A Herd-Foraging-Based Approach to Adaptive Coverage Path Planning in Dual Environments
Document Type
Article
Publication Date
3-1-2024
Abstract
Coverage path planning (CPP) is essential for robotic tasks, such as environmental monitoring and terrain surveying, which require covering all surface areas of interest. As the pioneering approach to CPP, inspired by the concept of predation risk in predator-prey relations, the predator-prey CPP (PPCPP) has the benefit of adaptively covering arbitrary bent 2-D manifolds and can handle unexpected changes in an environment, such as the sudden introduction of dynamic obstacles. However, it can only work in bounded environment and cannot handle tasks in unbounded one, e.g., search and rescue tasks where the search boundary is unknown. Sometimes, robots are required to handle both bounded and unbounded environments, i.e., dual environments, such as capturing criminals in a city. Once encountering a building, the robot enters it to cover the bounded environment, then continues to cover the unbounded one when leaving the building. Therefore, the capability of swarm robots for the coverage tasks both in bounded and unbounded environments is important. In nature, herbivores live in groups to find more food and reduce the risk of predation. Especially the juvenile ones prefer to forage near the herd to protect themselves. Inspired by the foraging behavior of animals in a herd, this article proposes an online adaptive CPP approach that enables swarm robots to handle both bounded and unbounded environments without knowing the environmental information in advance, called dual-environmental herd-foraging-based CPP (DH-CPP). It's performance is evaluated in dual environments with stationary and dynamic obstacles of different shapes and quantity, and compared with three state-of-the-art approaches. Simulation results demonstrate that it is highly effective to handle dual environments.
Identifier
85161022999 (Scopus)
Publication Title
IEEE Transactions on Cybernetics
External Full Text Location
https://doi.org/10.1109/TCYB.2023.3268844
e-ISSN
21682275
ISSN
21682267
PubMed ID
37256798
First Page
1882
Last Page
1893
Issue
3
Volume
54
Grant
2021-cyxt2-kj10
Fund Ref
National Natural Science Foundation of China
Recommended Citation
Zhang, Junqi; Zu, Peng; Liu, Kun; and Zhou, Mengchu, "A Herd-Foraging-Based Approach to Adaptive Coverage Path Planning in Dual Environments" (2024). Faculty Publications. 620.
https://digitalcommons.njit.edu/fac_pubs/620