Evaluating the performance of meta-heuristic algorithms on CEC 2021 benchmark problems
Loading...
Date
2022-09
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Springer London
Series Info
Neural Computing and Applications;
Scientific Journal Rankings
Abstract
To develop new meta-heuristic algorithms and evaluate on the benchmark functions is the most challenging task. In this
paper, performance of the various developed meta-heuristic algorithms are evaluated on the recently developed CEC 2021
benchmark functions. The objective functions are parametrized by inclusion of the operators, such as bias, shift and
rotation. The different combinations of the binary operators are applied to the objective functions which leads to the
CEC2021 benchmark functions. Therefore, different meta-heuristic algorithms are considered which solve the benchmark
functions with different dimensions. The performance of some basic, advanced meta-heuristics algorithms and the algo-
rithms that participated in the CEC2021 competition have been experimentally investigated and many observations,
recommendations, conclusions have been reached. The experimental results show the performance of meta-heuristic
algorithms on the different combinations of binary parameterized operators.
Description
Keywords
Benchmark functions, CEC2021, Meta-heuristic algorithms, Parameterization