Optimisation is a basic principle of nature and has a vast variety of applications in research and industry. There is a plurality of different optimisation procedures which exhibit different strengths and weaknesses in computational efficiency and probability of finding the global optimum. Most methods offer a trade-off between these two aspects. This paper proposes a hybrid genetic deflated Newton (HGDN) method to find local and global optima more efficiently than competing methods. The proposed method is a hybrid algorithm which uses a genetic algorithm to explore the parameter domain for regions containing local minima, and a deflated Newton algorithm to efficiently find their exact locations. In each iteration, identified minima are rem...
Abstract: How to detect global optimums which reside on complex function is an important problem in ...
In recent years, the population algorithms are becoming increasingly robust and easy to use, based o...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Optimisation is a basic principle of nature and has a vast variety of applications in research and i...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
In this work the problem of overcoming local minima in the solution of nonlinear optimisation proble...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
Genetic algorithm (GA) is a well-known population-based optimization algorithm. GA utilizes a random...
Global optimization problems involve essential difficulties as, for instance, avoiding convergence t...
Abstract: How to detect global optimums which reside on complex function is an important problem in ...
In recent years, the population algorithms are becoming increasingly robust and easy to use, based o...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Optimisation is a basic principle of nature and has a vast variety of applications in research and i...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
One of the challenges in global optimization is to use heuristic techniques to improve the behaviour...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
. Global Optimization has become an important branch of mathematical analysis and numerical analysis...
A simple but effective evolutionary algorithm is proposed in this paper for solving complicated opti...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
Hybridization of genetic algorithms with local search approaches can en-hance their performance in g...
In this work the problem of overcoming local minima in the solution of nonlinear optimisation proble...
In the last few decades, genetic algorithms (GAs) demonstrated to be an effective approach for solvi...
Genetic algorithm (GA) is a well-known population-based optimization algorithm. GA utilizes a random...
Global optimization problems involve essential difficulties as, for instance, avoiding convergence t...
Abstract: How to detect global optimums which reside on complex function is an important problem in ...
In recent years, the population algorithms are becoming increasingly robust and easy to use, based o...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...