In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Particle Swarm (RPS) methods of global optimization. To this end, seventy test functions have been chosen. Among these test functions, some are new while others are well known in the literature; some are unimodal, the others multi-modal; some are small in dimension (no. of variables, x in f(x)), while the others are large in dimension; some are algebraic polynomial equations, while the other are transcendental, etc. FORTRAN programs of DE and RPS have been appended. Among 70 functions, a few have been run for small as well as large dimensions. In total, 73 optimization exercises have been done. DE has succeeded in 63 cases while RPS has succeede...
Two modern optimization methods including Particle Swarm Optimization and Differential Evolution are...
This article evaluates a recently introduced algorithm that adjusts each dimension in particle swarm...
<div><p>Many swarm optimization algorithms have been introduced since the early 60’s, Evolutionary P...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
Our objective in this paper is to compare the performance of the Differential Evolution (DE) and the...
In this paper we introduce some new test functions to assess the performance of global optimization ...
In this paper we test a particular variant of the (Repulsive) Particle Swarm method on some rather d...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
This study focuses on the global optimization of functions of real variables using methods inspired ...
The objective of this paper is to introduce a new population-based (stochastic) heuristic to search ...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
In this paper we compare the performance of the Barter method, a newly introduced population-based (...
Keane’s bump function is considered as a standard benchmark for nonlinear constrained optimization. ...
A collection of thirty mathematical functions that can be used for optimization purposes is presente...
金沢大学理工研究域機械工学系In this paper, the basic characteristics of the differential evolution (DE) are examin...
Two modern optimization methods including Particle Swarm Optimization and Differential Evolution are...
This article evaluates a recently introduced algorithm that adjusts each dimension in particle swarm...
<div><p>Many swarm optimization algorithms have been introduced since the early 60’s, Evolutionary P...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
Our objective in this paper is to compare the performance of the Differential Evolution (DE) and the...
In this paper we introduce some new test functions to assess the performance of global optimization ...
In this paper we test a particular variant of the (Repulsive) Particle Swarm method on some rather d...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
This study focuses on the global optimization of functions of real variables using methods inspired ...
The objective of this paper is to introduce a new population-based (stochastic) heuristic to search ...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
In this paper we compare the performance of the Barter method, a newly introduced population-based (...
Keane’s bump function is considered as a standard benchmark for nonlinear constrained optimization. ...
A collection of thirty mathematical functions that can be used for optimization purposes is presente...
金沢大学理工研究域機械工学系In this paper, the basic characteristics of the differential evolution (DE) are examin...
Two modern optimization methods including Particle Swarm Optimization and Differential Evolution are...
This article evaluates a recently introduced algorithm that adjusts each dimension in particle swarm...
<div><p>Many swarm optimization algorithms have been introduced since the early 60’s, Evolutionary P...