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Predictive modeling of microbiological seawater quality in karst region using cascade model

This paper presents an in-depth analysis of seawater quality measurements during the bathing seasons from year 2009 to 2020 in the city of Rijeka, Croatia. Due to rare occurrences of measurements with less than excellent water quality, considered dataset is deeply imbalanced. Additionally, it incorp...

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Published in:The Science of the total environment 2022-12, Vol.851, p.158009-158009, Article 158009
Main Authors: Lučin, Ivana, Družeta, Siniša, Mauša, Goran, Alvir, Marta, Grbčić, Luka, Lušić, Darija Vukić, Sikirica, Ante, Kranjčević, Lado
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container_title The Science of the total environment
container_volume 851
creator Lučin, Ivana
Družeta, Siniša
Mauša, Goran
Alvir, Marta
Grbčić, Luka
Lušić, Darija Vukić
Sikirica, Ante
Kranjčević, Lado
description This paper presents an in-depth analysis of seawater quality measurements during the bathing seasons from year 2009 to 2020 in the city of Rijeka, Croatia. Due to rare occurrences of measurements with less than excellent water quality, considered dataset is deeply imbalanced. Additionally, it incorporates measurements under the influence of submerged groundwater discharges (SGD), which were observed in some bathing locations. These discharges were previously thought to dry up during the summer season and are now suspected to be one of the causes of increased Escherichia coli values. Consequently, and in view of the fact that the accuracy of prediction models can be significantly influenced by temporal and spatial variation of the input data, a novel cascade prediction modeling strategy was proposed. It consists of a sequence of prediction models which tend to identify general environmental conditions which confidently lead to excellent bathing water quality. The proposed model uses environmental features which can rather easily be estimated or obtained from the weather forecast. The model was trained on a highly biased dataset, consisting of data from locations with and without SGD influence, and for the time period spanning extremely dry and warm seasons, extremely wet seasons, as well as normal seasons. To simulate realistic application, the model was tested using temporal and spatial stratification of data. The cascade strategy was shown to be a good approach for reliably detecting environmental parameters which produce excellent water quality. Proposed model is designed as a filter method, where instances classified as less-than-excellent water quality require further analysis. The cascade model provides great flexibility as it can be customized to the particular needs of the investigated area and dataset specifics. [Display omitted] •ML-based prediction model of coastal bathing water quality is created.•Submerged groundwater sources are shown to contribute to increased water pollution.•RF model is used for predicting E. coli concentrations using meteorological data.•Cascade model is used as high accuracy data filter for excellent water quality.
doi_str_mv 10.1016/j.scitotenv.2022.158009
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subjects Bathing water quality
Cascade prediction modeling
Fecal pollution
Karst region
Machine learning
Submerged groundwater discharge
title Predictive modeling of microbiological seawater quality in karst region using cascade model
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