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dc.contributor.authorMolares-Ulloa, Andres
dc.contributor.authorRivero, Daniel
dc.contributor.authorGil Ruiz, Jesús
dc.contributor.authorFernandez-Blanco, Enrique
dc.contributor.authorde-la-Fuente-Valentín, Luis
dc.date2023
dc.date.accessioned2024-02-20T12:52:18Z
dc.date.available2024-02-20T12:52:18Z
dc.identifier.citationMolares-Ulloa, A., Rivero, D., Ruiz, J. G., Fernandez-Blanco, E., & de-la-Fuente-Valentín, L. (2023). Hybrid machine learning techniques in the management of harmful algal blooms impact. Computers and Electronics in Agriculture, 211, 107988.es_ES
dc.identifier.issn0168-1699
dc.identifier.urihttps://reunir.unir.net/handle/123456789/16117
dc.description.abstractHarmful algal blooms (HABs) are episodes of high concentrations of algae that are potentially toxic for human consumption. Mollusc farming can be affected by HABs because, as filter feeders, they can accumulate high concentrations of marine biotoxins in their tissues. To avoid the risk to human consumption, harvesting is prohibited when toxicity is detected. At present, the closure of production areas is based on expert knowledge and the existence of a predictive model would help when conditions are complex and sampling is not possible. Although the concentration of toxin in meat is the method most commonly used by experts in the control of shellfish production areas, it is rarely used as a target by automatic prediction models. This is largely due to the irregularity of the data due to the established sampling programs. As an alternative, the activity status of production areas has been proposed as a target variable based on whether mollusc meat has a toxicity level below or above the legal limit. This new option is the most similar to the actual functioning of the control of shellfish production areas. For this purpose, we have made a comparison between hybrid machine learning models like Neural-Network-Adding Bootstrap (BAGNET) and Discriminative Nearest Neighbor Classification (SVM-KNN) when estimating the state of production areas. The study has been carried out in several estuaries with different levels of complexity in the episodes of algal blooms to demonstrate the generalization capacity of the models in bloom detection. As a result, we could observe that, with an average recall value of 93.41% and without dropping below 90% in any of the estuaries, BAGNET outperforms the other models both in terms of results and robustness.es_ES
dc.language.isoenges_ES
dc.publisherComputers and Electronics in Agriculturees_ES
dc.relation.ispartofseries;vol. 211, nº 107988
dc.rightsopenAccesses_ES
dc.subjectaquaculturees_ES
dc.subjectbiotoxinses_ES
dc.subjectharmful algal bloomses_ES
dc.subjecthybrid techniqueses_ES
dc.subjectmachine learninges_ES
dc.subjectScopuses_ES
dc.subjectJCRes_ES
dc.titleHybrid machine learning techniques in the management of harmful algal blooms impactes_ES
dc.typeArticulo Revista Indexadaes_ES
reunir.tag~ARIes_ES
dc.identifier.doihttps://doi.org/10.1016/j.compag.2023.107988


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