Current Advancements on Autonomous Mission Planning and Management
Systems: an AUV and UAV perspective
- URL: http://arxiv.org/abs/2007.05179v1
- Date: Fri, 10 Jul 2020 05:56:34 GMT
- Title: Current Advancements on Autonomous Mission Planning and Management
Systems: an AUV and UAV perspective
- Authors: Adham Atyabi, Somaiyeh MahmoudZadeh, Samia Nefti-Meziani
- Abstract summary: This paper serves as an introduction to UVs mission planning and management systems.
A comprehensive survey over autonomy assessment of UVs has been provided in this study.
The paper separately explains the humanoid and autonomous system's performance and highlights the role and impact of a human in UVs operations.
- Score: 0.43036809606968096
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Advances in hardware technology have enabled more integration of
sophisticated software, triggering progress in the development and employment
of Unmanned Vehicles (UVs), and mitigating restraints for onboard intelligence.
As a result, UVs can now take part in more complex mission where continuous
transformation in environmental condition calls for a higher level of
situational responsiveness. This paper serves as an introduction to UVs mission
planning and management systems aiming to highlight some of the recent
developments in the field of autonomous underwater and aerial vehicles in
addition to stressing some possible future directions and discussing the
learned lessons. A comprehensive survey over autonomy assessment of UVs, and
different aspects of autonomy such as situation awareness, cognition, and
decision-making has been provided in this study. The paper separately explains
the humanoid and autonomous system's performance and highlights the role and
impact of a human in UVs operations.
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