Prediction of Leakage Pressure during a Drilling Process Based on SSA-LSTM

Author:

Chen Dong1,He Baolun2,Wang Yanshu1,Han Chao3,Wang Yucong2,Xu Yuqiang2

Affiliation:

1. Sinopec Matrix Corporation, Qingdao 266071, China

2. National Key Laboratory of Deep Oil and Gas, China University of Petroleum (East China), Qingdao 266580, China

3. Geosteering & Logging Research Institute, Sinopec Matrix Corporation, Qingdao 266071, China

Abstract

Drilling-fluid loss has always been one of the challenging issues in the field of drilling engineering. This article addresses the limitations of a single fluid-loss pressure mechanism model and the challenges in predicting positive drilling-fluid-loss pressure. By categorizing fluid losses of various types encountered during drilling, different geological formations associated with distinct mechanisms are considered. The actual drilling-fluid density in the wellbore at the time of fluid-loss occurrence is taken as a reference value for calculating the positive drilling-fluid-loss pressure of the already drilled well. Building upon this foundation, a combined model utilizing the Sparrow Search Algorithm (SSA) and Long Short-Term Memory (LSTM) neural network is constructed. This model effectively explores the intricate nonlinear relationship between well logging, logging engineering data, and fluid-loss pressure. By utilizing both data from the already drilled wells and upper formation data from ongoing drilling, precise prediction of positive drilling formation fluid-loss pressure can be achieved. Case studies demonstrate that the approach established in this paper, incorporating upper formation data, reduces the average absolute percentage error of fluid-loss pressure prediction to 2.4% and decreases the root mean square error to 0.0405. Through the synergy of mechanistic models and data-driven techniques, not only has the accuracy of predicting positive drilling formation fluid-loss pressure has been enhanced, but also valuable insights have been provided for preventing and mitigating fluid losses during drilling operations.

Publisher

MDPI AG

Subject

Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering

Reference21 articles.

1. Research progress and prospects of machine learning in lost circulation control;Sun;Acta Pet. Sin.,2022

2. Managed pressure drilling technology: A research on the formation adaptability;Wang;Fluid Dyn. Mater. Process.,2022

3. Analysis of the applicability of a risk quantitative evaluation method to high temperature-pressure drilling engineering;Xie;Fluid Dyn. Mater. Process.,2023

4. Judgment of drilling fluid leakage and overflow during the drilling process;Wang;West-China Explor. Eng.,2020

5. Yang, J., Sun, J., Bai, Y., Lv, K., Zhang, G., and Li, Y. (2022). Status and prospect of drilling fluid loss and lost circulation control technology in fractured formation. Gels, 8.

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