On the Performance of Metaheuristics: A Different Perspective

01/24/2020
by   Hamid Reza Boveiri, et al.
6

Nowadays, we are immersed in tens of newly-proposed evolutionary and swam-intelligence metaheuristics, which makes it very difficult to choose a proper one to be applied on a specific optimization problem at hand. On the other hand, most of these metaheuristics are nothing but slightly modified variants of the basic metaheuristics. For example, Differential Evolution (DE) or Shuffled Frog Leaping (SFL) are just Genetic Algorithms (GA) with a specialized operator or an extra local search, respectively. Therefore, what comes to the mind is whether the behavior of such newly-proposed metaheuristics can be investigated on the basis of studying the specifications and characteristics of their ancestors. In this paper, a comprehensive evaluation study on some basic metaheuristics i.e. Genetic Algorithm (GA), Particle Swarm Optimization (PSO), Artificial Bee Colony (ABC), Teaching-Learning-Based Optimization (TLBO), and Cuckoo Optimization algorithm (COA) is conducted, which give us a deeper insight into the performance of them so that we will be able to better estimate the performance and applicability of all other variations originated from them. A large number of experiments have been conducted on 20 different combinatorial optimization benchmark functions with different characteristics, and the results reveal to us some fundamental conclusions besides the following ranking order among these metaheuristics, ABC, PSO, TLBO, GA, COA i.e. ABC and COA are the best and the worst methods from the performance point of view, respectively. In addition, from the convergence perspective, PSO and ABC have significant better convergence for unimodal and multimodal functions, respectively, while GA and COA have premature convergence to local optima in many cases needing alternative mutation mechanisms to enhance diversification and global search.

READ FULL TEXT

page 7

page 8

page 9

page 10

page 11

page 12

research
02/19/2004

Parameter-less Optimization with the Extended Compact Genetic Algorithm and Iterated Local Search

This paper presents a parameter-less optimization framework that uses th...
research
02/28/2013

Using Artificial Intelligence Models in System Identification

Artificial Intelligence (AI) techniques are known for its ability in tac...
research
03/08/2020

Influence of Initialization on the Performance of Metaheuristic Optimizers

All metaheuristic optimization algorithms require some initialization, a...
research
01/14/2019

Electrical Impedance Tomography based on Genetic Algorithm

In this paper, we applies GA algorithm into Electrical Impedance Tomogra...
research
03/29/2021

Hybrid Evolutionary Optimization Approach for Oilfield Well Control Optimization

Oilfield production optimization is challenging due to subsurface model ...
research
11/30/2019

Data-Driven Optimization of Public Transit Schedule

Bus transit systems are the backbone of public transportation in the Uni...
research
01/23/2022

Self-adjusting optimization algorithm for solving the setunion knapsack problem

The set-union knapsack problem (SUKP) is a constrained composed optimiza...

Please sign up or login with your details

Forgot password? Click here to reset