会议论文详细信息
International Conference on Earth Science, Mineral, and Energy
Sensitivity analysis in using of artificial neural network models to determine infill well locations in a mature oil field
地球科学;矿业工程;能源学
Fathaddin, M.T.^1 ; Arshanda, M.I.^1,3 ; Rachman, Y.A.^2 ; Putra, E.A.P.^2 ; Nugrahanti, A.^1 ; Kasmungin, S.^1
Trisakti University, Faculty of Earth Technology and Energy, Indonesia^1
EMP Malacca Strait, Reservoir Engineering Department, Indonesia^2
Chevron Pacific Indonesia, Indonesia^3
关键词: 3D reservoir simulation;    Artificial neural network models;    High confidence;    Mature oil fields;    Root mean square errors;    Sensitivity tests;    Simulation model;    Training and testing;   
Others  :  https://iopscience.iop.org/article/10.1088/1755-1315/212/1/012070/pdf
DOI  :  10.1088/1755-1315/212/1/012070
来源: IOP
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【 摘 要 】

This paper describes a method to rank potential infill well locations using Artificial Neural Networks (ANN) from existing well data. Sensitivity test was conducted for training and testing data used with comparison 2:8, 4:6, 5:5, 6:4 and 8:2 for each data. Root Mean Square Error difference between training and test data show that the best results obtained from the ratio of training data and testing data 8: 2. Two ANN models were built. The first model predicted top sand depth, resistivity, gamma-ray and density-neutron from infill well location (chosen from structural position and good oil rates from offset wells). The second model predicted initial oil rate from outputs from the first model. Predicted initial oil rates from the ANN model were compared with those from the 3D reservoir simulation model. They shows similar prediction of oil rates which gave high confidence in the predicted oil rate. Very different oil rate prediction between the two models can be used as consideration to improve the simulation model.

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