A hybrid multi-objective optimization algorithm based on genetic algorithm and stochastic local search is developed and evaluated. The single agent stochastic search local optimization algorithm has been modified in order to be suitable for multi-objective optimization where the local optimization is performed towards non-dominated points. The presented algorithm has been experimentally investigated by solving a set of well known test problems, and evaluated according to several metrics for measuring the performance of algorithms for multi-objective optimization. Results of the experimental investigation are presented and discussed
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract — Evolutionary gradient search is a hybrid algorithm that exploits the complementary featur...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
In this paper a new concept of ranking among the solutions of the same front, along with elite prese...
Global optimization problems are relevant in various fields of research and industry, such as chemis...
Optimization problems can be found in many aspects of our lives. An optimization problem can be appr...
This study presents a new approach to solve multi-response simulation optimization problems. This ap...
Non-dominated sorting genetic algorithm II is a classical multi-objective optimization algorithm but...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
Hybrid algorithms formed by the combination of Genetic Algorithms with Local Search methods provide ...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Abstract- It is known from single-objective optimization that hybrid variants of local search algori...
A local search method is often introduced in an evolutionary optimization technique to enhance its s...
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract — Evolutionary gradient search is a hybrid algorithm that exploits the complementary featur...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
In this paper a new concept of ranking among the solutions of the same front, along with elite prese...
Global optimization problems are relevant in various fields of research and industry, such as chemis...
Optimization problems can be found in many aspects of our lives. An optimization problem can be appr...
This study presents a new approach to solve multi-response simulation optimization problems. This ap...
Non-dominated sorting genetic algorithm II is a classical multi-objective optimization algorithm but...
The aim of this paper is to clearly demonstrate the importance of finding a good balance between gen...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
Hybrid algorithms formed by the combination of Genetic Algorithms with Local Search methods provide ...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Abstract- It is known from single-objective optimization that hybrid variants of local search algori...
A local search method is often introduced in an evolutionary optimization technique to enhance its s...
In this thesis, the basic principles and concepts of single and multi-objective Genetic Algorithms (...
Abstract — Evolutionary gradient search is a hybrid algorithm that exploits the complementary featur...
In this paper, Hamming distance is used to control individual difference in the process of creating ...