71 / 2025-11-24 11:05:27
An Intelligent Selection Method of Main Controlling Factors for Tight Gas Reservoirs Productivity Based on Improved Harris Hawk Algorithm
Tight gas; Feature selection; Main controlling factors; Harris hawk optimization; Productivity prediction
Abstract Pending
徐佳 / 西南石油大学
范翔宇 / 西南石油大学南充校区
赵春兰 / 西南石油大学
张千贵 / 西南石油大学
赵鹏斐 / 西南石油大学
Identifying the main controlling factors of tight gas productivity is essential for accurate forecasting and efficient reservoir development. However, the nonlinear and high-dimensional characteristics of tight gas reservoirs pose challenges for conventional analytical methods. This study proposes an improved Harris hawk optimization algorithm (TVLHHO), which integrates a nonlinear escape energy strategy and a time-varying leader structure, to enhance feature selection performance. The method expands the search space, accelerates convergence, and reduces the risk of local optima. Using a tight sandstone gas field as a case study, preliminary feature screening combined Pearson correlation and XGBoost, and TVLHHO was subsequently applied to identify the optimal controlling factors. Compared with six benchmark algorithms, TVLHHO achieved the fastest convergence and obtained a mean R² exceeding 0.9 in productivity prediction. The selected factors effectively distinguished high- and low-capacity wells, confirming the practicality and robustness of the proposed method. TVLHHO provides a reliable tool for analyzing main controlling factors under complex geological conditions, offering a solid foundation for productivity prediction and optimization in tight gas reservoirs.

 
Important Date
  • Conference Date

    Nov 27

    2025

    to

    Nov 29

    2025

  • Nov 29 2025

    Draft paper submission deadline

  • Nov 29 2025

    Registration deadline

Sponsored By
重庆大学
Organized By
煤矿灾害动力学与控制全国重点实验室
重庆大学资源与安全学院
《Earth Energy Science》/地球能源科学(英文)
中煤科工集团重庆研究院有限公司
Supported By
自然资源部复杂构造区非常规天然气评价与开发重点实验室
重庆市地质矿产勘查开发集团有限公司
InterPore China (国际多孔介质学会中国分会)
贵州大学
西南石油大学