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Adaptive Trajectory Prediction Algorithm for Climbing Flights
Author(s) -
Charles Schultz,
David P. Thipphavong,
Heinz Erzberger
Publication year - 2012
Publication title -
aiaa guidance, navigation and control conference
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2012-4931
Subject(s) - climb , trajectory , airspeed , computer science , climbing , reduction (mathematics) , algorithm , position (finance) , simulation , control theory (sociology) , artificial intelligence , mathematics , engineering , aerospace engineering , control (management) , physics , structural engineering , astronomy , geometry , finance , economics
Aircraft climb trajectories are difficult to predict, and large errors in these predictions reduce the potential operational benefits of some advanced features for Next Generation Air Transportation System (NextGen). The algorithm described in this paper improves climb trajectory prediction accuracy by adjusting trajectory predictions based on observed track data. It utilizes rate-of-climb and airspeed measurements derived from position data to dynamically adjust the aircraft weight modeled for trajectory predictions. In simulations with weight uncertainty, the algorithm is able to adapt to within 3 percent of the actual gross weight within two minutes of the initial adaptation. The root-mean-square of altitude errors for five-minute predictions was reduced by 73 percent. Conflict detection performance also improved, with a 15 percent reduction in missed alerts and a 10 percent reduction in false alerts. In a simulation with climb speed capture intent and weight uncertainty, the algorithm improved climb trajectory prediction accuracy by up to 30 percent and conflict detection performance, reducing missed and false alerts by up to 10 percent.

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