2011 24th Canadian Conference on Electrical and Computer Engineering(CCECE) 2011
DOI: 10.1109/ccece.2011.6030716
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Disaster management in real time simulation using machine learning

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Cited by 16 publications
(8 citation statements)
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“…People have recently enhanced their use of social media sites and others to broadcast a range of data such as stylistic messages, photographs, and films online during the outbreak of any natural or man-made calamity in the current era [34]. In previous natural and social crisis scenarios, such as flooding, social media data have shown to be a vital source of information, earthquakes, wildfires, nuclear disasters, and civil wars [35].…”
Section: Artificial Intelligence and Disaster Managementmentioning
confidence: 99%
“…People have recently enhanced their use of social media sites and others to broadcast a range of data such as stylistic messages, photographs, and films online during the outbreak of any natural or man-made calamity in the current era [34]. In previous natural and social crisis scenarios, such as flooding, social media data have shown to be a vital source of information, earthquakes, wildfires, nuclear disasters, and civil wars [35].…”
Section: Artificial Intelligence and Disaster Managementmentioning
confidence: 99%
“…In past, large numbers of people died due to suffocation in crowded areas in various public gathering events. Better crowd management can be made in such events to avoid accidents [ 29 , 30 , 31 ].…”
Section: Applicationsmentioning
confidence: 99%
“…The emotion elicitation process they used was based on the Appraisal Theory (Lazarus, 1991). Khouj et al showed some prelaminar results of the modelling and simulation of an intelligent agent by using RL algorithms to assist a human emergency responder, with a goal of maximizing the number of patients discharged from hospitals or on-site emergency units (Khouj et al, 2011). During the simulations, the proposed agent, called DAARTS (Decision Assistant Agent in Real Time Simulation), was able to help the emergency responder, leading to a favorable outcome.…”
Section: Agent Behaviormentioning
confidence: 99%