Pattern-based prediction of population outbreaks.

Resumo: A complexidade e a importância prática dos surtos de insetos tornaram o problema de prever surtos um foco de pesquisa recente. Propomos o método de Previsão Baseada em Padrões (PBP) para prever surtos populacionais. Este método usa informações sobre valores de séries temporais anteriores que precedem um evento de surto como preditores de surtos futuros, o que pode ser útil ao monitorar espécies de pragas. Nós ilustramos o método usando conjuntos de dados simulados e uma série temporal de pulgões obtida em lavouras de trigo no sul do Brasil. Abstract: The complexity and practical importance of insect outbreaks have made the problem of predicting outbreaks a focus of recent research. We propose the Pattern-Based Prediction (PBP) method for predicting population outbreaks. It uses information on previous time series values that precede an outbreak event as predictors of future outbreaks, which can be helpful when monitoring pest species. We illustrate the methodology using simulated datasets and an aphid time series obtained in wheat crops in Southern Brazil. We obtained an average test accuracy of 84.6% in the simulation studies implemented with stochastic models and 95.0% for predicting outbreaks using a time series of aphids in wheat crops in Southern Brazil. Our results show the PBP method's feasibility in predicting population outbreaks. We benchmarked our results against established state-of-the-art machine learning methods: Support Vector Machines, Deep Neural Networks, Long Short Term Memory and Random Forests. The PBP method yielded a competitive performance associated with higher true-positive rates in most comparisons while providing interpretability rather than being a black-box method. It is an improvement over current state-of-the-art machine learning tools, especially by non-specialists, such as ecologists aiming to use a quantitative approach for pest monitoring. We provide the implemented PBP method in Python through the pypbp package.

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Bibliographic Details
Main Authors: PALMA, G. R., GODOY, W. A. C., ENGEL, E., LAU, D., GALVAN, E., MASON, O., MARKHAM, C., MORAL, R. A.
Other Authors: GABRIEL R. PALMA, Maynooth University; WESLEY A. C. GODOY, Universidade de São Paulo; EDUARDO ENGEL, Universidade de São Paulo; DOUGLAS LAU, CNPT; EDGAR GALVAN, Maynooth University; OLIVER MASON, Maynooth University; CHARLES MARKHAM, Maynooth University; RAFAEL A. MORAL, Maynooth University.
Format: Artigo de periódico biblioteca
Language:Ingles
English
Published: 2023-08-08
Subjects:Monitoramento de pragas, Alert zone procedure, Deep learning, Machine learning, Time series, Sistemas de Suporte à Tomada de Decisão, Sistemas alerta, Aprendizado de máquina, Séries Temporais, Trigo, Lavoura, Praga de Planta, Dinâmica Populacional, Afídeo, Epidemiologia, Population dynamics, Time series analysis, Wheat,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1155768
https://doi.org/10.1016/j.ecoinf.2023.102220
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