Title :
Robust Real-Time Load Profile Encoding and Classification Framework for Efficient Power Systems Operation
Author :
Varga, Ervin D. ; Beretka, Sandor F. ; Noce, Christian ; Sapienza, Gianluca
Author_Institution :
Fac. of Tech. Sci., Univ. of Novi Sad, Novi Sad, Serbia
Abstract :
Neatly represented and properly classified load profiles are fundamental to many control optimization techniques of modern power systems, especially in a distribution area. This paper presents a novel load profile management software framework for boosting the efficiency of power systems operation. The proposed framework encodes and classifies load profiles in real-time. Imperfections as well as time-shifts in the input (measured power consumption levels) are tolerated by the suggested system, thus always providing accurate, fast and reliable output. The framework´s fully component based structure allows easy customizations of the encoding as well as the classification engines. The default encoding engine is based on an artificial neural network, a variant known as a deep learning auto-encoder comprised from stacked sparse auto-encoders. The default classifier engine is based on an implementation of a locality sensitive hashing algorithm. The developed methodology was tested on the real case of a set of anonymous customers supplied by a power distribution company. The paper also contains an elaboration about the experiences gained during the design, implementation and testing phase of this system as well as a detailed engineering use case of the framework´s applicability.
Keywords :
cryptography; encoding; file organisation; learning (artificial intelligence); neural nets; optimisation; power distribution reliability; power engineering computing; power system management; artificial neural network; classification engine framework; control optimization technique; deep learning autoencoder; load profile management software framework; locality sensitive hashing algorithm; power consumption; power distribution company; power system operation; robust real-time load profile encoding; stacked sparse autoencoder; Biological neural networks; Encoding; Engines; Feature extraction; Real-time systems; Training; Vectors; Classification algorithms; load modeling; multi-layer neural network; multidimensional systems; multilevel systems; real-time systems; unsupervised learning;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2014.2354552