数据驱动的近航站楼空中交通流动力学控制方程辨识

IF 3.6 2区 工程技术 Q2 TRANSPORTATION
Qihang Xu, Yutian Pang, Zhiming Zhang, Yongming Liu
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引用次数: 0

摘要

有效的空中交通管理依赖于对空中交通模式和延误的准确理解和预测。虽然深度学习方法在预测任务中显示出前景,但它们往往缺乏可解释性,并且需要大量数据。本文提出了一个新颖的数据驱动框架,通过识别控制空中交通动态的潜在偏微分方程(pde)来建模和预测近航站楼交通流量和航班延误。我们的方法利用飞机轨迹模式和密度分布来估计飞行时间的概率密度函数(pdf)。使用稀疏回归进行系统识别,我们学习了控制方程,该方程捕获了密度和旅行时间分布的时间演变。然后将这些方程嵌入到物理信息神经网络(PINN)中进行综合预测。实际数据的实验验证了该框架在准确识别控制偏微分方程和预测航班延误方面的有效性。该方法将物理建模与深度学习相结合,提高了人工智能在ATM中的可解释性和泛化性,对提高机场效率和运营决策具有实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven governing equation identification of near terminal air traffic flow dynamics
Efficient air traffic management (ATM) relies on accurately understanding and predicting air traffic patterns and delays. While deep learning methods have shown promise in prediction tasks, they often lack interpretability and require large volumes of data. This paper presents a novel, data-driven framework to model and predict near-terminal traffic flow and flight delays by identifying the underlying partial differential equations (PDEs) that govern air traffic dynamics. Our approach leverages aircraft trajectory patterns and density distributions to estimate probability density functions (PDFs) of travel times. Using sparse regression for system identification, we learn the governing equations that capture the temporal evolution of density and travel time distributions. These equations are then embedded into a Physics-Informed Neural Network (PINN) for integrated prediction. Experiments with real-world data validate the framework’s effectiveness in accurately identifying governing PDEs and forecasting flight delays. By combining physical modeling with deep learning, the proposed method improves both the interpretability and generalizability of AI applications in ATM, offering practical value in enhancing airport efficiency and operational decision-making.
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来源期刊
CiteScore
12.40
自引率
11.70%
发文量
97
期刊介绍: The Journal of Air Transport Management (JATM) sets out to address, through high quality research articles and authoritative commentary, the major economic, management and policy issues facing the air transport industry today. It offers practitioners and academics an international and dynamic forum for analysis and discussion of these issues, linking research and practice and stimulating interaction between the two. The refereed papers in the journal cover all the major sectors of the industry (airlines, airports, air traffic management) as well as related areas such as tourism management and logistics. Papers are blind reviewed, normally by two referees, chosen for their specialist knowledge. The journal provides independent, original and rigorous analysis in the areas of: • Policy, regulation and law • Strategy • Operations • Marketing • Economics and finance • Sustainability
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