先进的轨迹建模:在地面自动化中使用飞机衍生数据

Victoria Gallagher, Alicia Borgman Fernandes
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引用次数: 1

摘要

在当前的空中交通管理环境中,地面和飞机自动化系统使用具有不同预测保真度的飞行轨迹来管理飞机从登机口到登机口的运动。这些自动化系统利用多种信息源,包括飞机特性和性能参数的静态查找表,来生成各自的轨迹预测。因此,不同系统产生的轨迹预测存在差异。预测轨迹的差异必然导致空域用户和空中交通管理的效率低下。先进轨迹建模项目利用数字环境和航空技术的创新,探索空地信息交换的潜力,使使用飞行特定信息能够提高地面自动化轨迹建模能力。这里报告的项目活动侧重于使用飞机衍生的数据进行地面自动化轨迹预测,以支持到达计量操作。基于性能的飞行管理系统(FMS)可以提供一小部分数据,轨迹预测器可以使用这些数据;即飞机质量,下降位置顶部和下降速度时间表。基于几何的FMS可以提供第二个小数据集,轨迹预测器可以使用:垂直导航模式下的地面速度、飞行路径角度和下降速度。另外,还使用了一个更全面的数据集,即轨迹和速度剖面,该数据集类似于扩展预测剖面报告,并增加了下降速度剖面。本研究使用基于时间的流量管理(TBFM)和途中自动化现代化(ERAM)的轨迹预测因子。项目团队进行了模拟,其中这些飞机衍生数据由FMS提供,并整合到ERAM和TBFM轨迹预测器中。与不使用飞机衍生数据计算的轨迹预测相比,飞机衍生数据对地面自动化轨迹预测的准确性有相当大的影响,提高了下降位置预测的精度以及到达仪表定位的估计时间。本文讨论了用例场景、模拟体系结构环境、分析方法、假设和限制以及本研究的结果。
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Advanced trajectory modeling: Use of aircraft-derived data in ground automation
In the current air traffic management environment, flight trajectories with varying prediction fidelities are used by ground and aircraft automation systems to manage aircraft movement from gate-to-gate. These automation systems utilize multiple information sources, including static look up tables for aircraft characteristics and performance parameters, to each generate their trajectory predictions. As a result, there are differences in the trajectory predictions produced by different systems. Differences in predicted trajectories inherently lead to inefficiencies for both the airspace users and air traffic management. The Advanced Trajectory Modeling project leveraged innovations in the digital environment and aviation technologies to explore the potential of air-ground information exchanges to enable the use of flight-specific information to improve the ground automation trajectory modeling capabilities. The project activities reported here focused on using aircraft-derived data for ground automation trajectory predictions in support of arrival metering operations. A small set of data was derived that performance-based Flight Management Systems (FMS) could provide and that trajectory predictors could use; namely, aircraft mass, top of descent location, and descent speed schedule. A second small data set was derived that geometric-based FMS could provide and trajectory predictors could use: ground speed, flight path angle, and descent speed at the time of vertical navigation mode engagement. An additional, more comprehensive data set was also used, a Trajectory and Speed Profile, that was similar to the Extended Projected Profile report augmented with the descent speed profile. The trajectory predictors of Time Based Flow Management (TBFM) and En Route Automation Modernization (ERAM) were used in this research. The project team conducted simulations in which these aircraft-derived data were provided by operational FMS and incorporated into the ERAM and TBFM trajectory predictors. The aircraft-derived data had a sizable impact on the accuracy of ground automation trajectory predictions when compared with trajectory predictions computed without the aircraft-derived data, improving top of descent location prediction accuracy as well as estimated time of arrival at the meter fix. This paper discusses the use case scenarios, simulation architecture environment, analysis methodologies, assumptions and limitations, and results of this research.
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