Contextual Anomaly Detection in Time Series Using Dynamic Bayesian Network

In this paper, we propose a novel method to identify contextual anomaly in time series using Dynamic Bayesian Networks (DBN). DBN is a powerful machine learning approach that captures temporal characteristics of time series data. In order to detect contextual anomaly we integrate contextual information to the DBN framework, referred to as Contextual DBN (CxDBN). The efficacy of CxDBN is shown using a case study of the identification of contextual anomaly in real-time oil well drilling data.

[1]  Kasper Roszbach,et al.  Finance and Growth: Time Series Evidence on Causality , 2013 .

[2]  Peng Wang,et al.  A Time-Distributed Spatiotemporal Feature Learning Method for Machine Health Monitoring with Multi-Sensor Time Series , 2018, Sensors.

[3]  Lance Sherry,et al.  Anomaly detection in aircraft data using Recurrent Neural Networks (RNN) , 2016, 2016 Integrated Communications Navigation and Surveillance (ICNS).

[4]  Lovekesh Vig,et al.  TimeNet: Pre-trained deep recurrent neural network for time series classification , 2017, ESANN.

[5]  Zoubin Ghahramani,et al.  Learning Dynamic Bayesian Networks , 1997, Summer School on Neural Networks.

[6]  Mike West,et al.  Dynamic Bayesian predictive synthesis in time series forecasting , 2016, Journal of Econometrics.

[7]  Hans-Peter Kriegel,et al.  LOF: identifying density-based local outliers , 2000, SIGMOD 2000.

[8]  Sateesh Kumar Pradhan,et al.  ANOMALY DETECTION USING ARTIFICIAL NEURAL NETWORK , 2012 .

[9]  Qi Liu,et al.  Unsupervised detection of contextual anomaly in remotely sensed data , 2017 .

[10]  Lain L. MacDonald,et al.  Hidden Markov and Other Models for Discrete- valued Time Series , 1997 .

[11]  Aleksandar Lazarevic,et al.  Incremental Local Outlier Detection for Data Streams , 2007, 2007 IEEE Symposium on Computational Intelligence and Data Mining.

[12]  Lovekesh Vig,et al.  Long Short Term Memory Networks for Anomaly Detection in Time Series , 2015, ESANN.

[13]  Svetlana Yanushkevich,et al.  Detection of Asymmetric Abnormalities in Gait using Depth Data and Dynamic Bayesian Networks , 2018, 2018 14th IEEE International Conference on Signal Processing (ICSP).

[14]  Concha Bielza,et al.  Dynamic Bayesian Network-Based Anomaly Detection for In-Process Visual Inspection of Laser Surface Heat Treatment , 2016, ML4CPS.

[15]  Nan Ding,et al.  RADM:Real-Time Anomaly Detection in Multivariate Time Series Based on Bayesian Network , 2018, International Conferences on Smart Internet of Things.

[16]  Sajal K. Das,et al.  An Adaptive Bayesian System for Context-Aware Data Fusion in Smart Environments , 2017, IEEE Transactions on Mobile Computing.

[17]  H.H. Aviles-Arriaga,et al.  Visual recognition of gestures using dynamic naive Bayesian classifiers , 2003, The 12th IEEE International Workshop on Robot and Human Interactive Communication, 2003. Proceedings. ROMAN 2003..

[18]  Nir Friedman,et al.  Bayesian Network Classifiers , 1997, Machine Learning.

[19]  Ting Li,et al.  Abnormal Event Detection Method in Surveillance Video Based on Temporal CNN and Sparse Optical Flow , 2019, ICCDE' 19.

[20]  Ali Chamkalani,et al.  Support Vector Machine Model: A New Methodology for Stuck Pipe Prediction , 2013 .

[21]  Haibin Zhang,et al.  Fault Detection and Repairing for Intelligent Connected Vehicles Based on Dynamic Bayesian Network Model , 2018, IEEE Internet of Things Journal.

[22]  Fei Wang,et al.  A Healthcare Utilization Analysis Framework for Hot Spotting and Contextual Anomaly Detection , 2012, AMIA.

[23]  Keith C. C. Chan,et al.  Fuzzy Feature Extraction for Multichannel EEG Classification , 2018, IEEE Transactions on Cognitive and Developmental Systems.

[24]  VARUN CHANDOLA,et al.  Anomaly detection: A survey , 2009, CSUR.