions of the search space with the potential to make more progress, the introduction of perturbations to the pbest positions can lead to significant improvements in the performance of standard Particle Swarm Optimization. The pbest perturbation has been supported by a line search technique that can identify unimodal, globally convex, and non-globally convex search spaces, as well as the approximate size of attraction basin. A deeper analysis of the stall condition reveals that it involves clust...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Problems in statistical analysis, economics, and many other disciplines often involve a trade-off be...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
The particle filter is usually used as a tracking algorithm in non-linear under the Bayesian trackin...
Swarm Computation is a relatively new optimisation paradigm. The basic premise is to model the coll...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Molecular dynamics simulations are a powerful tool to explore conformational landscapes, though limi...
Satellite clusters are a useful tool to improve mission cost-effectiveness and redundancy, but contr...
The Strength Pareto Evaluation Algorithm (SPEA) (Zitzler and Thiele 1999) is one of the prominent te...
The goal of this thesis is to use Particle Filters to Simultaneously Localize a mobile robot in an u...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
The finite state projection algorithm provides modelers a new way of directly solving the chemical m...
Neural activity correlates with a wide variety of phenomena relating to the animal originating the a...
The sedimentation of a cloud of particles in a viscous fluid at low and moderate Reynolds numbers ha...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Problems in statistical analysis, economics, and many other disciplines often involve a trade-off be...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
The particle filter is usually used as a tracking algorithm in non-linear under the Bayesian trackin...
Swarm Computation is a relatively new optimisation paradigm. The basic premise is to model the coll...
Scope and Method of Study: Over the years, most multiobjective particle swarm optimization (MOPSO) a...
Molecular dynamics simulations are a powerful tool to explore conformational landscapes, though limi...
Satellite clusters are a useful tool to improve mission cost-effectiveness and redundancy, but contr...
The Strength Pareto Evaluation Algorithm (SPEA) (Zitzler and Thiele 1999) is one of the prominent te...
The goal of this thesis is to use Particle Filters to Simultaneously Localize a mobile robot in an u...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
The finite state projection algorithm provides modelers a new way of directly solving the chemical m...
Neural activity correlates with a wide variety of phenomena relating to the animal originating the a...
The sedimentation of a cloud of particles in a viscous fluid at low and moderate Reynolds numbers ha...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Problems in statistical analysis, economics, and many other disciplines often involve a trade-off be...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...