Inverse Firefly-Based Search Algorithms for Multi-Target Search Problem

Zedadra, Ouarda and Guerrieri, Antonio and Seridi, Hamid and Benzaid, Aymen and Fortino, Giancarlo (2024) Inverse Firefly-Based Search Algorithms for Multi-Target Search Problem. Big Data and Cognitive Computing, 8 (2). p. 18. ISSN 2504-2289

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Abstract

Efficiently searching for multiple targets in complex environments with limited perception and computational capabilities is challenging for multiple robots, which can coordinate their actions indirectly through their environment. In this context, swarm intelligence has been a source of inspiration for addressing multi-target search problems in the literature. So far, several algorithms have been proposed for solving such a problem, and in this study, we propose two novel multi-target search algorithms inspired by the Firefly algorithm. Unlike the conventional Firefly algorithm, where light is an attractor, light represents a negative effect in our proposed algorithms. Upon discovering targets, robots emit light to repel other robots from that region. This repulsive behavior is intended to achieve several objectives: (1) partitioning the search space among different robots, (2) expanding the search region by avoiding areas already explored, and (3) preventing congestion among robots. The proposed algorithms, named Global Lawnmower Firefly Algorithm (GLFA) and Random Bounce Firefly Algorithm (RBFA), integrate inverse light-based behavior with two random walks: random bounce and global lawnmower. These algorithms were implemented and evaluated using the ArGOS simulator, demonstrating promising performance compared to existing approaches.

Item Type: Article
Subjects: Institute Archives > Multidisciplinary
Depositing User: Managing Editor
Date Deposited: 20 Feb 2024 04:25
Last Modified: 20 Feb 2024 04:25
URI: http://eprint.subtopublish.com/id/eprint/4107

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