Petroleum Reservoir Evaluation and Development ›› 2022, Vol. 12 ›› Issue (6): 910-917.doi: 10.13809/j.cnki.cn32-1825/te.2022.06.010

• Comprehensive Research • Previous Articles     Next Articles

Application of JI-FI inversion technology to prediction of thin sandstone reservoir: A case study of K1bs 3 upper thin sandstone reservoir in XH area

LIANG Honggang1(),DENG Feng1,MA Hongtao1,SUN Li1,DING Hui1,YANG Junying2   

  1. 1. Research Institute of Exploration and Development, Sinopec Northwest Oilfield Company, Urumqi, Xinjiang 830011, China
    2. APEX Reservoir Service Inc., Beijing 100016, China
  • Received:2021-08-04 Online:2022-12-26 Published:2022-12-02

Abstract:

The thin sandstone reservoir in the delta front developed in the upper part of the K1bs3 formation is an important area for the exploration of structural-lithological oil and gas reservoirs in the XH area. In recent years, Application of P-impedance and pre-stack deterministic inversion could not accurately predict the distribution of thin sandstone reservoirs in the target layer. In this paper, joint impedance and facies inversion(JI-FI) impedance and facies joint inversion technology is used. This technique uses pre-stack seismic gather data, and combines simultaneous inversion and Bayesian classification under the constraints of the P-wave, S-wave velocity and density depth trend of each lithofacies or fluid facies, the maximum expectation algorithm is used to iterate the impedance and facies, and the quantitative prediction of lithofacies/fluid facies and petrophysical properties (such as P-wave, shear wave impedance, density, Vp/Vs, etc.) in the target area is achieved. This method overcomes the uncertainty of inter-well P-impedance interpolation when conventional pre-stack inversion relies on wells to establish low-frequency models, especially under geological conditions with few wells and thin interbeds. The reservoir prediction results are in good agreement with the well, which provides a basis for lithological exploration and well location deployment in this area.

Key words: joint impedance and facies inversion(JI-FI), lithofacies depth trend, Bayes classification, thin sandstone reservoir, prediction of lithofacies/fluid facies

CLC Number: 

  • P631