Title :
Impacts of Raw Data Temporal Resolution Using Selected Clustering Methods on Residential Electricity Load Profiles
Author :
Granell, Ramon ; Axon, Colin J. ; Wallom, David C. H.
Author_Institution :
Oxford e-Res. Centre, Univ. of Oxford, Oxford, UK
Abstract :
There is growing interest in discerning behaviors of electricity users in both the residential and commercial sectors. With the advent of high-resolution time-series power demand data through advanced metering, mining this data could be costly from the computational viewpoint. One of the popular techniques is clustering, but depending on the algorithm the resolution of the data can have an important influence on the resulting clusters. This paper shows how temporal resolution of power demand profiles affects the quality of the clustering process, the consistency of cluster membership (profiles exhibiting similar behavior), and the efficiency of the clustering process. This work uses both raw data from household consumption data and synthetic profiles. The motivation for this work is to improve the clustering of electricity load profiles to help distinguish user types for tariff design and switching, fault and fraud detection, demand-side management, and energy efficiency measures. The key criterion for mining very large data sets is how little information needs to be used to get a reliable result, while maintaining privacy and security.
Keywords :
data mining; data privacy; demand side management; fault diagnosis; learning (artificial intelligence); pattern classification; pattern clustering; power meters; power system analysis computing; power system economics; power system faults; power system security; tariffs; time series; very large databases; advanced metering; classification algorithms; cluster membership consistency; clustering process efficiency; clustering process quality; commercial sectors; data resolution; demand-side management; energy efficiency measures; fault detection; fraud detection; high-resolution time-series power demand data; information needs; machine learning; power demand profiles; privacy maintenance; raw data temporal resolution; residential electricity load profiles; residential sectors; security maintenance; selected clustering methods; tariff design; tariff switching; very large data set mining; Algorithm design and analysis; Classification algorithms; Clustering algorithms; Data mining; Energy consumption; Machine learning; Power demand; Smart grids; Classification algorithms; clustering algorithms; data mining; energy consumption; machine learning; power demand; smart grids;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2014.2377213