Abstract

Aircraft trajectory planning is affected by various uncertainties. Among them, those in weather prediction have a large impact on the aircraft dynamics. Trajectory planning that assumes a deterministic weather scenario can cause significant performance degradation and constraint violation if the actual weather conditions are significantly different from the assumed ones. The present study proposes a fundamental framework to plan four-dimensional optimal descent trajectories that are robust against uncertainties in weather-prediction data. To model the nature of the uncertainties, we utilize the Global Ensemble Forecast System, which provides a set of weather scenarios, also referred to as members. A robust trajectory planning problem is constructed based on the robust optimal control theory, which simultaneously considers a set of trajectories for each of the weather scenarios while minimizing the expected value of the overall operational costs. We validate the proposed planning algorithm with a numerical simulation, assuming an arrival route to Leipzig/Halle Airport in Germany. Comparison between the robust and the inappropriately-controlled trajectories shows the proposed robust planning strategy can prevent deteriorated costs and infeasible trajectories that violate operational constraints. The simulation results also confirm that the planning can deal with a wide range of cost-index and required-time-of-arrival settings, which help the operators to determine the best values for these parameters. The framework we propose is in a generic form, and therefore it can be applied to a wide range of scenario settings.

Highlights

  • Aircraft trajectory planning, theoretically leading to a trajectory optimization problem, requires a variety of models and input data to predict a trajectory

  • The present study proposes a framework for planning four-dimensional (4D) optimal descent trajectories that are robust against uncertainties in weather prediction

  • This study proposes a fundamental framework and computational algorithms for planning optimal descent trajectories that are robust against uncertainties in weather prediction

Read more

Summary

Introduction

Theoretically leading to a trajectory optimization problem, requires a variety of models and input data to predict a trajectory. González-Arribas et al applied robust optimal control for cruise flight with an uncertain wind condition by employing ensemble prediction systems (EPS) [28] and confirmed the method could reduce the impact of uncertain wind on the planning, taking as reference one year of trajectory data and multiple origin–destination pairs [29]. The same authors proposed a heuristic method based on parallel graphics processing unit (GPU) computation [31], finding robust trajectories in computational times that are compatible with real operations (∼1 s), and considering the level flight, but step-climbs and step-descents In addition to these works, Matsuno et al applied stochastic optimal control to CD&R problems and solved them with gPC and GPM [32]. Studies on these topics for deterministic planning can be found in [15,16]

Uncertainty Models of Weather Prediction
Flight Performance Models
Objective
Robust Trajectory Planning
Findings
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.