| Authors | شیرین جهانمیری,علی عالی انوری,ملیحه عباس زاده |
| Journal | Journal of Mining and Environment |
| Paper Type | Full Paper |
| Published At | 2024-04-12 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | SCOPUS ,ISC ,ISI-Listed |
Abstract
Groundwater inflow is a critical subject within the domains of hydrology, hydraulic
engineering, hydrogeology, rock engineering, and related disciplines. Tunnels
excavated below the groundwater table, in particular, face the inherent risk of
groundwater seepage during both the excavation process and subsequent operational
phases. Groundwater inflows, often perceived as rare geological hazards, can induce
instability in the surrounding rock formations, leading to severe consequences such as
injuries, fatalities, and substantial financial expenditures. The primary objective of
this research is to explore the application of machine learning techniques to identify
the most accurate method of forecasting tunnel water seepage. The prediction of
water loss into the tunnel during the forecasting phase employed a tree equation
based on gene expression programming (GEP). These results were compared with
those obtained from a hybrid model comprising particle swarm optimization (PSO)
and artificial neural networks (ANN). The Whale Optimization Algorithm (WOA)
was selected and developed during the optimization phase. Upon contrasting the
aforementioned methods, the Whale Optimization Algorithm demonstrated superior
performance, precisely forecasting the volume of water lost into the tunnel with a
correlation coefficient of 0.99. This underscores the effectiveness of advanced
optimization techniques in enhancing the accuracy of groundwater inflow predictions
and mitigating potential risks associated with tunneling activities.