IoT-based Emergency Evacuation Systems
Mahyar Tourchi Moghaddam

TL;DR
This paper presents an IoT-based system for emergency evacuation that offers real-time, adaptive evacuation paths, leveraging sensory data, network algorithms, and social agent modeling to enhance safety and efficiency during disasters.
Contribution
It introduces a comprehensive IoT architecture with adaptive patterns, a network flow algorithm for evacuation optimization, and empirical validation through real case studies.
Findings
Optimized evacuation times demonstrated in case studies
Effective real-time path adjustments based on sensory data
Enhanced system fault-tolerance and performance metrics
Abstract
Fires, earthquakes, floods, hurricanes, overcrowding, or and even pandemic viruses endanger human lives. Hence, designing infrastructures to handle possible emergencies has become an ever-increasing need. The safe evacuation of occupants from the building takes precedence when dealing with the necessary mitigation and disaster risk management. This thesis deals with designing an IoT system to provide safe and quick evacuation suggestions. The IoT-based evacuation system provides optimal evacuation paths that can be continuously updated based on run-time sensory data, so evacuation guidelines can be adjusted according to visitors occupants that evolve over time. This thesis makes the following main contributions: i) Addressing an up to date state of the art class for IoT architectural styles and patterns; ii) Proposing a set of self-adaptive IoT patterns and assessing their specific…
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