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Robust prediction for CH4/CO2 competitive adsorption by genetic algorithm pruned neural network

摘要:Capturing the competitive adsorption behavior of CH4/CO2 in shale reservoirs is essential for estimating the original gas-in-place and enhancing the shale gas recovery. This study leverages the neural network with sparsity, trained on a comprehensive dataset that includes crucial parameters such as clay, total organic carbon, specific surface area, pressure, and initial composition. Sparsity diverges from Dropout by selectively pruning unnecessary connections to enhance the model's robustness. Specifically, previous attempts suffer from over-optimistic performance due to unsuitable random dataset sampling. Hierarchical clustering and permutation importance algorithm indicate that petrophysical properties including clay, total organic carbon and specific surface area. By optimizing the sparsity through a genetic algorithm and connection pruning strategy, an accuracy improvement from 0.90 to 0.95 in terms of R-squared compared to conventional fully connected networks is witnessed. Additionally, the results show that removing up to 40% of the connections without compromising accuracy. Therefore, a heterogeneous configuration of activation functions within the neural network further amplifies its predictive capability. In addition, compared to the Dropout strategy, sparsity is more advantageous for generalizability in scenarios with limited datasets. ? 2023

ISSN号:2949-8910

卷、期、页:卷234

发表日期:2024-03-01

影响因子:0.000000

收录情况:EI(工程索引)

发表期刊名称:Geoenergy Science and Engineering

参与作者:王海,庞宇,陈胜男,王牧明

第一作者:惠钢

论文类型:期刊论文

论文概要:王海,庞宇,陈胜男,王牧明,惠钢,Robust prediction for CH4/CO2 competitive adsorption by genetic algorithm pruned neural network,Geoenergy Science and Engineering,2024,卷234

论文题目:Robust prediction for CH4/CO2 competitive adsorption by genetic algorithm pruned neural network

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