Data-Driven Probabilistic Methodology for Aircraft Conflict Detection Under Wind Uncertainty
Jaime de la Mota, Mar\'ia Cerezo-Maga\~na, Alberto Olivares, and, Ernesto Staffetti

TL;DR
This paper introduces a probabilistic approach using polynomial chaos and Karhunen-Loève expansion to efficiently detect aircraft conflicts during cruise, accounting for wind forecast uncertainties.
Contribution
It presents a novel methodology combining polynomial chaos and Karhunen-Loève expansion for probabilistic conflict detection under wind uncertainty, with high computational efficiency.
Findings
Effective conflict probability estimation demonstrated through numerical experiments.
Method handles complex nonlinear aircraft trajectory systems without distribution assumptions.
Computational efficiency achieved with minimal statistical moments requirement.
Abstract
Assuming the availability of a reliable aircraft trajectory planner, this paper presents a probabilistic methodology to detect conflicts between aircraft, in the cruise phase of the flight, in the presence of wind prediction uncertainties quantified by ensemble weather forecasts, which are regarded as realizations of correlated random processes and employed to derive the eastward and northward components of the wind velocity. First, the Karhunen-Lo`eve expansion is used to obtain a series expansion of the wind components in terms of a set of uncorrelated random variables and deterministic coefficients. Then, the uncertainty induced by these uncorrelated random variables in the outputs of the aircraft trajectory planner is quantified by means of the arbitrary polynomial chaos technique. Finally, the probability density function of the great circle distance between each pair of aircraft…
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