Home // ICAS 2013, The Ninth International Conference on Autonomic and Autonomous Systems // View article
Methodology of Training and Support for Urban Search and Rescue With Robots
Authors:
Janusz Bedkowski
Karol Majek
Igor Ostrowski
Pawel Musialik
Andrzej Maslowski
Artur Adamek
Antonio Coelho
Geert De Cubber
Keywords: USAR; robot; training and support; qualitative reasoning
Abstract:
A primordial task of the fire-fighting and rescue services in the event of a large crisis is the search for human survivors on the incident site. This task, being complex and dangerous, often leads to loss of lives. Unmanned search and rescue devices can provide a valuable tool for saving human lives and speeding up the search and rescue operations. Urban Search and Rescue (USAR) community agrees with the fact that the operator skill is the main factor for successfully using unmanned robotic platforms. The key training concept is “train as you fight” mentality. Intervention troops focalize on “real training”, as a crisis is difficult to simulate. For this reason, in this paper a methodology of training and support for USAR with unmanned vehicles is proposed. The methodology integrates the Qualitative Spatio-Temporal Representation and Reasoning (QSTRR) framework with USAR tools to decrease the cognitive load on human operators working with sophisticated robotic platforms. Tools for simplifying and improving virtual training environment generation from life data are shown.
Pages: 77 to 82
Copyright: Copyright (c) IARIA, 2013
Publication date: March 24, 2013
Published in: conference
ISSN: 2308-3913
ISBN: 978-1-61208-257-8
Location: Lisbon, Portugal
Dates: from March 24, 2013 to March 29, 2013