In this study, the best settings of five heuristics are determined for solving a mixed-integer non-linear multi-objective optimization problem. The algorithms treated in the article are: ant colony optimization, genetic algorithm, particle swarm optimization, differential evolution, and teaching-learning basic algorithm. The optimization problem consists in optimizing the design of a thermoelectric device, based on a model available in literature. Results showed that the inner settings can have different effects on the algorithm performance criteria depending on the algorithm. A formulation based on the weighted sum method is introduced for solving the multiobjective optimization problem with optimal settings. It was found that the five heu...
The paper deals with efficiency comparison of two global evolutionary optimization methods implement...
A novel dynamic surrogate model based optimization (DSMO) for centralized thermoelectric generation ...
The shape design for a thermoelectric generator (TEG) plays an important role in its performance. In...
In this study, the best settings of five heuristics are determined for solving a mixed-integer non-l...
In this study, two algorithms, the student psychology-based optimization (SPBO) and the mutation/par...
Stochastic optimization algorithms are usually evaluated based on performance on high dimensional be...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
One of the largest problems facing the world today is energy. Not only does much of the world use no...
Genetic Algorithms (GAs) are widely used in multiple fields, ranging from mathematics, physics, to e...
A practical example of power electronic converter synthesis is presented, where a multi-objective ge...
AbstractA novel combination of Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) is appli...
This study is about optimal design of shell and tube heat exchangers using state of the art evolutio...
Metaheuristic optimization algorithms (Nature-Inspired Optimization Algorithms) are a class of algor...
The basic concept in applying numerical optimization methods for power plants op-timization problems...
During the last three decades there has been a growing interest in algorithms which rely on analogie...
The paper deals with efficiency comparison of two global evolutionary optimization methods implement...
A novel dynamic surrogate model based optimization (DSMO) for centralized thermoelectric generation ...
The shape design for a thermoelectric generator (TEG) plays an important role in its performance. In...
In this study, the best settings of five heuristics are determined for solving a mixed-integer non-l...
In this study, two algorithms, the student psychology-based optimization (SPBO) and the mutation/par...
Stochastic optimization algorithms are usually evaluated based on performance on high dimensional be...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
One of the largest problems facing the world today is energy. Not only does much of the world use no...
Genetic Algorithms (GAs) are widely used in multiple fields, ranging from mathematics, physics, to e...
A practical example of power electronic converter synthesis is presented, where a multi-objective ge...
AbstractA novel combination of Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) is appli...
This study is about optimal design of shell and tube heat exchangers using state of the art evolutio...
Metaheuristic optimization algorithms (Nature-Inspired Optimization Algorithms) are a class of algor...
The basic concept in applying numerical optimization methods for power plants op-timization problems...
During the last three decades there has been a growing interest in algorithms which rely on analogie...
The paper deals with efficiency comparison of two global evolutionary optimization methods implement...
A novel dynamic surrogate model based optimization (DSMO) for centralized thermoelectric generation ...
The shape design for a thermoelectric generator (TEG) plays an important role in its performance. In...