Machine Learning Classification–Regression Schemes for Desert Locust Presence Prediction in Western Africa

Author:

Cornejo-Bueno L.1ORCID,Pérez-Aracil J.1ORCID,Casanova-Mateo C.2,Sanz-Justo J.3ORCID,Salcedo-Sanz S.1ORCID

Affiliation:

1. Department of Signal Processing and Communications, Universidad de Alcalá, 28805 Alcalá de Henares, Spain

2. Department of Information Systems, Universidad Politécnica de Madrid, 28031 Madrid, Spain

3. Laboratorio de Teledetección (LATUV), Remote Sensing Laboratory, Universidad de Valladolid, 47002 Valladolid, Spain

Abstract

For decades, humans have been confronted with numerous pest species, with the desert locust being one of the most damaging and having the greatest socio-economic impact. Trying to predict the occurrence of such pests is often complicated by the small number of records and observations in databases. This paper proposes a methodology based on a combination of classification and regression techniques to address not only the problem of locust sightings prediction, but also the number of locust individuals that may be expected. For this purpose, we apply different machine learning (ML) and related techniques, such as linear regression, Support Vector Machines, decision trees, random forests and neural networks. The considered ML algorithms are evaluated in three different scenarios in Western Africa, mainly Mauritania, and for the elaboration of the forecasting process, a number of meteorological variables obtained from the ERA5 reanalysis data are used as input variables for the classification–regression machines. The results obtained show good performance in terms of classification (appearance or not of desert locust), and acceptable regression results in terms of predicting the number of locusts, a harder problem due to the small number of samples available. We observed that the RF algorithm exhibited exceptional performance in the classification task (presence/absence) and achieved noteworthy results in regression (number of sightings), being the most effective machine learning algorithm among those used. It achieved classification results, in terms of F-score, around the value of 0.9 for the proposed Scenario 1.

Funder

Spanish Ministry of Science and Innovation

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference47 articles.

1. Cressman, K. (2016). Biological and Environmental Hazards, Risks, and Disasters, Elsevier.

2. IPM-Biological and integrated management of desert locust;Shuang;J. Integr. Agric.,2022

3. Behavioral plasticity in anti-predator defense in the desert locust;Maeno;J. Arid Environ.,2018

4. The Desert Locust: An international challenge;Skaf;Philos. Trans. R. Soc. Lond. B Biol. Sci.,1990

5. Desert locust detection using Earth observation satellite data in Mauritania;Salvador;J. Arid Environ.,2019

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