Due to complexities in geologic structure, heterogeneity, and insufficient borehole information, shale formation faces challenges in accurately estimating the elastic properties of rock which triggers severe technical challenges in safe drilling and completion. These geomechanical properties could be computed from acoustic logs, however, accurate estimation is critical due to log deficit and a higher recovery expense of inadequate datasets. To fill the gap, this study focuses on predicting the sonic properties of rock using deep neural network (Bi-directional long short-time memory, Bi-LSTM) and random forest (RF) algorithms to estimate and evaluate the geomechanical properties of the potential unconventional formation, Permian Basin, situa...
The existing artificial intelligence model uses single-point logging data as the eigenvalue to predi...
Estimation of reservoir parameters has always been a challenge for shale gas reservoirs. This study ...
AbstractGood understanding of mechanical properties of rock formations is essential during the devel...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
For a safe drilling operation with the of minimum borehole instability challenges, building a mechan...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
To efficiently produce oil from unconventional reservoirs, it is imperative to determine and underst...
Direct hydrocarbon indication using elastic seismic inversion can be optimized using a weighted diff...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Artificial neural networks have been applied to different petroleum engineering disciplines. This is...
Due to the anisotropy and heterogeneous nature of unconventional reservoirs like shale, a comprehens...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Rock porosity is an important parameter for the formation evaluation, reservoir modeling, and petrol...
The existing artificial intelligence model uses single-point logging data as the eigenvalue to predi...
Estimation of reservoir parameters has always been a challenge for shale gas reservoirs. This study ...
AbstractGood understanding of mechanical properties of rock formations is essential during the devel...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
For a safe drilling operation with the of minimum borehole instability challenges, building a mechan...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
To efficiently produce oil from unconventional reservoirs, it is imperative to determine and underst...
Direct hydrocarbon indication using elastic seismic inversion can be optimized using a weighted diff...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Artificial neural networks have been applied to different petroleum engineering disciplines. This is...
Due to the anisotropy and heterogeneous nature of unconventional reservoirs like shale, a comprehens...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Rock porosity is an important parameter for the formation evaluation, reservoir modeling, and petrol...
The existing artificial intelligence model uses single-point logging data as the eigenvalue to predi...
Estimation of reservoir parameters has always been a challenge for shale gas reservoirs. This study ...
AbstractGood understanding of mechanical properties of rock formations is essential during the devel...