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Prediction of groundwater contamination in an open landfill area using a novel hybrid clustering-based AI model

Treść / Zawartość
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Groundwater is a vital resource that provides drinking water to over half of the world's population. However, groundwater contamination has become a serious issue due to human activities such as industrialization, agriculture, and improper waste disposal. The impacts of groundwater contamination can be severe, including health risks, environmental damage, and economic losses. A list of unknown groundwater contamination sources has been developed for the Wang-Tien landfill using a groundwater modeling system (GMS). Further, AI-based models have been developed which accurately predict the contamination from the sources at this site. A serious complication with most previous studies using artificial neural networks (ANN) for contamination source identification has been the large size of the neural networks. We have designed the ANN models which use three different ways of presenting inputs that are categorized by hierarchical K-means clustering. Such an implementation reduces the overall complexity of the model along with high accuracy. The predictive capability of developed models was assessed using performance indices and compared with the ANN models. The results show that the hybrid model of hierarchical K-means clustering and ANN model (HCA-ANN) is a highly accurate model for identifying pollution sources in contaminated water.
Rocznik
Strony
105--122
Opis fizyczny
BIbliogr. 25 poz., rys., tab.
Twórcy
autor
  • Department of Civil Engineering, Madhav Institute of Technology and Science, Gwalior 474011, India
autor
  • Department of Electronics Engineering, Madhav Institute of Technology and Science, Gwalior 474011, India
  • Department of Mechanical Engineering, Saveetha School of Engineering, SIMATS, Chennai, Tamil Nadu, India
  • Civil Engineering Department, Kamala Institute of Technology and Science. Singapur, Karimnagar, Telangana, India
  • Department of Mechatronics Engineering, KCG College of Technology, Karapakkam Chennai 600097, Tamil Nadu, India
  • Department of Civil Engineering, KCG College of Technology, Karapakkam, Chennai 600097, India
  • QIS College of Engineering and Technology, Vengumukpalem, Ongole-523272, AP, India
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-1f1e8bee-fdc1-4a70-8816-d8eeb0413449
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