Resumo:
Among the artificial lift methods used in subsea completions in Brazil, particularly in the
production of heavy and viscous oils, Electrical Submersible Pumping (ESP) stands out by
providing a significant increase in production flow, which can reach up to 100% compared to a
well without this system. However, the failure of a Subsea Electrical Submersible Pump (ESP)
entails high operational costs, including complex interventions, expensive maintenance, and
considerable financial losses associated with lost profits. In this context, the pursuit of strategies
to enhance the reliability of these systems becomes essential. Aiming to improve the predictive
monitoring of the skid-ESP/ESP system, this work employs Electrical Signature Analysis
techniques—an essential approach given the extremely limited physical access to the machine in
the subsea environment. This study proposes the identification of fault patterns in the electrical
signature of the motors responsible for driving the skid-ESP, as well as the evaluation of the
potential of signal separation algorithms in scenarios where two motors are powered in parallel
by a single cable. To handle non-stationary signals, advanced digital signal processing techniques
were applied, including statistical methods. As a central part of the monitoring strategy, a
Bayesian prognostic algorithm was developed. Tests were carried out using acceleration signals
from a three-phase induction motor that experienced a bearing failure during monitoring. The
results showed that the model was able to estimate the system’s remaining useful life (RUL) with
increasing accuracy. Initially, uncertainty in the predictions led to errors of up to 72 hours, which
were progressively reduced to zero as the moment of failure approached, reaching its highest
precision at a critical point. Although small deviations were observed in the final estimates, the
practical impact of these variations proved to be negligible, reinforcing the reliability of the model.
Additionally, the Bayesian algorithm was effective in identifying the evolution of a spectral
component in the acceleration signal associated with motor degradation, enabling the correlation
between spectral variations and the progressive development of system faults. The optimized
signal concatenation technique contributed to improving spectral resolution, minimizing issues
arising from the non-stationarity of the monitored signals. As a continuation of this study, further
prognostic analyses will be conducted using electrical signals from the skid-ESP and the ESP,
with the objective of evaluating the model’s ability to anticipate failures compared to other online
monitoring techniques used in the operation of submersible pumps.