• DocumentCode
    3846595
  • Title

    Semantic Knowledge-Based Framework to Improve the Situation Awareness of Autonomous Underwater Vehicles

  • Author

    Emilio Miguelanez;Pedro Patron;Keith E. Brown;Yvan R. Petillot;David M. Lane

  • Author_Institution
    SeeByte, the Orchard Brae House, Edinburgh
  • Volume
    23
  • Issue
    5
  • fYear
    2011
  • Firstpage
    759
  • Lastpage
    773
  • Abstract
    This paper proposes a semantic world model framework for hierarchical distributed representation of knowledge in autonomous underwater systems. This framework aims to provide a more capable and holistic system, involving semantic interoperability among all involved information sources. This will enhance interoperability, independence of operation, and situation awareness of the embedded service-oriented agents for autonomous platforms. The results obtained specifically affect the mission flexibility, robustness, and autonomy. The presented framework makes use of the idea that heterogeneous real-world data of very different type must be processed by (and run through) several different layers, to be finally available in a suited format and at the right place to be accessible by high-level decision-making agents. In this sense, the presented approach shows how to abstract away from the raw real-world data step by step by means of semantic technologies. The paper concludes by demonstrating the benefits of the framework in a real scenario. A hardware fault is simulated in a REMUS 100 AUV while performing a mission. This triggers a knowledge exchange between the status monitoring agent and the adaptive mission planner embedded agent. By using the proposed framework, both services can interchange information while remaining domain independent during their interaction with the platform. The results of this paper are readily applicable to land and air robotics.
  • Keywords
    "Underwater vehicles","Robustness","Decision making","Ontologies","Knowledge representation","Data mining","Hardware","Monitoring","Robot kinematics","Remotely operated vehicles"
  • Journal_Title
    IEEE Transactions on Knowledge and Data Engineering
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2010.46
  • Filename
    5432174