Constraint optimization problems with multiple constraints and a large solution domain are NP hard and span almost all industries in a variety of applications. One such application is the optimization of resource scheduling in a pay per use grid environment. Charging for these resources based on demand is often referred to as Utility Computing, where resource providers lease computing power with varying costs based on processing speed. Consumers using this resource have time and cost constraints associated with each job they submit. Determining the optimal way to divide the job among the available resources with regard to the time and cost constraints is tasked to the Grid Resource Broker (GRB). The GRB must use an optimization algorithm ...
A computational framework is built and demonstrated which is capable of testing plant growth strateg...
A framework is proposed that combines separately developed multidisciplinary optimization, multi-obj...
The purpose of this thesis is to explore bi-level genetic algorithm (GA) based optimization models t...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Simulated annealing is an attractive, but expensive, heuristic for approximating the solution to com...
This thesis investigates the costs associated with a bus scheduling problem in an urban transit netw...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
A LargE Admissible Perturbation (LEAP) with Evolutionary Structural Optimization methodology is deve...
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
This study develops and tests a computational approach for determining optimal inventory policies fo...
The video game industry has grown substantially over the last decade and the quality of video games ...
We introduce and study a novel graph optimization problem to search for multiple cliques with the ma...
In most real-life problems, the decision alternatives are evaluated with multiple conflicting criter...
The protein folding problem involves the prediction of the secondary and tertiary structure of a mol...
A computational framework is built and demonstrated which is capable of testing plant growth strateg...
A framework is proposed that combines separately developed multidisciplinary optimization, multi-obj...
The purpose of this thesis is to explore bi-level genetic algorithm (GA) based optimization models t...
This study proposes a self-adaptive penalty function algorithm for solving constrained optimization ...
Simulated annealing is an attractive, but expensive, heuristic for approximating the solution to com...
This thesis investigates the costs associated with a bus scheduling problem in an urban transit netw...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Master of ScienceDepartment of Electrical and Computer EngineeringSanjoy DasStephen M. WelchMulti-ob...
A LargE Admissible Perturbation (LEAP) with Evolutionary Structural Optimization methodology is deve...
Gray Code Optimization (GCO) algorithm is a deterministic algorithm based on the Gray code, binary n...
This study develops and tests a computational approach for determining optimal inventory policies fo...
The video game industry has grown substantially over the last decade and the quality of video games ...
We introduce and study a novel graph optimization problem to search for multiple cliques with the ma...
In most real-life problems, the decision alternatives are evaluated with multiple conflicting criter...
The protein folding problem involves the prediction of the secondary and tertiary structure of a mol...
A computational framework is built and demonstrated which is capable of testing plant growth strateg...
A framework is proposed that combines separately developed multidisciplinary optimization, multi-obj...
The purpose of this thesis is to explore bi-level genetic algorithm (GA) based optimization models t...