Predicting filtration clogging behavior using machine learning and physicochemical parameters in final wine filtration processes
Resumen: The wine bottling process includes a mechanical filtration to remove unwanted particles such as microorganisms and crystalline precipitates, thus ensuring product quality. This step involves high operational costs due to the variability in the quantity and type of particles, which obstruct the filtering medium, reducing flow and increasing pressure differential, negatively impacting processing and bottling time. Traditionally, clogging power could only be measured through laboratory analysis once the wine was ready for bottling, limiting efficient production planning. This study analyzes the variability of the filtration speed index through analytical and statistical methods and examines how certain physicochemical parameters influence these measurements. Using data from 689 records from a renowned Chilean vineyard, machine learning techniques are applied to evaluate different predictive models. The results indicate that the Gradient Boosting Machine model predicts the filtration speed index with an average absolute error of 10.66%, significantly lower than the analytical limit of 20%, thus facilitating timely and effective operational decision-making.
Idioma: Inglés
DOI: 10.1016/j.seppur.2026.137628
Año: 2026
Publicado en: Separation and Purification Technology 394 (2026), 137628 [13 pp.]
ISSN: 1383-5866

Tipo y forma: Article (PostPrint)
Área (Departamento): Área Comerci.Investig.Mercados (Dpto. Direc.Mark.Inves.Mercad.)
Fecha de embargo : 2028-03-18
Exportado de SIDERAL (2026-04-18-10:49:27)


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Este artículo se encuentra en las siguientes colecciones:
articulos > articulos-por-area > comercializacion_e_investigacion_de_mercados



 Notice créée le 2026-04-18, modifiée le 2026-04-20


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