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- Title
Shear Sonic Prediction Based on DELM Optimized by Improved Sparrow Search Algorithm.
- Authors
Qiao, Lei; Jia, Zhining; Cui, You; Xiao, Kun; Su, Haonan
- Abstract
In the geophysical exploration field, the sonic log (DT) and shear sonic log (DTS) are frequently used as quick and affordable procedures for reservoir evaluation. Due to the high acquisition costs, DTS is only accessible in a few wells within an oil/gas field. Numerous attempts have been made to establish a precise relationship between DTS and other petrophysical data. In this study, a method based on the deep extreme learning machine optimized by the improved sparrow search algorithm (ISSA-DELM) is proposed to improve the accuracy and stability of the DTS prediction. Firstly, the deep extreme learning machine (DELM) model is constructed by combining the extreme learning machine and the autoencoder algorithm. Secondly, aimed at the defects of the sparrow search algorithm (SSA), an improved sparrow search algorithm (ISSA) with the firefly search disturbance is proposed by merging the iterative strategy of the firefly algorithm and applied to optimize the initial input weights of the DELM. Finally, the ISSA-DELM is applied to the prediction of the DTS in a block of the Ordos Basin in China. The quantitative prediction results show that the RMSE, MAE, and R-square predicted by the ISSA-DELM model are 6.1255, 4.1369, and 0.9916, respectively. The comprehensive performance is better than the ELM, the DELM, and the DELM optimized by the optimization algorithms, such as the genetic algorithm (GA), the particle swarm optimization (PSO), and the SSA. Therefore, it can be concluded that the method provides an effective method for missing DTS estimation.
- Subjects
CHINA; SEARCH algorithms; MACHINE learning; SPARROWS; PARTICLE swarm optimization; GEOPHYSICAL prospecting; ITERATIVE learning control
- Publication
Applied Sciences (2076-3417), 2022, Vol 12, Issue 16, pN.PAG
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app12168260