Prediction of Delivered Quantities of Drinking Water and Discharged Wastewater of the Nišava District (Serbia)

Authors

  • Nina Pavićević Megatrend University of Belgrade, Faculty of Management Zaječar, Zaječar, Serbia

DOI:

https://doi.org/10.3889/oamjms.2020.5561

Keywords:

Natural resources, Water, Delivered quantities of drinking water, Total discharged wastewater, Polynomial regression model

Abstract

Water, as a natural resource, is the most basic substance of life that has immeasurable significance for the living world, ecosystems, and planet earth. In this paper, a prediction of delivered quantities of drinking water (DQDW) and total discharged wastewater (TDWW) of the Nišava district (Serbia) for the period 2019-2023 is given. The prediction for DQDW for the period 2019-2023 was made based on linear regression model, quadratic regression model, and cubic regression model according to which the data on DQDW of the Nišava district (Serbia) for the period 2006-2018 were approximated. The prediction for TDWW for the period 2019–2023 was done based on the 4th-degree polynomial regression model, the 5th-degree polynomial regression model, and the 6th-degree polynomial regression model by which the DQDW data were approximated of the Nišava district (Serbia) for the period 2006–2018. The presented prediction is a continuation of the paper “Trend analysis of total affected water and total discharged wastewater of the Nišava district (Serbia)” by the same author, in which for data on DQDW and TDWW of the Nišava district (Serbia) for the period 2006–2018 trend analysis and selected regression models have been shown.

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Published

2020-12-03

How to Cite

1.
Pavićević N. Prediction of Delivered Quantities of Drinking Water and Discharged Wastewater of the Nišava District (Serbia). Open Access Maced J Med Sci [Internet]. 2020 Dec. 3 [cited 2024 Apr. 25];8(E):664-9. Available from: https://oamjms.eu/index.php/mjms/article/view/5561

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Public Health Legislation

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