Monitoring networks are improved by additional sensors. Optimal configurations of sensors give better representations of the process of interest, maximising its exploration while minimising the need for costly infrastructure. By modelling the monitored process, we can identify gaps in its representation, i.e. uncertain predictions, where additional sensors should be located. Here, with data collected from the Rothamsted Insect Survey network, we train an artificial neural network to predict the seasonal aphid arrival from environmental variables. We focus on estimating prediction uncertainty across the UK to guide the addition of a sensor to the network. We first illustrate how to estimate uncertainty in neural networks, hence making them r...
The problems of global warming and air pollution have led to enforcement of stringent constraints by...
International audienceA technique to estimate the uncertainties of the parameters of a neural networ...
The purpose of this study is to establish a system for the prediction of the pests’ risk level in a ...
Neural network models were developed to predict the number of R. padi caught during the autumn fligh...
Insect pests now pose a greater threat to crop production given the recent emergence of insecticide ...
A comparison of two artificial neural network methods for predicting the risk of insect pest species...
This work demonstrates the development of a neural network algorithm able to determine the function ...
The use of data-driven techniques such as artificial neural network (ANN) models for outdoor air pol...
The combination of computer vision with deep learning has become a popular tool for automation of la...
The appearance of pest insects can lead to a loss in yield if farmers do not respond in a timely man...
The appearance of pest insects can lead to a loss in yield if farmers do not respond in a timely man...
International audienceConventional pest management mainly relies on the use of pesticides. However, ...
The problems of global warming and air pollution have led to enforcement of stringent constraints by...
International audienceA technique to estimate the uncertainties of the parameters of a neural networ...
The purpose of this study is to establish a system for the prediction of the pests’ risk level in a ...
Neural network models were developed to predict the number of R. padi caught during the autumn fligh...
Insect pests now pose a greater threat to crop production given the recent emergence of insecticide ...
A comparison of two artificial neural network methods for predicting the risk of insect pest species...
This work demonstrates the development of a neural network algorithm able to determine the function ...
The use of data-driven techniques such as artificial neural network (ANN) models for outdoor air pol...
The combination of computer vision with deep learning has become a popular tool for automation of la...
The appearance of pest insects can lead to a loss in yield if farmers do not respond in a timely man...
The appearance of pest insects can lead to a loss in yield if farmers do not respond in a timely man...
International audienceConventional pest management mainly relies on the use of pesticides. However, ...
The problems of global warming and air pollution have led to enforcement of stringent constraints by...
International audienceA technique to estimate the uncertainties of the parameters of a neural networ...
The purpose of this study is to establish a system for the prediction of the pests’ risk level in a ...