Litcius/Paper detail

Early Warning of Loss and Kick for Drilling Process Based on Sparse Autoencoder With Multivariate Time Series

Zheng Zhang, Xuzhi Lai, Sheng Du, Wanke Yu, Min Wu

2023IEEE Transactions on Industrial Informatics22 citationsDOI

Abstract

Complicated geological environments lead to a high risk of drilling incidents. Early warning of loss and kick for the drilling process is essential to ensure process safety. On account of the nonlinear and temporal correlation of drilling parameters, an early warning method for loss and kick based on sparse autoencoder with multivariate time series is proposed. The sparse autoencoder is utilized for multivariate time series abnormality detection of the drilling process. Abnormal drilling parameter isolation is performed through contribution analysis. Reconstruction analysis and time series segmentation approaches are integrated for abnormal time series trend evaluation. The characteristic of drilling parameters under normal operation learned by the sparse autoencoder and the property of the original time series are taken into account. The final early warning result can be obtained through expert rules based on the trend evaluation result. Case studies are presented based on the data from an actual drilling project. The experiment result shows the effectiveness of the proposed method.

Topics & Concepts

AutoencoderMultivariate statisticsTime seriesDrillingComputer scienceProcess (computing)Series (stratigraphy)Data miningWarning systemArtificial intelligencePattern recognition (psychology)Machine learningEngineeringArtificial neural networkGeologyOperating systemPaleontologyMechanical engineeringTelecommunicationsFault Detection and Control SystemsMineral Processing and GrindingDrilling and Well Engineering