Title :
Power Consumption Profiling Using Energy Time-Frequency Distributions in Smart Grids
Author :
Marnerides, Angelos K. ; Smith, Paul ; Schaeffer-Filho, Alberto ; Mauthe, Andreas
Author_Institution :
Sch. of Comput. & Math. Sci., Liverpool John Moores Univ., Liverpool, UK
Abstract :
Smart grids are power distribution networks that include a significant communication infrastructure, which is used to collect usage data and monitor the operational status of the grid. As a consequence of this additional infrastructure, power networks are at an increased risk of cyber-attacks. In this letter, we address the problem of detecting and attributing anomalies that occur in the sub-meter power consumption measurements of a smart grid, which could be indicative of malicious behavior. We achieve this by clustering a set of statistical features of power measurements that are determined using the Smoothed Pseudo Wigner Ville (SPWV) energy Time-Frequency (TF) distribution. We show how this approach is able to more accurately distinguish clusters of energy consumption than simply using raw power measurements. Our ultimate goal is to apply the principles of profiling power consumption measurements as part of an enhanced anomaly detection system for smart grids.
Keywords :
distribution networks; power consumption; power measurement; smart power grids; time-frequency analysis; SPWV energy TF distribution; anomaly detection system; energy consumption; power consumption profiling; power distribution networks; power measurements; raw power measurements; smart grids; smoothed pseudo Wigner Ville energy time-frequency distribution; submeter power consumption measurements; Clustering algorithms; Communication networks; Power demand; Power measurement; Smart grids; Time-frequency analysis; Clustering methods; Energy Time-Frequency Distributions; Power measurement; SCADA systems; Smart Grid; energy time-frequency distributions; power measurement; smart grid;
Journal_Title :
Communications Letters, IEEE
DOI :
10.1109/LCOMM.2014.2371035