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Learning the aircraft mass and thrust to improve the ground-based trajectory prediction of climbing flights

机译:学习飞机的质量和推力,以改善爬升飞行的地面轨迹预测

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Ground-based aircraft trajectory prediction is a major concern in air traffic control and management. A safe and efficient prediction is a prerequisite to the implementation of automated tools that detect and solve conflicts between trajectories. This paper focuses on the climb phase, because predictions are much less accurate in this phase than in the cruising phase. Trajectory prediction usually relies on a point-mass model of the forces acting on the aircraft to predict the successive points of the future trajectory. The longitudinal acceleration and climb rate are determined by an equation relating the modeled power of the forces to the kinetic and potential energy rate. Using such a model requires knowledge of the aircraft state (mass, current thrust setting, position, velocity, etc.), atmospheric conditions (wind, temperature) and aircraft intent (thrust law, speed intent). Most of this information is not available to ground-based systems. In this paper, we improve the trajectory prediction accuracy by learning some of the unknown point-mass model parameters from past observations. These unknown parameters, mass and thrust, are adjusted by fitting the modeled specific power to the observed energy rate. The thrust law is learned from historical data, and the mass is estimated on past trajectory points. The adjusted parameters are not meant to be exact, however they are designed so as to improve the energy rate prediction. The performances of the proposed method are compared with the results of standard model-based methods relying on the Eurocontrol Base of Aircraft DAta (BADA), using two months of radar track records and weather data.
机译:地面飞机的航迹预测是空中交通管制和管理中的主要问题。安全有效的预测是实现检测和解决轨迹之间的冲突的自动化工具的先决条件。本文重点关注爬升阶段,因为在此阶段的预测比在巡航阶段的准确性要低得多。轨迹预测通常依赖于作用在飞机上的力的点质量模型来预测未来轨迹的连续点。纵向加速度和爬升率由将力的建模能力与动能和势能速率相关的方程式确定。使用这种模型需要了解飞机状态(质量,当前推力设置,位置,速度等),大气条件(风,温度)和飞机意图(推力定律,速度意图)。大多数此类信息不适用于地面系统。在本文中,我们通过从过去的观察中学习一些未知的点质量模型参数来提高轨迹预测的准确性。这些未知参数(质量和推力)通过将建模的比功率拟合到观测到的能量速率来进行调整。推力定律是从历史数据中获悉的,并且质量是根据过去的轨迹点估算的。调整后的参数并不意味着精确,但是设计这些参数是为了提高能效预测。使用两个月的雷达跟踪记录和天气数据,将所提出的方法的性能与依靠飞机DAta(BADA)欧洲控制基地的基于标准模型的方法的结果进行了比较。

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