• DocumentCode
    1617061
  • Title

    A hybrid neural network model and encoding technique for enhanced classification of energy consumption data

  • Author

    Depuru, Soma Shekara Sreenadh Reddy ; Wang, Lingfeng ; Devabhaktuni, Vijay ; Nelapati, Praneeth

  • Author_Institution
    EECS Dept., Univ. of Toledo, Toledo, OH, USA
  • fYear
    2011
  • Firstpage
    1
  • Lastpage
    8
  • Abstract
    Total losses in transmission and distribution (T&D) of electrical energy including nontechnical losses (NTL) are huge and are affecting the good interest of utility company and its customers. In this context, importance of customer load profile evaluation for detection of illegal consumers is explained in this paper. Classification of the customers based on load profile evaluation using SVMLIB requires us to choose training function and related parameters. Selecting these parameters would consume a lot of time and is not suggestible evaluation of real time electricity consumption patterns, as, the suspicious profiles are to be predicted instantly. In light of this issue, this paper implements a neural network (NN) model and suggests a hierarchical model for enhanced estimation of the classification efficiency, if that data was classified using support vector machines (SVM). In addition, this paper proposes an encoding technique that can identify illegal consumers with better efficiency and faster classification of data.
  • Keywords
    energy consumption; learning (artificial intelligence); load distribution; neural nets; power engineering computing; power system security; support vector machines; SVMLIB; classification efficiency; customer load profile evaluation; electrical energy; encoding technique; energy consumption data; hybrid neural network model; illegal consumer detection; nontechnical losses; real time electricity consumption patterns; support vector machines; training function; utility company; Artificial neural networks; Companies; Data models; Electricity; Energy consumption; Support vector machines; Training; Data classification; electricity theft; encoding; neural networks; power consumption patterns and support vector machines;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Power and Energy Society General Meeting, 2011 IEEE
  • Conference_Location
    San Diego, CA
  • ISSN
    1944-9925
  • Print_ISBN
    978-1-4577-1000-1
  • Electronic_ISBN
    1944-9925
  • Type

    conf

  • DOI
    10.1109/PES.2011.6039050
  • Filename
    6039050