Adrienne C. Kinney, Roberto Barrera, Joceline Lega
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Rapid and accurate mosquito abundance forecasting with Aedes-AI neural networks
We present a method to convert weather data into probabilistic forecasts of
Aedes aegypti abundance. The approach, which relies on the Aedes-AI suite of
neural networks, produces weekly point predictions with corresponding
uncertainty estimates. Once calibrated on past trap and weather data, the model
is designed to use weather forecasts to estimate future trap catches. We
demonstrate that when reliable input data are used, the resulting predictions
have high skill. This technique may therefore be used to supplement vector
surveillance efforts or identify periods of elevated risk for vector-borne
disease outbreaks.