Proactive Critical Energy Infrastructure Protection via Deep Feature Learning

Autonomous fault detection plays a major role in the Critical Energy Infrastructure (CEI) domain, since sensor faults cause irreparable damage and lead to incorrect results on the condition monitoring of Cyber-Physical (CP) systems. This paper focuses on the challenging application of wind turbine (WT) monitoring. Specifically, we propose the two challenging architectures based on learning deep features, namely—Long Short Term Memory-Stacked Autoencoders (LSTM-SAE), and Convolutional Neural Network (CNN-SAE), for semi-supervised fault detection in wind CPs. The internal learnt features will facilitate the classification task by assigning each upcoming measurement into its corresponding faulty/normal operation status. To illustrate the quality of our schemes, their performance is evaluated against real-world’s wind turbine data. From the experimental section we are able to validate that both LSTM-SAE and CNN-SAE schemes provide high classification scores, indicating the high detection rate of the fault level of the wind turbines. Additionally, slight modification on our architectures are able to be applied on different fault/anomaly detection categories on variant Cyber-Physical systems.

[1]  Iury Valente de Bessa,et al.  Data-driven fault detection and isolation scheme for a wind turbine benchmark , 2016 .

[2]  Plamen P. Angelov,et al.  An evolving approach to unsupervised and Real-Time fault detection in industrial processes , 2016, Expert Syst. Appl..

[3]  Artemis Voulkidis,et al.  Incidents Information Sharing Platform for Distributed Attack Detection , 2020, IEEE Open Journal of the Communications Society.

[4]  Amutha Prabakar Muniyandi,et al.  Network Anomaly Detection by Cascading K-Means Clustering and C4.5 Decision Tree algorithm , 2012 .

[5]  Sami Othman,et al.  Support Vector Machines for Fault Detection in Wind Turbines , 2011 .

[6]  Jun Zhang,et al.  Short-Term Reliability Prediction of Key Components of Wind Turbine Based on SCADA Data , 2020 .

[7]  Pierluigi Pisu,et al.  A Comparative Study of Three Fault Diagnosis Schemes for Wind Turbines , 2015, IEEE Transactions on Control Systems Technology.

[8]  Rémi Gribonval,et al.  Sparse representations in unions of bases , 2003, IEEE Trans. Inf. Theory.

[9]  Marius Kloft,et al.  Toward Supervised Anomaly Detection , 2014, J. Artif. Intell. Res..

[10]  David A. Wood,et al.  German country-wide renewable power generation from solar plus wind mined with an optimized data matching algorithm utilizing diverse variables , 2020, Energy Systems.

[11]  Yanchun Zhang,et al.  Supervised Anomaly Detection in Uncertain Pseudoperiodic Data Streams , 2016, ACM Trans. Internet Techn..

[12]  Wan-Jui Lee,et al.  Potential, challenges and future directions for deep learning in prognostics and health management applications , 2020, Eng. Appl. Artif. Intell..

[13]  Georg Langs,et al.  f‐AnoGAN: Fast unsupervised anomaly detection with generative adversarial networks , 2019, Medical Image Anal..

[14]  Aidong Men,et al.  A Hybrid Semi-Supervised Anomaly Detection Model for High-Dimensional Data , 2017, Comput. Intell. Neurosci..

[15]  Wenjing Hu,et al.  Anomaly detection and fault analysis of wind turbine components based on deep learning network , 2018, Renewable Energy.

[16]  G. Casella,et al.  The Bayesian Lasso , 2008 .

[17]  Peter Harremoës,et al.  Rényi Divergence and Kullback-Leibler Divergence , 2012, IEEE Transactions on Information Theory.

[18]  Dahai Zhang,et al.  A Data-Driven Design for Fault Detection of Wind Turbines Using Random Forests and XGboost , 2018, IEEE Access.

[19]  Yasuo Tan,et al.  Structural Condition for Controllable Power Flow System Containing Controllable and Fluctuating Power Devices , 2020 .

[20]  Subutai Ahmad,et al.  Unsupervised real-time anomaly detection for streaming data , 2017, Neurocomputing.

[21]  David Infield,et al.  SCADA‐based wind turbine anomaly detection using Gaussian process models for wind turbine condition monitoring purposes , 2018, IET Renewable Power Generation.

[22]  Shujun Liu,et al.  Wind turbine fault diagnosis based on Gaussian process classifiers applied to operational data , 2019, Renewable Energy.