4.3 Article

Experimental study and artificial neural network simulation of the wettability of tight gas sandstone formation

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.jngse.2016.07.002

关键词

Artificial neural network simulation; Nonlinear response relationship; Predict; Tight gas sandstone; Wettability

资金

  1. National Natural Science Foundation of China (NSFC) [51234006]
  2. NSFC for Distinguished Young [51325402]
  3. NSFC for Major projects [51490650]

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The wettability of rocks significantly affects many aspects of field exploration and development, particularly complex and unconventional formations (e.g., tight gas sandstone reservoirs). Wettability, which is affected by many factors, is the result of a comprehensive rock-fluid reaction. However, at present, research on the effect of rock mineral composition and fluid characteristics on wettability is insufficient, and only a few studies on the quantitative characterization model have been conducted. We examined the response of wettability to rock mineralogical characteristics and oil-based drilling fluid properties in tight gas sandstone formation through X-ray diffraction technology and video optical technology. The research indicates that rock mineral compositions play a significant role in wettability. However, the degree of the effect and the trend of various minerals vary. The lipophilicity of tight sandstone decreases with increased contents of quartz, carbonate and clay minerals. By contrast, the contact angle of the rock and oil-base drilling fluid system decreases with increased feldspar content; this condition indicates enhanced lipophilicity. Moreover, we applied a general regression neural network model which contains nine influence factors to simulate the nonlinear response relationship between wettability and rock and fluid properties, and predict wettability. The predicted outcomes exhibit excellent stability and the average relative error is less than 5%. Moreover, the model can be utilized to optimize oil-based drilling fluid, which exhibits a good field application effect. (C) 2016 Elsevier B.V. All rights reserved.

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