Machine Learning-Based Traffic Management Model for UAS Instantaneous Density Prediction in an Urban Area

被引:5
|
作者
Zhao, Ziyi [1 ]
Luo, Chen [1 ]
Solomon, Adrian [3 ]
Basti, Franco [3 ]
Caicedo, Carlos [2 ]
Gursoy, M. Cenk [1 ]
Qiu, Qinru [1 ]
机构
[1] Syracuse Univ, Dept Elect Engn & Comp Sci, Syracuse, NY 13244 USA
[2] Syracuse Univ, Sch Informat Studies, Syracuse, NY 13244 USA
[3] Thales USA, Thales Digital Aviat Customer Success & Innovat, Arlington, VA 22202 USA
关键词
instantaneous density prediction; UAS; spatial-temporal model; continuous prediction framework;
D O I
10.1109/dasc50938.2020.9256471
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
The number of daily sUAS operations in uncontrolled low altitude airspace is expected to reach into the millions in a few years. Therefore, UAS density prediction has become an emerging and challenging problem. In this paper, a machine learning-based UAS instantaneous density prediction model is presented. The model takes two types of data as input: 1) the historical density generated from the historical data, and 2) the future sUAS mission information. The architecture of our model contains four components: Historical Density Formulation module, UAS Mission Translation module, Mission Feature Extraction module, and Density Map Projection module. The training and testing data are generated by a python based simulator which is inspired by the multi-agent air traffic resource usage simulator (MATRUS) framework. The quality of prediction is measured by the correlation score and the Area Under the Receiver Operating Characteristics (AUROC) between the predicted value and simulated value. The experiment results demonstrate outstanding performance of the machine learning-based UAS density predictor. Compared to the baseline models, for simplified traffic scenario where no-fly zones and safe distance among sUASs are not considered, our model improves the prediction accuracy by up to 15.2% and its correlation score reaches 0.947. In a more realistic scenario, where the no-fly zone avoidance and the safe distance among sUASs are maintained using A* routing algorithm, our model can still achieve 0.822 correlation score. Meanwhile, the AUROC can reach 0.951 for the hot spot prediction. Finally, we extend our UAS instantaneous density prediction model to a continuous prediction framework. By applying the continuous prediction framework, the UAS density prediction time horizon can be significantly increased from 60 simulation cycles to 360 simulation cycles (1 hour), with highest 0.892 correlation score on average. This feature grants us a chance to apply our density prediction model in real-word scenarios.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Development and application of a machine learning-based antenatal depression prediction model
    Hu, Chunfei
    Lin, Hongmei
    Xu, Yupin
    Fu, Xukun
    Qiu, Xiaojing
    Hu, Siqian
    Jin, Tong
    Xu, Hualin
    Luo, Qiong
    JOURNAL OF AFFECTIVE DISORDERS, 2025, 375 : 137 - 147
  • [32] An integrated prediction model for traffic noise in an urban area
    Mongelli, Domenico Walter Edvige
    2013 IEEE INTERNATIONAL CONFERENCE ON SERVICE OPERATIONS AND LOGISTICS, AND INFORMATICS (SOLI), 2013, : 198 - 204
  • [33] A Machine Learning-Based Prediction Model for Preterm Birth in Rural India
    Raja, Rakesh
    Mukherjee, Indrajit
    Sarkar, Bikash Kanti
    JOURNAL OF HEALTHCARE ENGINEERING, 2021, 2021
  • [34] Towards a Machine Learning-based Model for Corporate Loan Default Prediction
    Berrada, Imane Rhzioual
    Barramou, Fatimazahra
    Alami, Omar Bachir
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2024, 15 (03) : 565 - 573
  • [35] Development and application of machine learning-based prediction model for distillation column
    Kwon, Hyukwon
    Oh, Kwang Cheol
    Choi, Yeongryeol
    Chung, Yongchul G.
    Kim, Junghwan
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2021, 36 (05) : 1970 - 1997
  • [36] Machine Learning-Based Ground Peak Acceleration Attenuation Prediction Model
    Yang, Changwei
    Pan, Yitao
    Zhang, Kaiwen
    Yue, Mao
    Wen, Hao
    Wang, Feng
    JOURNAL OF EARTHQUAKE ENGINEERING, 2025, 29 (02) : 324 - 338
  • [37] Machine learning-based prediction model for hypofibrinogenemia after tigecycline therapy
    Zhu, Jianping
    Zhao, Rui
    Yu, Zhenwei
    Li, Liucheng
    Wei, Jiayue
    Guan, Yan
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2024, 24 (01)
  • [38] Machine Learning-Based Model for Prediction of Power Consumption in Smart Grid
    Tiwari, Shamik
    Jain, Anurag
    Yadav, Kusum
    Ramadan, Rabie
    INTERNATIONAL ARAB JOURNAL OF INFORMATION TECHNOLOGY, 2022, 19 (03) : 323 - 329
  • [39] A Machine Learning-Based Prediction Model for Cardiovascular Risk in Women With Preeclampsia
    Wang, Guan
    Zhang, Yanbo
    Li, Sijin
    Zhang, Jun
    Jiang, Dongkui
    Li, Xiuzhen
    Li, Yulin
    Du, Jie
    FRONTIERS IN CARDIOVASCULAR MEDICINE, 2021, 8
  • [40] Considerations and prospects for validating a machine learning-based choledocholithiasis prediction model
    Chen, Dexin
    Zhai, Yaqi
    Li, Mingyang
    ENDOSCOPY, 2024, 56 (07) : 553 - 553