Abstract

Multi-objective swarm intelligence (MOSI) metaheuristics were proposed to solve multi-objective optimization problems (MOPs) that consists of two or more conflict objectives, in which improving an objective leads to the degradation of the other. The MOSI algorithms are based on the integration of single objective algorithms and multi-objective optimization (MOO) approach. The MOO approaches include scalarization, Pareto dominance, decomposition and indicator-based. In this paper, the status of MOO research and state-of-the-art MOSI algorithms namely, multi-objective particle swarm, artificial bee colony, firefly algorithm, bat algorithm, gravitational search algorithm, grey wolf optimizer, bacterial foraging and moth-flame optimization algorithms have been reviewed. These reviewed algorithms were mainly developed to solve continuous MOPs. The review is based on how the algorithms deal with objective functions using MOO approaches, the benchmark MOPs used in the evaluation and performance metrics. Furthermore, it describes the advantages and disadvantages of each MOO approach and provides some possible future research directions in this area. The results show that several MOO approaches have not been used in most of the proposed MOSI algorithms. Integrating other different MOO approaches may help in developing more effective optimization algorithms, especially in solving complex MOPs. Furthermore, most of the MOSI algorithms have been evaluated using MOPs with two objectives, which clarifies open issues in this research area.

Highlights

  • A real-world optimization problem usually consists of conflicting objectives that should be taken into consideration when making decisions

  • 62 papers were published in journals, 28 papers appeared in conference proceedings, 6 papers were from book chapters, the number of published papers related to Multi-objective swarm intelligence (MOSI) algorithms is relatively low as compared to multi-objective evolutionary algorithms

  • A total of 100 publications related to swarm intelligence algorithms, multi-objective optimization (MOO) approaches, MOSI algorithms, benchmark multi-objective optimization problems (MOPs), and performance metrics obtained from journals, conference proceedings, book chapters, and reports have been reviewed

Read more

Summary

Introduction

A real-world optimization problem usually consists of conflicting objectives that should be taken into consideration when making decisions. A total of 100 publications related to swarm intelligence algorithms, MOO approaches, MOSI algorithms, benchmark MOPs, and performance metrics obtained from journals, conference proceedings, book chapters, and reports have been reviewed Among these publications, 62 papers were published in journals, 28 papers appeared in conference proceedings, 6 papers were from book chapters, the number of published papers related to MOSI algorithms is relatively low as compared to multi-objective evolutionary algorithms. Among these publications, 62 papers were published in journals, 28 papers appeared in conference proceedings, 6 papers were from book chapters, 3 books, and a technical report.

77. Technical
Objectives
The of objectives for benchmark
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call