Evapotranspiration (ET) is one of the main components of the hydrological cycle. It is a complex process driven mainly by weather parameters, and as such, is characterized by high non-linearity and non-stationarity. This paper introduces a methodology combining wavelet multiresolution analysis with a machine learning algorithm, the multivariate relevance vector machine (MVRVM), in order to predict 16 days of future daily reference evapotranspiration (ETo). This methodology lays the ground for forecasting the spatial distribution of ET using Landsat satellite imagery, hence the choice of 16 days, which corresponds with the Landsat overpass cycle. An accurate prediction of daily ETo is needed to improve the management of irrigation schedules ...
Accurate estimates of evapotranspiration (ET) over croplands on a regional scale can provide useful ...
In this study, a statistical drought early warning method is proposed using novel machine learning a...
In this study, the predictive power of three different machine learning (ML)-based approaches, namel...
Anticipating, or forecasting near-term irrigation demands is a requirement for improved management o...
Anticipating, or forecasting near-term irrigation demands is a requirement for improved management o...
With the development of surface energy balance analyses, remote sensing has become a spatially expli...
Providing reliable forecasts of evapotranspiration (ET) at farm level is a key element toward effici...
The forecasting of evaporative loss (E) is vital for water resource management and understanding of ...
Provision of reliable forecasts of evapotranspiration (ET) at the farm level can be a key element in...
Accurate ahead forecasting of reference evapotranspiration (ETo) is crucial for effective irrigation...
Proper irrigation scheduling and agricultural water management require a precise estimation of crop ...
It has become very crucial to manage water resources to meet the needs of the growing population. In...
Proper irrigation scheduling and agricultural water management require a precise estimation of crop ...
This research presents a modeling approach that incorporates wavelet-based analysis techniques used ...
A drought forecasting model is a practical tool for drought-risk management. Drought models are used...
Accurate estimates of evapotranspiration (ET) over croplands on a regional scale can provide useful ...
In this study, a statistical drought early warning method is proposed using novel machine learning a...
In this study, the predictive power of three different machine learning (ML)-based approaches, namel...
Anticipating, or forecasting near-term irrigation demands is a requirement for improved management o...
Anticipating, or forecasting near-term irrigation demands is a requirement for improved management o...
With the development of surface energy balance analyses, remote sensing has become a spatially expli...
Providing reliable forecasts of evapotranspiration (ET) at farm level is a key element toward effici...
The forecasting of evaporative loss (E) is vital for water resource management and understanding of ...
Provision of reliable forecasts of evapotranspiration (ET) at the farm level can be a key element in...
Accurate ahead forecasting of reference evapotranspiration (ETo) is crucial for effective irrigation...
Proper irrigation scheduling and agricultural water management require a precise estimation of crop ...
It has become very crucial to manage water resources to meet the needs of the growing population. In...
Proper irrigation scheduling and agricultural water management require a precise estimation of crop ...
This research presents a modeling approach that incorporates wavelet-based analysis techniques used ...
A drought forecasting model is a practical tool for drought-risk management. Drought models are used...
Accurate estimates of evapotranspiration (ET) over croplands on a regional scale can provide useful ...
In this study, a statistical drought early warning method is proposed using novel machine learning a...
In this study, the predictive power of three different machine learning (ML)-based approaches, namel...