Crop models are frequently used in agronomy for simulating crop variables at a discrete time step. This paper describes the application of an artificial neural network in developing a model for yield forecasts in durum wheat, using back-propagation algorithms based on the mechanistic model AFRCWHEAT2 (Porter, 1993; Porter et al., 1993). Given the relevant number of inputs (16) required to operate AFRCWHEAT2, we have tried to develop a simpler model based on a neural network, in order to match AFRCWHEAT2 performance while substantially reducing the need of inputs
A regional analysis of the effects of soil and climate factors on wheat yield was performed in the A...
In the work based on agroecological and technological testing of varieties of grain crops of domesti...
An artificial neural network (ANN) approach was used to model the fuel consumption of wheat producti...
A given model of yield forecasting using an artificial neural network connects the wheat crop with t...
In precision agriculture, data-intelligent algorithms applied for predicting wheat yield can generat...
Our recent study using historic data of wheat yield and associated plantation area, rainfall, and te...
Crop yield forecasting is a very important task for researchers in remote sensing. Problems exist wi...
An artificial neural network (ANN) approach was used to model the wheat production. From an extensiv...
Our recent study using historic data of wheat yield and associated plantation area, rainfall, and te...
Agricultural system is very complex since it deals with large data situation which comes from a numb...
Abstract: By considering various situations of climatologically phenomena affecting local weather co...
Several feedforward artificial neural networks with error back-propagation were trained to predict c...
The possibility of using two different artificial neural networks architectures (multi-layer feed-fo...
A particular type of “Artificial neural network (ANN)”, viz. Multilayered feedforward artificial neu...
Precision agriculture (PA) and infor-mation technology (IT) are closely interwoven. The former usual...
A regional analysis of the effects of soil and climate factors on wheat yield was performed in the A...
In the work based on agroecological and technological testing of varieties of grain crops of domesti...
An artificial neural network (ANN) approach was used to model the fuel consumption of wheat producti...
A given model of yield forecasting using an artificial neural network connects the wheat crop with t...
In precision agriculture, data-intelligent algorithms applied for predicting wheat yield can generat...
Our recent study using historic data of wheat yield and associated plantation area, rainfall, and te...
Crop yield forecasting is a very important task for researchers in remote sensing. Problems exist wi...
An artificial neural network (ANN) approach was used to model the wheat production. From an extensiv...
Our recent study using historic data of wheat yield and associated plantation area, rainfall, and te...
Agricultural system is very complex since it deals with large data situation which comes from a numb...
Abstract: By considering various situations of climatologically phenomena affecting local weather co...
Several feedforward artificial neural networks with error back-propagation were trained to predict c...
The possibility of using two different artificial neural networks architectures (multi-layer feed-fo...
A particular type of “Artificial neural network (ANN)”, viz. Multilayered feedforward artificial neu...
Precision agriculture (PA) and infor-mation technology (IT) are closely interwoven. The former usual...
A regional analysis of the effects of soil and climate factors on wheat yield was performed in the A...
In the work based on agroecological and technological testing of varieties of grain crops of domesti...
An artificial neural network (ANN) approach was used to model the fuel consumption of wheat producti...