Identification of Atypical Billings of Consumer Units by Artificial Intelligence Techniques to Reduce Non-Technical Losses in Distribution Networks

Author:

Bettiol Arlan Luiz1,Gomides Phablo Sullyvan2,Figueiredo Douglas Barbonaglia Sathler1,Medeiros Renato3

Affiliation:

1. Neo Domino Pesquisa em Sistemas Elétricos,Florianópolis,Santa Catarina,Brazil

2. Companhia Hidrelétrica São Patrício,Ceres,Goiás,Brazil

3. Empresa Luz e Força Santa Maria,Colatina,Espírito Santo,Brazil

Publisher

IEEE

Reference12 articles.

1. Electricity theft: a comparative analysis

2. Research and development against energy theft;Vidinich;(in Portuguese), Research and Development Magazine of ANEEL (Brazilian Electricity Regulatory Agency),2009

3. A new method for the computation of technical losses in electrical power distribution systems

4. Non-Technical Loss Detection Using State Estimation and Analysis of Variance

5. Anomaly detection

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