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Digital Visualization of Environmental Risk Indicators in the Territory of the Urban Industrial Zone

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dc.contributor.author Safarov, Ruslan
dc.contributor.author Shomanova, Zhanat
dc.contributor.author Nossenko, Yuriy
dc.contributor.author Mussayev, Zhandos
dc.contributor.author Shomanova, Ayana
dc.date.accessioned 2025-12-18T06:22:13Z
dc.date.available 2025-12-18T06:22:13Z
dc.date.issued 2024
dc.identifier.citation Safarov, R.; Shomanova, Z.; Nossenko, Y.; Mussayev, Z.; Shomanova, A. Digital Visualization of Environmental Risk Indicators in the Territory of the Urban Industrial Zone. Sustainability 2024, 16, 5190. https://doi.org/10.3390/su16125190 ru
dc.identifier.issn 2071-1050
dc.identifier.other doi.org/10.3390/su16125190
dc.identifier.uri http://repository.enu.kz/handle/enu/28851
dc.description.abstract This study focused on predicting the spatial distribution of environmental risk indicators using mathematical modeling methods including machine learning. The northern industrial zone of Pavlodar City in Kazakhstan was used as a model territory for the case. Nine models based on the methods kNN, gradient boosting, artificial neural networks, Kriging, and multilevel b-spline interpolation were employed to analyze pollution data and assess their effectiveness in predicting pollution levels. Each model tackled the problem as a regression task, aiming to estimate the pollution load index (PLI) values for specific locations. It was revealed that the maximum PLI values were mainly located to the southwest of the TPPs over some distance from their territories according to the average wind rose for Pavlodar City. Another area of high PLI was located in the northern part of the studied region, near the Hg-accumulating ponds. The high PLI level is generally attributed to the high concentration of Hg. Each studied method of interpolation can be used for spatial distribution analysis; however, a comparison with the scientific literature revealed that Kriging and MLBS interpolation can be used without extra calculations to produce non-linear, empirically consistent, and smooth maps. ru
dc.language.iso en ru
dc.publisher Sustainability ru
dc.relation.ispartofseries 16, 5190;
dc.subject urban industrial zone ru
dc.subject sustainable city ru
dc.subject pollution load index (PLI) ru
dc.subject machine learning methods ru
dc.subject soil contamination ru
dc.title Digital Visualization of Environmental Risk Indicators in the Territory of the Urban Industrial Zone ru
dc.type Article ru


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