Presentation + Paper
12 April 2021 A Bayesian spatio-temporal aircraft route predictive algorithm with applications to military operations
Charlie S. Harrington, Bryan P. Jonas, Frank Czerniakowski, Nicholas J. Clark
Author Affiliations +
Abstract
The International Civil Aviation Organization’s 2020 mandate for all aircraft to have Automatic Dependent Surveillance-Broadcast (ADS-B) equipment installed poses a unique challenge to the military. With the use of cheap sensors, adversaries now can collect real-time data on flights transporting troops. In this paper, we outline a statistical model that can be leveraged both defensively and offensively. Our model, a time-series spatial process model with a first-order Markov assumption, can be used to develop a flight path that could help a military aircraft seem like ordinary air traffic to an observer. This would prevent adversaries from identifying and tracking these flights as easily. The model can also be used to predict the destination of flights based on their observed location. These real-time flight predictions use Bayesian updating to improve their accuracy as more information about the flight is observed.
Conference Presentation
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Charlie S. Harrington, Bryan P. Jonas, Frank Czerniakowski, and Nicholas J. Clark "A Bayesian spatio-temporal aircraft route predictive algorithm with applications to military operations", Proc. SPIE 11746, Artificial Intelligence and Machine Learning for Multi-Domain Operations Applications III, 117461B (12 April 2021); https://doi.org/10.1117/12.2585129
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KEYWORDS
Analytical research

Defense and security

Defense technologies

Detection and tracking algorithms

Military intelligence

Motion analysis

Statistical analysis

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