Published March 24, 2022 | Version v1
Publication

Detection of frauds and other non-technical losses in a power utility using Pearson coefficient, Bayesian networks and decision trees

Description

For the electrical sector, minimizing non-technical losses is a very important task because it has a high impact in the company profits. Thus, this paper describes some new advances for the detection of non-technical losses in the customers of one of the most important power utilities of Spain and Latin America: Endesa Company. The study is within the framework of the MIDAS project that is being devel oped at the Electronic Technology Department of the University of Seville with the funding of this com pany. The advances presented in this article have an objective of detecting customers with anomalous drops in their consumed energy (the most-frequent symptom of a non-technical loss in a customer) by means of a windowed analysis with the use of the Pearson coefficient. On the other hand, besides Bayes ian networks, decision trees have been used for detecting other types of patterns of non-technical loss. The algorithms have been tested with real customers of the database of Endesa Company. Currently, the system is in operation.

Additional details

Created:
February 4, 2024
Modified:
February 4, 2024