A Lithology Identification Approach Using Well Logs Data and Convolutional Long Short-Term Memory Networks
Jun Wang, Junxing Cao
Abstract
Lithology identification plays a crucial role in formation characterization and reservoir exploration. When available core samples are limited, well logs data becomes important in lithology identification. Various machine learning algorithms have been adopted to identify lithology. However, because of the spatial coupling of logging data and the vertical spatial relationship of different depths, the lithology identification of subsurface reservoirs is a challenging task. To solve this challenge, we propose a lithology identification method based on a deep learning model, which combines convolutional neural network (CNN) and long short-term memory (LSTM) network to exert their complementary advantages. In the network mentioned above, the CNN is used to extract the multiscale spatial features of the logging data, whereas the LSTM is designed to extract the vertical spatial relationship from the output features of the CNN, and finally, the mapping relationships between well logs and lithology types are established. The application results of two cases on field datasets demonstrate the effectiveness of the proposed method compared to the benchmark models. The proposed model is expected to be useful for identifying the lithology of complex strata.