Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information
Alice Agogino, Hae Young Jang, Vivek Rao, Ritik Batra, Felicity Liao,, Rohan Sood, Irving Fang, R. Lily Hu, Emerson Shoichet-Bartus, John Matranga

TL;DR
This paper presents a machine learning-based framework for optimizing the deployment of emergency sensors in industrial plants, using Expected Value of Information to enhance decision-making during disasters.
Contribution
It introduces a novel approach combining AI techniques and EVI to strategically deploy sensors, improving emergency response and resilience in complex industrial environments.
Findings
Effective sensor placement improves decision accuracy.
EVI-guided deployment increases information value.
Case study demonstrates practical applicability.
Abstract
Although the Industrial Internet of Things has increased the number of sensors permanently installed in industrial plants, there will be gaps in coverage due to broken sensors or sparse density in very large plants, such as in the petrochemical industry. Modern emergency response operations are beginning to use Small Unmanned Aerial Systems (sUAS) that have the ability to drop sensor robots to precise locations. sUAS can provide longer-term persistent monitoring that aerial drones are unable to provide. Despite the relatively low cost of these assets, the choice of which robotic sensing systems to deploy to which part of an industrial process in a complex plant environment during emergency response remains challenging. This paper describes a framework for optimizing the deployment of emergency sensors as a preliminary step towards realizing the responsiveness of robots in disaster…
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