2021
DOI: 10.3390/app112110034
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Assessing Nitrate Contamination Risks in Groundwater: A Machine Learning Approach

Abstract: Groundwater is one of the primary sources for the daily water requirements of the masses, but it is subjected to contamination due to the pollutants, such as nitrate, percolating through the soil with water. Especially in built-up areas, groundwater vulnerability and contamination are of major concern, and require appropriate consideration. The present study develops a novel framework for assessing groundwater nitrate contamination risk for the area along the Karakoram Highway, which is a part of the China Pak… Show more

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Cited by 21 publications
(24 citation statements)
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“…Jiroft plain resembling, qualitatively, the distributions obtained with our model (Sajedi-Hosseini et al 2018;Matzeu et al 2017 andAwais et al 2021). Altogether, the results of our investigation and the observations made in previous work show that the high and very high risk of groundwater contamination in the central and south parts of Jiroft plain can be attributed to the overutilization of fertilizers in agricultural lands, and to waste production in the dense urban lands in the study area.However, one major difference between the approaches adopted in our study and in previous work(Sajedi-Hosseini et al 2018; Matzeu et al 2017 and Awais et al 2021) should be emphasized in this context.…”
supporting
confidence: 85%
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“…Jiroft plain resembling, qualitatively, the distributions obtained with our model (Sajedi-Hosseini et al 2018;Matzeu et al 2017 andAwais et al 2021). Altogether, the results of our investigation and the observations made in previous work show that the high and very high risk of groundwater contamination in the central and south parts of Jiroft plain can be attributed to the overutilization of fertilizers in agricultural lands, and to waste production in the dense urban lands in the study area.However, one major difference between the approaches adopted in our study and in previous work(Sajedi-Hosseini et al 2018; Matzeu et al 2017 and Awais et al 2021) should be emphasized in this context.…”
supporting
confidence: 85%
“…Vulnerability map of groundwater contamination Figure 5 displays the groundwater vulnerability map obtained through the application of the modi ed-DRASTIC method. Hereby, vulnerability was categorized into ve classes: very low, low, moderate, high, and very high, following previous work (Awais et al 2021). As can be seen from Fig.…”
Section: Resultsmentioning
confidence: 99%
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“…Remote Sens. 2022, 14, x FOR PEER REVIEW 3 of 20 machine learning classification algorithms have recently been established as state-of-theart methods for suitability prediction in various disciplines, such as agriculture [9], forestry [23], nature and environment conservation [24], including land and marine contamination studies [25,26]. While these methods have been successfully utilized in previous studies [27,28], habitat suitability prediction methods according to environmental criteria have been relatively unexplored, especially for the purpose of extending the habitat of endangered flora species [29].…”
Section: Study Area and Fieldworkmentioning
confidence: 99%
“…To provide an efficient multispectral imaging solution with high spatial resolution in restricted locations, unmanned aerial systems (UASs) have been successfully implemented in various nature conservation studies, specifically ensuring non-invasive data collection in sensitive study areas [22]. Various machine learning classification algorithms have recently been established as state-of-the-art methods for suitability prediction in various disciplines, such as agriculture [9], forestry [23], nature and environment conservation [24], including land and marine contamination studies [25,26]. While these methods have been success-fully utilized in previous studies [27,28], habitat suitability prediction methods according to environmental criteria have been relatively unexplored, especially for the purpose of extending the habitat of endangered flora species [29].…”
Section: Introductionmentioning
confidence: 99%