Fluvial facies reservoir productivity prediction method based on principal component analysis and artificial neural network

Petroleum - Tập 2 - Trang 49-53 - 2016
Pengyu Gao1, Chong Jiang1, Qin Huang1, Hui Cai1, Zhifeng Luo2, Meijia Liu1
1Cnooc (China) Co., Ltd. Tianjin Branch, China
2Southwest Petroleum University, China

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