计算机科学
运动(音乐)
大气模式
数据建模
ASDE-X公司
气象学
环境科学
地理
地图学
空中交通管制
数据库
美学
哲学
作者
Ingrid Navarro,Pablo Ortega,Jay Patrikar,Haichuan Wang,Zelin Ye,Jong Hoon Park,Jean Oh,Sebastian Scherer
摘要
The growing demand for air travel requires technological advancements in air traffic management as well as mechanisms for monitoring and ensuring safe and efficient operations.In terminal airspaces, predictive models of future movements and traffic flows can help with proactive planning and efficient coordination; however, varying airport topologies, and interactions with other agents, among other factors, make accurate predictions challenging.Datadriven predictive models have shown promise for handling numerous variables to enable various downstream tasks, including collision risk assessment, taxi-out time prediction, departure metering, and emission estimations.While data-driven methods have shown improvements in these tasks, prior works lack large-scale curated surface movement datasets within the public domain and the development of generalizable trajectory forecasting models.In response to this, we propose two contributions: (1) Amelia-48 dataset, a large surface movement dataset collected using the System Wide Information Management (SWIM) Surface Movement Event Service (SMES).With data collection beginning in December 2022, the Phase1 Amelia-48 dataset provides more than a year's worth of SMES data (∼30TB) and covers 48 airports within the US National Airspace System.In addition to releasing this data in the public domain, we also provide post-processing scripts and associated airport maps to enable research in the forecasting domain and beyond.( 2) Amelia-TF model, a transformer-based next-token-prediction large multi-agent multi-airport trajectory forecasting model trained on 292 days or 9.4 billion tokens of position data encompassing 10 different airports with varying topology.The open-sourced Amelia-TF model is validated on unseen airports with experiments showcasing the different prediction horizon lengths, ego-agent selection strategies, and training recipes to demonstrate the generalization capabilities.
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