4.5 Article

Data-driven estimation of three-phase saturation during gas hydrate depressurization using CT images

Journal

Publisher

ELSEVIER
DOI: 10.1016/j.petrol.2021.108916

Keywords

Gas hydrate dissociation; Core depressurization experiment three-phase saturation; Random forest; Training data; X-ray medical CT

Funding

  1. Ministry of Trade, Industry, and Energy (MOTIE), South Korea
  2. Gas Hydrate R&D Organization (GHDO)
  3. Korea Institute of Geoscience and Mineral Resources (KIGAM) [GP2021-010, GP2021-011]
  4. National Research Foundation of Korea (NRF) - Korea government (MSIT) [2021R1C1C1004460]
  5. KIGAM
  6. National Research Foundation of Korea [2021R1C1C1004460] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study aimed to determine three-phase saturation in real time during gas hydrate (GH) depressurization by improving the RF model with proper utilization of CT images. The proposed method can reliably predict GH dissociation behavior and improve the accuracy of saturation modeling and analysis in GH experiments.
The purpose of this study was to determine the three-phase saturation (water; gas hydrate, GH; and gas) in real time to gain insights into the GH depressurization process. Although X-ray computed tomography (CT) can be used to investigate the density changes in the GH core during the depressurization experiment, it is hard to distinguish between water and GH due to their similar densities and the limited resolution of the CT image. To address this issue, random forest (RF) was applied to quantitatively predict the three-phase saturation: CT images were used as input data and the three-phase saturation was the output. In the previous research, a RF model was developed based on training data that only involved the five preliminary stages before the depressurization step. However, the previous RF model failed to estimate the saturation values of the CT images during the depressurization. It could not properly estimate general GH dissociation trend and the GH equilibrium pressure, neither. In this study, CT data obtained in the early and late depressurization stage were used for the training of the RF model. The proposed method can be used to reliably estimate the GH dissociation behavior. The trained RF in this study can identify the GH equilibrium at which the dissociation starts (similar to 16 MPa), which is consistent with the theoretical dissociation at a temperature and salinity of 16 degrees C and 3 wt%, respectively. The reliability of the proposed method was tested by checking if the estimated results approached zero GH saturation at the end of the GH dissociation (6 and 0 MPa). Therefore, the originality of this study is to improve RF model to reliably predict the three-phase saturation in real time during the GH depressurization by properly utilizing CT images in the depressurization stage for training RF. Based on further improvement, the proposed method could be utilized in the future to help finding adequate depressurization velocity by reliable saturation modeling and analysis of GH experiment because GH productivity depends on depressurization gradient.

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