| Literature DB >> 34977595 |
Mohamed Abdelkader1,2, Samet Güler3, Hassan Jaleel4, Jeff S Shamma5.
Abstract
PURPOSE OF REVIEW: Currently, there is a large body of research on multi-agent systems addressing their different system theoretic aspects. Aerial swarms as one type of multi-agent robotic systems have recently gained huge interest due to their potential applications. However, aerial robot groups are complex multi-disciplinary systems and usually research works focus on specific system aspects for particular applications. The purpose of this review is to provide an overview of the main motivating applications that drive the majority of research works in this field, and summarize fundamental and common algorithmic components required for their development. RECENTEntities:
Keywords: Aerial swarm; Multi-UAV systems
Year: 2021 PMID: 34977595 PMCID: PMC8294305 DOI: 10.1007/s43154-021-00063-4
Source DB: PubMed Journal: Curr Robot Rep ISSN: 2662-4087
Fig. 1(Left) Indoor localization solution: A set of motion capture cameras or wireless devices compute and broadcast the drones’ positions via a ground station. (Right) Outdoor localization solution: Each drone fuses several sensor measurements such as GPS, camera, and ultrawideband to compute the relative positions to its neighbor drones
Fig. 2Front (left) and top (right) views of an outdoor experiment of a drone with three UWB sensors (hexacopter) estimate the relative position toward another drone (quadcopter) with a single UWB sensor by using the three distance measurements. The estimation signal is fed back to the control algorithms of the drones for a coordinated flight. The drones rely on their onboard sensors only and do not use a GPS sensor for localization
Fig. 3Proposed swarm system architecture with a centralized swarm-level mission planning and distributed robot-level mission execution, navigation, and state estimation modules. The top block (green) acts like an interactive interface between the operator and the swarm-level mission module (red) which are both running on a centralized control station. The remaining lower blocks (blue) run local state estimation and mission execution on individual robots
Fig. 4Proposed swarm system architecture with both distributed swarm-level mission planning and robot-level mission execution, navigation, and state estimation modules. The operation interface module (green) provides interaction with the swarm-level mission module. In a distributed architecture, each robot has a local copy of the swarm-level mission planning module (red) which exchanges information with other robots for overall swarm coordination