A Martingale-based Approach for Flight Behavior Anomaly Detection

被引:8
作者
Ho, Shen-Shyang [1 ]
Schofield, Matthew [1 ]
Sun, Bo [1 ]
Snouffer, Jason M. [2 ]
Kirschner, Jean R. [2 ]
机构
[1] Rowan Univ, Dept Comp Sci, Glassboro, NJ 08028 USA
[2] ASRC Fed Mission Solut, Moorestown, NJ USA
来源
2019 20TH INTERNATIONAL CONFERENCE ON MOBILE DATA MANAGEMENT (MDM 2019) | 2019年
关键词
anomaly detection; multivariate time series; Gaussian regression process; stochastic process; OUTLIER DETECTION;
D O I
10.1109/MDM.2019.00-75
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The timely detection of anomalous flight behavior is critical to ensure a prompt and appropriate response to mitigate any dangers to flight safety or hindrance of logistics operations. Most previous approaches focused on anomaly detection, leading them to only be able to raise an alert after an occurrence of an anomaly. A more effective approach is to predict a potential anomaly based on current observations, thus cutting down on detection time and allowing for a more expedient response. We propose a novel martingale-based approach to predict anomalous flight behavior in the near future as data points are observed one by one in real-time. The proposed anomaly prediction method consists of two components: (i) utilization of regression to model the historical full flight behavior and (ii) monitoring of the realtime flight behavior using a martingale (stochastic) process. The latter component consists of two prediction steps: (i) first to predict future values of multiple target variables (e. g., latitude, longitude, and altitude) using regression models, and (ii) then to decide whether the predicted values exhibit anomalies. In particular, our proposed method uses martingale tests on multiple Gaussian process regression (GPR) predictive models of target variables. The main advantages of the proposed method are: (i) the use of multiple martingale tests allows one to have a tighter false positive bound for anomaly detection/prediction, and (ii) the prediction steps reduce the delay time for anomaly detection. Experimental results on real-world data show that the performance (mean delay time, recall, and precision) of our proposed approach is competitive against other compared methods.
引用
收藏
页码:43 / 52
页数:10
相关论文
共 22 条
  • [1] Balasubramanian Vineeth, 2014, Conformal prediction for reliable machine learning: theory, adaptations and applications
  • [2] Outlier detection in regression models with ARIMA errors using robust estimates
    Bianco, AM
    Ben, MG
    Martínez, EJ
    Yohai, VJ
    [J]. JOURNAL OF FORECASTING, 2001, 20 (08) : 565 - 579
  • [3] Cheng H., 2009, P SIAM INT C DAT MIN, P413, DOI 10.1137/1.9781611972795.36
  • [4] Detecting flight trajectory anomalies and predicting diversions in freight transportation
    Di Ciccio, Claudio
    Van der Aa, Han
    Cabanillas, Cristina
    Mendling, Jan
    Prescher, Johannes
    [J]. DECISION SUPPORT SYSTEMS, 2016, 88 : 1 - 17
  • [5] Ester M., 1996, P 2 INT C KNOWL DISC
  • [6] Trajectory Clustering and an Application to Airspace Monitoring
    Gariel, Maxime
    Srivastava, Ashok N.
    Feron, Eric
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2011, 12 (04) : 1511 - 1524
  • [7] Gu XH, 2009, PROC INT CONF DATA, P1000, DOI 10.1109/ICDE.2009.128
  • [8] Outlier Detection for Temporal Data: A Survey
    Gupta, Manish
    Gao, Jing
    Aggarwal, Charu C.
    Han, Jiawei
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2014, 26 (09) : 2250 - 2267
  • [9] Ho S.-S., 2005, P 22 INT C MACH LEAR, P321, DOI [10.1145/1102351.1102392, DOI 10.1145/1102351.1102392]
  • [10] A Martingale Framework for Detecting Changes in Data Streams by Testing Exchangeability
    Ho, Shen-Shyang
    Wechsler, Harry
    [J]. IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2010, 32 (12) : 2113 - 2127