The paper presents an approach for the automatic determination of work-and-accumulation cycle durations in artificial production wells operating in automatic restart regimes. An algorithm based on convolutional neural network that uses field data on time-varying dynamic fluid level (pump intake pressure) in the well’s annular space was developed. The authors trained the neural network using data from operating regimes of wells in Western Siberia. The implemented algorithm demonstrated high effectiveness in determining the actual cycle durations of work and accumulation cycles. It also outperforms traditional rule-based and autocorrelation methods. During the testing of the algorithm on real field data, it identified moments of well-start and well-stop with sufficient accuracy for practical use. This enables engineers to monitor the current operating regimes of an artificial well in real time. The authors plan to use this algorithm for simulation of oil production by detecting current operating regime, adjusting work/stop durations and further optimizing the cycles. Engineers can also apply this approach to automate monitoring of operating regimes in artificial wells and to detect deviations from planned regimes in a timely manner. In addition, the proposed method scales easily and can be adapted to different conditions of production and oil field, making it applicable both to new and existing wells.
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8. Certificate of registration of a computer
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