Inverse problems appear in multiple industrial applications. Solving such inverse problems require the repeated solution of the forward problem. This is the most time-consuming stage when employing inversion techniques, and it constitutes a severe limitation when the inversion needs to be performed in real-time. In here, we focus on the real-time inversion of resistivity measurements for geosteering. We investigate the use of a deep neural network (DNN) to approximate the forward function arising from Maxwell's equations, which govern the electromagnetic wave propagation through a media. By doing so, the evaluation of the forward problems is performed offline, allowing for the online real-time evaluation (inversion) of the DNN
We focus on the inversion of borehole resistivity measurements in real time. To perform this task, ...
AbstractThe applications of intelligent techniques have increased exponentially in recent days to st...
The possibility to have results very quickly after, or even during, the collection of electromagneti...
Borehole resistivity measurements are routinely employed to measure the electrical properties of roc...
Deep neural networks (DNNs) offer a real-time solution for the inversion of borehole resistivity mea...
Deep learning (DL) is a numerical method that approximates functions. Recently, its use has become a...
The direct-current (DC) resistivity method is a commonly used geophysical technique for surveying ad...
There exist multiple traditional methods to solve inverse problems, mainly, gradient-based or statis...
Deep learning (DL) inversion is a promising method for real-Time interpretation of logging-while-dri...
The inversion of most geophysical data sets is complex due to the inherent non-linearity of the inv...
The advent of fast sensing technologies allows for real-time model updates in many applications wher...
Deep learning (DL) inversion of induction logging measurements is used in well geosteering for real-...
Electrical methods have been widely used in geophysical surveying to obtain high-resolution informat...
Modern geosteering is heavily dependent on real-time interpretation of deep electromagnetic (EM) mea...
The advent of fast sensing technologies allow for real-time model updates in many applications where...
We focus on the inversion of borehole resistivity measurements in real time. To perform this task, ...
AbstractThe applications of intelligent techniques have increased exponentially in recent days to st...
The possibility to have results very quickly after, or even during, the collection of electromagneti...
Borehole resistivity measurements are routinely employed to measure the electrical properties of roc...
Deep neural networks (DNNs) offer a real-time solution for the inversion of borehole resistivity mea...
Deep learning (DL) is a numerical method that approximates functions. Recently, its use has become a...
The direct-current (DC) resistivity method is a commonly used geophysical technique for surveying ad...
There exist multiple traditional methods to solve inverse problems, mainly, gradient-based or statis...
Deep learning (DL) inversion is a promising method for real-Time interpretation of logging-while-dri...
The inversion of most geophysical data sets is complex due to the inherent non-linearity of the inv...
The advent of fast sensing technologies allows for real-time model updates in many applications wher...
Deep learning (DL) inversion of induction logging measurements is used in well geosteering for real-...
Electrical methods have been widely used in geophysical surveying to obtain high-resolution informat...
Modern geosteering is heavily dependent on real-time interpretation of deep electromagnetic (EM) mea...
The advent of fast sensing technologies allow for real-time model updates in many applications where...
We focus on the inversion of borehole resistivity measurements in real time. To perform this task, ...
AbstractThe applications of intelligent techniques have increased exponentially in recent days to st...
The possibility to have results very quickly after, or even during, the collection of electromagneti...