Summarization: Reliable temporal modelling of groundwater level is significant for efficient water resources management in hydrological basins and for the prevention of possible desertification effects. In this work we propose a stochastic method of temporal monitoring and prediction that can incorporate auxiliary information. More specifically, we model the temporal (mean annual and biannual) variation of groundwater level by means of a discrete time autoregressive exogenous variable (ARX) model. The ARX model parameters and its predictions are estimated by means of the Kalman filter adaptation algorithm (KFAA) which, to our knowledge, is applied for the first time in hydrology. KFAA is suitable for sparsely monitored basins that do not al...
The current study was performed on a Hungarian area where the groundwater has been highly affected i...
Groundwater, water in the ground. Although it is invisible, it is a vital resource for all terrestri...
Stochastic modelling of hydrological time series with insufficient length and data gaps is a serious...
Summarization: The formulation of a model that can reliably simulate the temporal groundwater level ...
Abstract: Short-term management of groundwater resources, especially during droughts, can be assiste...
Summarization: Spatiotemporal geostatistical analysis of groundwater levels is a significant tool fo...
Groundwater plays an important role in both urban and rural areas. It is therefore essential to moni...
<font size="3">Index words: groundwater head, time series analysis, physical interpretation, resampl...
A non-linear state space model is developed for describing groundwater fluctuations. Non-linearity i...
International audienceGroundwater level prediction is an applied time series forecasting task with i...
Groundwater is an essential ingredient in farming, knowledge about how this is expected to change ov...
A method is developed to estimate fluctuation quantities of water-table depths independently of the ...
Abstract: Short-term management of groundwater resources, especially during droughts, can be assiste...
The objective of this thesis is twofold: to develop time series analysis methods for the estimation ...
Conference paper presented at the MODSIM03, International Congress on Modelling and Simulation, held...
The current study was performed on a Hungarian area where the groundwater has been highly affected i...
Groundwater, water in the ground. Although it is invisible, it is a vital resource for all terrestri...
Stochastic modelling of hydrological time series with insufficient length and data gaps is a serious...
Summarization: The formulation of a model that can reliably simulate the temporal groundwater level ...
Abstract: Short-term management of groundwater resources, especially during droughts, can be assiste...
Summarization: Spatiotemporal geostatistical analysis of groundwater levels is a significant tool fo...
Groundwater plays an important role in both urban and rural areas. It is therefore essential to moni...
<font size="3">Index words: groundwater head, time series analysis, physical interpretation, resampl...
A non-linear state space model is developed for describing groundwater fluctuations. Non-linearity i...
International audienceGroundwater level prediction is an applied time series forecasting task with i...
Groundwater is an essential ingredient in farming, knowledge about how this is expected to change ov...
A method is developed to estimate fluctuation quantities of water-table depths independently of the ...
Abstract: Short-term management of groundwater resources, especially during droughts, can be assiste...
The objective of this thesis is twofold: to develop time series analysis methods for the estimation ...
Conference paper presented at the MODSIM03, International Congress on Modelling and Simulation, held...
The current study was performed on a Hungarian area where the groundwater has been highly affected i...
Groundwater, water in the ground. Although it is invisible, it is a vital resource for all terrestri...
Stochastic modelling of hydrological time series with insufficient length and data gaps is a serious...