BARBOSA, V. R. N.; http://lattes.cnpq.br/5101613689745136; BARBOSA, Vandilson Rodrigo do Nascimento.
Resumo:
Metal Oxide Surge Arresters (MOSAs) have been employed in order to increase
the reliability, economy and continuity of operation of Electric Power Systems (EPSs).
Considering the importance of the MOSAs for EPSs, it is necessary to study, develop and
optimize techniques for forecating the MOSA lifetime. This paper presents an evaluative
study of techniques that employ pure and hybrid models to forecast the behavior of Time
Series (TSs), in order to apply those techniques in the estimation of MOSA lifetime.
Although there are several techniques in the literature that use pure and hybrid models
for forecasting, there is lack of designed techniques to forecast the MOSA lifetime.
Among the sensitive indicators to the MOSA degradation level, the ones that can be used
to form the TS are the harmonic content of the total leakage current and its resistive
component, considering that these indicators are the most used by the EPSs. To perform
this work, a database was initially built with TSs with information on the third harmonic
component of the MOSA total leakage current. Then, the TS forecasting techniques were
implemented on a computational platform. The selected TS forecasting techniques for
implementation employ models based on artificial intelligence, with the focus of analysis
being the Neuro-Fuzzy system, the Long Short-Term Memory network and the Support
Vector Machine. The combinational model-based technique uses these three types
artificial intelligence to perform TS behavior forecasting. Finally, the performance
evaluation of each of the implemented techniques was accomplished using the adopted
performance indicators, such as: mean square error, mean absolute error and mean
absolute percentage error. Tests performed so far indicate that the implemented
techniques present satisfactory results in the forecasting, especially in relation to the
technique that employs a combinational model. Thus, an overview of the forecasting
techniques of the MOSA lifetime was obtained, mainly contributing to the asset
management of the EPS.