Deep-Learning-Driven Turbidity Level Classification

Author:

Trejo-Zúñiga Iván1ORCID,Moreno Martin1ORCID,Santana-Cruz Rene Francisco2ORCID,Meléndez-Vázquez Fidel3ORCID

Affiliation:

1. Laboratory of Energy Innovation and Intelligent and Sustainable Agriculture (LEIISA), Universidad Tecnológica de San Juan del Río, San Juan del Río 76800, Querétaro, Mexico

2. Centro de Investigación en Ciencia Aplicada y Tecnología Avanzada, Unidad Querétaro, Instituto Politécnico Nacional, Santiago de Querétaro 76000, Querétaro, Mexico

3. Escuela Superior de Apan, Universidad Autónoma del Estado de Hidalgo, Apan 43920, Hidalgo, Mexico

Abstract

Accurate turbidity classification is essential for maintaining water quality in various contexts, from drinking water to industrial processes. Traditional turbidimeters face challenges, including interference from colored substances, particle shape and size variations, and the need for regular calibration and maintenance. This paper implements a convolutional neural network (CNN) to classify water samples based on their turbidity levels. The dataset consisted of images captured under controlled laboratory conditions, with turbidity levels measured using a 2100P Portable Turbidimeter. The CNN achieved a classification accuracy of 97.00% in laboratory settings. When tested on real-world water body samples, the model maintained an accuracy of 85.00%. The results demonstrate that deep learning can effectively classify turbidity levels, offering a promising solution to overcome the limitations of traditional methods. The study highlights the potential of CNNs for accurate and efficient turbidity measurement, balancing accuracy with practical applicability in field conditions.

Publisher

MDPI AG

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