___________________________________________________ Intelligent Planning and Collaborative Systems for Emergency Response

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___________________________________________________ Intelligent Planning and Collaborative Systems for Emergency Response
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___________________________________________________ Intelligent Planning and Collaborative Systems for Emergency Response UNIQUE AIAI RESOURCES More than 20 years of excellence in applied Artificial Intelligence World-leading AI planning research and technical team World-leading knowledge modelling and representation resources and staff O-Plan: Multi-Perspective Planning Architecture and Planning Web Service I-X: Issue Handling Planning and Collaboration Architecture : Knowledge Elicitation, Encoding, Modelling, Representation, and Management I-X commercialisation through Scottish Enterprise Proof-of-Concept Award: IM-PACs

2 e-Response Vision  The creation and use of task-centric virtual organisations involving people, government and non-governmental organisations, automated systems, grid and web services working alongside intelligent robotic, vehicle, building and environmental systems to respond to very dynamic events on scales from local to global.  Multi-level emergency response and aid systems  Personal, vehicle, home, organisation, district, regional, national, international  Backbone for progressively more comprehensive aid and emergency response  Also used for aid-orientated commercial services  Robust, secure, resilient, distributed system of systems  Advanced knowledge and collaboration technologies  Low cost, pervasive sensors, computing and comms.  Changes in building codes, regulations and practices

3 e-Response Relevant Technologies  Sensors and Information Gathering sensor facilities, large-scale sensor grids human and photographic intelligence gathering information and knowledge validation and error reduction semantic web and meta-knowledge simulation and prediction data interpretation identification of "need"  Emergency Response Capabilities and Availability robust multi-modal communications matching needs, brokering and "trading" systems agent technology for enactment, monitoring and control  Hierarchical, distributed, large scale systems local versus centralized decision making and control mobile and survivable systems human and automated adjustable autonomy mixed-initiative decision making mixed-initiative, multi-agent planning and control trust, security  Common Operating Methods shared information and knowledge bases Shared standards and interlingua shared human scale self help web sites and collaboration aids shared standard operating procedures at levels from local to international standards for signs, warnings, etc.  Public Education publicity materials self help aids public training

4 FireGrid Technologies Maps, Models, Scenarios Super-real-time Simulation Knowledge Systems, Planning & Control Emergency Responders Computational Grid Tens of Thousands of Sensors & Monitors

5 I-X Multi-Agency Emergency Response Planning, Execution, and Task-Oriented Communications Collaboration and Communication Command Centre Central Authorities Isolated Personnel Emergency Responders

6 Adapted from H. Kitano and S. Tadokoro, RoboCup Rescue A Grand Challenge for Multiagent and Intelligent Systems, AI Magazine, Spring, Cycle 20 Cycle 200 Blocked RoadsRoadsBuildings Ambulance TeamFire BrigadePolice Force Ambulance Centre Fire Station Police Office Search and Rescue Command Centre RoboCup Rescue Simulator Simulates the Kobe earthquake Sends sensorial information to agents, receiving back action commands I-X Agents Divided in three hierarchical decision-making levels Support ideas such as activity oriented planning, coordination and knowledge sharing Interaction I-X to Kobe Simulator Information from RCRS to I-X is converted to the format

7 More Information i-rescue.org i-x.info i-c2.com