Research on Airport Traffic Situation Based on Multi-Source Data
DOI:
https://doi.org/10.54097/bmq6j286Keywords:
Multi-source Data Fusion, Airport Traffic Situation, Intelligent Prediction, Optimization Strategies, Deep LearningAbstract
With the rapid development of the aviation industry, the complexity and uncertainty of airport traffic situations have increased significantly. Existing prediction methods for airport operations often rely on single data sources, which fail to comprehensively and accurately reflect dynamic changes in airport operations. This study proposes a multi-source data fusion framework for airport traffic situations and establishes an intelligent prediction model based on the fused data to achieve precise forecasting. Furthermore, optimization strategies for airport operations, including resource allocation and flight scheduling, are proposed based on prediction results. The effectiveness of these strategies is validated through simulation experiments. The results demonstrate that the intelligent prediction method based on multi-source data fusion significantly improves the accuracy and reliability of airport operation forecasting, providing a scientific basis for airport management and enhancing operational efficiency and service quality. The innovation of this research lies in proposing a hierarchical fusion architecture that combines deep learning with attention mechanisms to address spatiotemporal alignment challenges of heterogeneous data, as well as employing multi-objective optimization algorithms to balance resource utilization and passenger satisfaction metrics.
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[1] Shi, D. (2022). Construction and Implementation of a Comprehensive Evaluation Index System for Airport Operations. Journal of Civil Aviation, 6(02), 26–29.
[2] Guo, R., Li, L., & Lei, Z. (2024). Evaluation of Airport Operations. Journal of Transportation Science and Management, 5(21), 9–12.
[3] Du, J. (2023). Dynamic Assessment and Optimization Control Methods for Airport Surface Traffic Situations (Doctoral dissertation, Nanjing University of Aeronautics and Astronautics). DOI:10.27239/d.cnki.gnhhu.2023.000099.
[4] Zhang, Z., & Cha, Z. (2024). Flight Delay Prediction Based on Multi-Airport Terminal Area Traffic Situations. Science, Technology and Engineering, 24(12), 5220–5226.
[5] Xu, Y., Wang, H., & Xiong, M. (2021). Civil Aviation Risk Assessment and Prediction Model Based on PCA-GA-BP. Ship Electronic Engineering, 41(02), 77–81.
[6] Dong, D., Liao, M., & Li, L. (2023). Research on Aviation Security Technical Inspection in ATSQ Construction Based on Grey Relational Analysis. China Science and Technology Information, (24), 117–123.
[7] Ma, X., & Zhao, D. (2023). Entity Extraction Method in Civil Aviation Based on Multi-Model Fusion. Computer Engineering and Design, 44(08), 2516–2522. DOI:10.16208/ j.issn 1000-7024.2023.08.036.
[8] Denver International Airport Case Study. (2022). Aviation Weather Integration Report.
[9] Heathrow Airport Traffic Management. (2023). Annual Operational Review.
[10] Shanghai Hongqiao Airport Pandemic Response Report. (2022).
[11] Grey Relational Analysis in Transportation Systems. (2021). Journal of Advanced Transportation, 45(3), 112–125.
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