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Forecasting the seasonal dynamics of Trichoplusia ni (Lep.: Noctuidae) on three Brassica crops through neural networks

Authors :
Elizeu S, Farias
Aline A, Farias
Renata C, Santos
Abraão A, Santos
Marcelo C, Picanço
Source :
International journal of biometeorology. 66(5)
Publication Year :
2021

Abstract

The cabbage looper, Trichoplusia ni Hübner (Lep.: Noctuidae), is a destructive pest of Brassica crops. Their larvae defoliate plants, leading to reduced crop yield. Understanding and modeling pest seasonal dynamics is central to management programs because it allows one to set up sampling and control efforts. This study aimed to train, with field-collected data, artificial neural networks (ANN) for T. ni forecasting on Brassica crops. ANNs were used due to their suitability to fit complex models with multiple predictors. Three weather variables (air temperature, rainfall, and relative humidity lagged at different intervals from the day of pest assessment) and three host plants (broccoli, cabbage, and cauliflower) along with another plant-related variable (days after transplanting) were used as input variables to build ANNs with different topologies. Two outputs (T. ni eggs or larvae) were tested to verify which one would yield more precise models. ANNs forecasting T. ni eggs performed better, based on Pearson's correlation (r

Details

ISSN :
14321254
Volume :
66
Issue :
5
Database :
OpenAIRE
Journal :
International journal of biometeorology
Accession number :
edsair.pmid..........dd4007bfa5dc1d4cbeb2f3ce206fcb2c