Abstract — Most reported studies on differential evolution (DE) are obtained using low-dimensional problems, e.g., smaller than 100, which are relatively small for many real-world problems. In this paper we propose two new efficient DE variants, named DECC-I and DECC-II, for high-dimensional optimization (up to 1000 dimensions). The two algorithms are based on a cooperative coevolution framework incorporated with several novel strategies. The new strategies are mainly focus on problem decomposition and subcomponents cooperation. Experimental results have shown that these algorithms have superior performance on a set of widely used benchmark functions. I
This paper presents a new distributed Differential Evolution (dDE) algorithm and provides an exhaus...
Differential Evolution (DE) is a powerful optimization procedure that self-adapts to the search spac...
Abstract — This paper presents a novel differential evolution algorithm (called CCDE) using self-ada...
Most reported studies on differential evolution (DE) are obtained using low-dimensional problems, e....
High–dimensional optimization problems appear very often in demanding applications. Although evoluti...
The Differential Evolution (DE) algorithm is widely used for real-world global optimisation problems...
Differential evolution (DE) is an evolutionary algorithm widely used to solve optimization problems ...
Abstract—In this paper, we propose a new algorithm, named JACC-G, for large scale optimization probl...
Differential Evolution (DE) is a simple and efficient optimizer, especially for continuous optimizat...
This paper presents Differential Evolution algorithm for solving high-dimensional optimization probl...
Differential Evolution (DE) is one of the most popular, high-performance optimization algorithms wit...
Engineers and scientists from all disciplines often have to tackle numerous real- world application...
Differential evolution (DE) has been extensively used in optimization studies since its development ...
194 p.This thesis investigates a relatively new technique in the global optimization field, namely D...
This paper describes the use of a modified Differential Evolution strategy that identifies multiple ...
This paper presents a new distributed Differential Evolution (dDE) algorithm and provides an exhaus...
Differential Evolution (DE) is a powerful optimization procedure that self-adapts to the search spac...
Abstract — This paper presents a novel differential evolution algorithm (called CCDE) using self-ada...
Most reported studies on differential evolution (DE) are obtained using low-dimensional problems, e....
High–dimensional optimization problems appear very often in demanding applications. Although evoluti...
The Differential Evolution (DE) algorithm is widely used for real-world global optimisation problems...
Differential evolution (DE) is an evolutionary algorithm widely used to solve optimization problems ...
Abstract—In this paper, we propose a new algorithm, named JACC-G, for large scale optimization probl...
Differential Evolution (DE) is a simple and efficient optimizer, especially for continuous optimizat...
This paper presents Differential Evolution algorithm for solving high-dimensional optimization probl...
Differential Evolution (DE) is one of the most popular, high-performance optimization algorithms wit...
Engineers and scientists from all disciplines often have to tackle numerous real- world application...
Differential evolution (DE) has been extensively used in optimization studies since its development ...
194 p.This thesis investigates a relatively new technique in the global optimization field, namely D...
This paper describes the use of a modified Differential Evolution strategy that identifies multiple ...
This paper presents a new distributed Differential Evolution (dDE) algorithm and provides an exhaus...
Differential Evolution (DE) is a powerful optimization procedure that self-adapts to the search spac...
Abstract — This paper presents a novel differential evolution algorithm (called CCDE) using self-ada...