In this paper the difficult problem of how to legitimise data-driven hydrological models is addressed using an example of a simple artificial neural network modelling problem. Many data-driven models in hydrology have been criticised for their black-box characteristics, which prohibit adequate understanding of their mechanistic behaviour and restrict their wider heuristic value. In response, presented here is a new generic data-driven mechanistic modelling framework. The framework is significant because it incorporates an evaluation of the legitimacy of a data-driven model's internal modelling mechanism as a core element in the modelling process. The framework's value is demonstrated by two simple artificial neural network river forecasting...
The complementary nature of physically based and datadriven models in their demand of physical insig...
Physically based (process) models based on mathematical descriptions of water motion are widely used...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
In this paper the difficult problem of how to legitimisedata-driven hydrological models is addressed...
In this paper the difficult problem of how to legitimise data-driven hydrological models is addresse...
In this paper the difficult problem of how to legitimisedata-driven hydrological models is addressed...
This paper addresses the difficult question of how to perform meaningful comparisons between neural ...
Although artificial neural networks (ANNs) have proven to be useful tools for modeling many aspects ...
This paper traces two decades of neural network rainfall-runoff and streamflow modelling, collective...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Hydrological models are used for a wide variety of engineering purposes, including streamflow foreca...
Hydrological models are used for a wide variety of engineering purposes, including streamflow foreca...
International audienceRecently Feed-Forward Artificial Neural Networks (FNN) have been gaining popul...
In this paper, we discuss the problem of calibration and uncertainty estimation for hydrologic syste...
In this paper, we discuss a joint approach to calibration and uncertainty estimation for hydrologic ...
The complementary nature of physically based and datadriven models in their demand of physical insig...
Physically based (process) models based on mathematical descriptions of water motion are widely used...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
In this paper the difficult problem of how to legitimisedata-driven hydrological models is addressed...
In this paper the difficult problem of how to legitimise data-driven hydrological models is addresse...
In this paper the difficult problem of how to legitimisedata-driven hydrological models is addressed...
This paper addresses the difficult question of how to perform meaningful comparisons between neural ...
Although artificial neural networks (ANNs) have proven to be useful tools for modeling many aspects ...
This paper traces two decades of neural network rainfall-runoff and streamflow modelling, collective...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Hydrological models are used for a wide variety of engineering purposes, including streamflow foreca...
Hydrological models are used for a wide variety of engineering purposes, including streamflow foreca...
International audienceRecently Feed-Forward Artificial Neural Networks (FNN) have been gaining popul...
In this paper, we discuss the problem of calibration and uncertainty estimation for hydrologic syste...
In this paper, we discuss a joint approach to calibration and uncertainty estimation for hydrologic ...
The complementary nature of physically based and datadriven models in their demand of physical insig...
Physically based (process) models based on mathematical descriptions of water motion are widely used...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...