Affiliation:
1. Escuela Superior Politécnica de Chimborazo, Sede Orellana, Ecuador
Abstract
Ecuador is an essential cocoa producer recognized for its quality and aroma. Additionally, it holds a prominent
position among the country's traditional export products, making it the third-largest cocoa-producing country
in the world. However, the cocoa industry faces challenges due to moniliasis, a fungal disease that affects
cocoa trees and causes damage to the fruits, resulting in decreased production. This research aims to prevent
cocoa moniliasis by conducting tests with different algorithms to select the best one for predicting moniliasis
using sensor data in the progressive web application. Various supervised learning algorithms were applied,
including PCA, IPCA, KPCA, Linear Regression, Sci-Kit Learning, and ensemble methods like Bagging and
Boosting. Google's Lighthouse is utilized for artifact validation. It is concluded that the Boosting ensemble
method with a value of 1.0 and 4 estimators is the algorithm that shows a good fit for prediction. In artifact
validation, it yields favorable results with a score of over 90 in various Lighthouse parameters.
Keywords: Moniliasis 1; Progressive Web Application 2; PCA 3; IPCA 4; KPCA 5; Linear Regression 6;
Bagging 7; Boosting 8; Lighthouse 9
Reference30 articles.
1. 1. Venezuela J, Guevara F. Eco-Friendly Biocontrol of Moniliasis in Ecuadorian Cocoa Using Biplot Techniques. Sustainability. 2023;: p. 15. https://doi.org/10.3390/su15054223
2. 2. Ceccarelli V, Lastra S, Loor R, Chacón W, Nolasco M, Conservation and use of genetic resources of
3. cacao (Theobroma cacao L.) by gene banks and nurseries in six Latin American countries. Genet. Resour.
4. Crop Evol. 2022; p. 1283-1302. https://doi.org/10.1007/s10722-021-01304-3
5. 3. Almeida S, Silva S, Lima J, Fim Rosas J, Capelini V. Fuzzy modeling of the risk of cacao moniliasis