Aedes-AI: Neural network models of mosquito abundance

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Abstract

We present artificial neural networks as a feasible replacement for a mechanistic model of mosquito abundance. We develop a feed-forward neural network, a long short-term memory recurrent neural network, and a gated recurrent unit network. We evaluate the networks in their ability to replicate the spatiotemporal features of mosquito populations predicted by the mechanistic model, and discuss how augmenting the training data with time series that emphasize specific dynamical behaviors affects model performance. We conclude with an outlook on how such equation-free models may facilitate vector control or the estimation of disease risk at arbitrary spatial scales. This ​is joint work with Joceline Lega and Sean Current.

Description

Math Bio Seminar
April 15, 2022
12:00 - 1:00 PM  Arizona time
WXLR A309

Those joining remotely can use the link: https://asu.zoom.us/j/84911973744

Speaker

Adrienne Kinney
Graduate student
Department of Mathematics
University of Arizona

Location
WXLR A309 and virtual via Zoom