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Related Concept Videos

Testing Water Quality01:14

Testing Water Quality

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When the quality of water for concrete preparation is uncertain, its impact on the setting time of cement and compressive strength of mortar is assessed by comparison with de-ionized or distilled water benchmarks. American Society for Testing and Materials (ASTM) C1602 requires the setting times to be within 90 minutes of the control, British Standard (BS) 3146:1980 allows a 30-minute variance in the initial setting, while British Standards European Norm (BS EN) 1008 specifies initial setting...
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Quality of Water01:19

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In concrete preparation, the quality of water is paramount as it affects the strength and durability of the concrete. Potable water is usually preferred; however, it must not have excessive sodium or potassium to prevent compromising the concrete's integrity. Water quality is typically evaluated based on impurities such as dissolved solids, chlorides, and sulfates, and its pH value is ideally between 6 and 8. Even slightly acidic natural water may be acceptable unless it contains harmful...
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Mechanistic models are utilized in individual analysis using single-source data, but imperfections arise due to data collection errors, preventing perfect prediction of observed data. The mathematical equation involves known values (Xi), observed concentrations (Ci), measurement errors (εi), model parameters (ϕj), and the related function (ƒi) for i number of values. Different least-squares metrics quantify differences between predicted and observed values. The ordinary least...
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Related Experiment Video

Updated: Jul 23, 2025

Early Detection of Cyanobacterial Blooms and Associated Cyanotoxins using Fast Detection Strategy
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Coastal Water Quality Modelling Using E. coli, Meteorological Parameters and Machine Learning Algorithms.

Athanasios Tselemponis1, Christos Stefanis1, Elpida Giorgi1

  • 1Laboratory of Hygiene and Environmental Protection, Medical School, Democritus University of Thrace, 68100 Alexandroupoli, Greece.

International Journal of Environmental Research and Public Health
|July 14, 2023
PubMed
Summary
This summary is machine-generated.

Machine learning models accurately classify coastal water quality for Escherichia coli (E. coli) in Eastern Macedonia and Thrace. High accuracy, over 99%, was achieved, indicating excellent water conditions.

Keywords:
E. colicoastal watermachine learningpollutionpredictive modelling

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Area of Science:

  • Environmental Science
  • Machine Learning
  • Water Quality Management

Background:

  • Coastal water quality monitoring is crucial for public health and ecosystem integrity.
  • Directive 2006/7/EC mandates regular assessment of bathing water quality.
  • Escherichia coli (E. coli) is a key indicator of fecal contamination in marine environments.

Purpose of the Study:

  • To implement and evaluate machine learning models for predicting coastal water classification based on E. coli concentration.
  • To assess the influence of meteorological variables on E. coli levels in coastal waters.
  • To classify the water quality of Eastern Macedonia and Thrace (EMT) coastal areas according to EU standards.

Main Methods:

  • Collected 1039 water samples from six sampling stations in EMT between 2009-2021 (May-September).
  • Analyzed E. coli using ISO 9308-1 standard.
  • Acquired meteorological data from nearby stations.
  • Applied machine learning classifiers including Decision Forest, Decision Jungle, and Boosted Decision Tree.

Main Results:

  • The vast majority of samples were classified as Category 1 (Excellent).
  • Decision Forest, Decision Jungle, and Boosted Decision Tree classifiers achieved accuracy scores exceeding 99%.
  • Comparison with other studies shows diverse machine learning algorithms (Decision Tree, Artificial Neural Networks, Bayesian Belief Networks) yield satisfactory results for water quality prediction.

Conclusions:

  • Machine learning models effectively predict coastal water quality and E. coli contamination dynamics.
  • Meteorological parameters can be integrated into water quality classification models.
  • The coastal waters of EMT demonstrate excellent quality, with high predictability using advanced computational methods.