We confirm that energy dissipation weighting provides the most accurate approach to determining the effective hydraulic conductivity (Keff) of a binary K grid. A deep learning algorithm (UNET) can infer Keff with extremely high accuracy (R2 > 0.99). The UNET architecture could be trained to infer the energy dissipation weighting pattern from an image of the K distribution, although it was less accurate for cases with highly localized structures that controlled flow. Furthermore, the UNET architecture learned to infer the energy dissipation weighting even if it was not trained directly on this information. However, the weights were represented within the UNET in a way that was not immediately interpretable by a human user. This reiterates th...
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
Identifying the heterogeneous conductivity field and reconstructing the contaminant release history ...
The pH of a solution has a large influence on the ion removal efficiency of the membrane capacitive ...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Groundwater monitoring at regional scales using conventional methods is challenging because of the n...
Connectivity has been a target of investigation for subsurface hydrology for decades. We apply seven...
Recent advances in machine learning open new opportunities to gain deeper insight into hydrological ...
Recent advances in machine learning open new opportunities to gain deeper insight into hydrological ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
The hydraulic conductivity of saturated soil is a crucial parameter in the study of any engineering ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
Further to an experiment conducted with a deep learning (DL) model, tailored to predict whether a wa...
Saturated hydraulic conductivity (Ks) is an important soil characteristic that controls water moves ...
We investigate the possibility of using artificial intelligence to deduce information about unobserv...
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
Identifying the heterogeneous conductivity field and reconstructing the contaminant release history ...
The pH of a solution has a large influence on the ion removal efficiency of the membrane capacitive ...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Groundwater monitoring at regional scales using conventional methods is challenging because of the n...
Connectivity has been a target of investigation for subsurface hydrology for decades. We apply seven...
Recent advances in machine learning open new opportunities to gain deeper insight into hydrological ...
Recent advances in machine learning open new opportunities to gain deeper insight into hydrological ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
The hydraulic conductivity of saturated soil is a crucial parameter in the study of any engineering ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
Further to an experiment conducted with a deep learning (DL) model, tailored to predict whether a wa...
Saturated hydraulic conductivity (Ks) is an important soil characteristic that controls water moves ...
We investigate the possibility of using artificial intelligence to deduce information about unobserv...
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
Identifying the heterogeneous conductivity field and reconstructing the contaminant release history ...
The pH of a solution has a large influence on the ion removal efficiency of the membrane capacitive ...