A Review on Internet of Things for Defense and Public Safety
- URL: http://arxiv.org/abs/2402.03599v1
- Date: Tue, 6 Feb 2024 00:16:01 GMT
- Title: A Review on Internet of Things for Defense and Public Safety
- Authors: Paula Fraga-Lamas, Tiago M. Fern\'andez-Caram\'es, Manuel
Su\'arez-Albela, Luis Castedo and Miguel Gonz\'alez-L\'opez
- Abstract summary: The Internet of Things (IoT) is undeniably transforming the way that organizations communicate and organize everyday businesses and industrial procedures.
This survey analyzes the great potential for applying IoT technologies to revolutionize modern warfare and provide benefits similar to those in industry.
It identifies scenarios where Defense and Public Safety could leverage better commercial IoT capabilities to deliver greater survivability to the warfighter or first responders.
- Score: 0.9320657506524147
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The Internet of Things (IoT) is undeniably transforming the way that
organizations communicate and organize everyday businesses and industrial
procedures. Its adoption has proven well suited for sectors that manage a large
number of assets and coordinate complex and distributed processes. This survey
analyzes the great potential for applying IoT technologies (i.e., data-driven
applications or embedded automation and intelligent adaptive systems) to
revolutionize modern warfare and provide benefits similar to those in industry.
It identifies scenarios where Defense and Public Safety (PS) could leverage
better commercial IoT capabilities to deliver greater survivability to the
warfighter or first responders, while reducing costs and increasing operation
efficiency and effectiveness. This article reviews the main tactical
requirements and the architecture, examining gaps and shortcomings in existing
IoT systems across the military field and mission-critical scenarios. The
review characterizes the open challenges for a broad deployment and presents a
research roadmap for enabling an affordable IoT for defense and PS.
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