TY - JOUR
T1 - Application of Machine Learning to Predict Transient Sand Production in the Karazhanbas Oil Field, Ustyurt–Buzachi Basin (West Kazakhstan)
AU - Shabdirova, Ainash
AU - Kozhagulova, Ashirgul
AU - Minh, Nguyen Hop
AU - Zhao, Yong
N1 - Publisher Copyright:
© 2023, International Association for Mathematical Geosciences.
PY - 2023/10
Y1 - 2023/10
N2 - The aim of this research is to investigate the potential of machine learning (ML) in predicting sand production behaviors during oil extraction from an unconsolidated sandstone reservoir in Kazakhstan. The study is based on data from 43 wells, which include crucial parameters like reservoir depth, thickness of producing zone, fluid flow rate and water cut value. The study focused on three types of sand production behavior, namely transient sand production (TR), multiple-peak sand production and non-TR. The research utilized the random forest (RF) algorithm to forecast sanding behavior based on production and field parameters. The results of the study demonstrate that the RF algorithm is capable of predicting TR behaviors accurately, particularly when the training dataset includes information from TR wells. This information is useful in developing effective sand management strategies. The algorithm's accuracy was highest when the complete set of input data was used, although the thickness and depth of the reservoir are less critical for its performance. This study is unique in its attempt to predict sand volume using ML algorithms, as earlier studies had concentrated solely on forecasting the sanding onset.
AB - The aim of this research is to investigate the potential of machine learning (ML) in predicting sand production behaviors during oil extraction from an unconsolidated sandstone reservoir in Kazakhstan. The study is based on data from 43 wells, which include crucial parameters like reservoir depth, thickness of producing zone, fluid flow rate and water cut value. The study focused on three types of sand production behavior, namely transient sand production (TR), multiple-peak sand production and non-TR. The research utilized the random forest (RF) algorithm to forecast sanding behavior based on production and field parameters. The results of the study demonstrate that the RF algorithm is capable of predicting TR behaviors accurately, particularly when the training dataset includes information from TR wells. This information is useful in developing effective sand management strategies. The algorithm's accuracy was highest when the complete set of input data was used, although the thickness and depth of the reservoir are less critical for its performance. This study is unique in its attempt to predict sand volume using ML algorithms, as earlier studies had concentrated solely on forecasting the sanding onset.
KW - Karazhanbas oil field
KW - Machine learning
KW - Sand production
KW - Sand volume
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U2 - 10.1007/s11053-023-10234-z
DO - 10.1007/s11053-023-10234-z
M3 - Article
AN - SCOPUS:85163883453
SN - 1520-7439
VL - 32
SP - 1975
EP - 1986
JO - Natural Resources Research
JF - Natural Resources Research
IS - 5
ER -