Enhanced Dengue Outbreak Prediction in Tamilnadu using Meteorological and Entomological data

06/23/2023
by   Varalakshmi M, et al.
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This paper focuses on studying the impact of climate data and vector larval indices on dengue outbreak. After a comparative study of the various LSTM models, Bidirectional Stacked LSTM network is selected to analyze the time series climate data and health data collected for the state of Tamil Nadu (India), for the period 2014 to 2020. Prediction accuracy of the model is significantly improved by including the mosquito larval index, an indication of VBD control measure.

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