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Modeling the effects of essential heavy metals on environmental pollution: A linear and nonlinear prediction model via cascade forward‐neural network

The use of artificial neural networks (ANN) in studies with different content is increasing day by day, and its impact and acceptability are also increasing. The importance of using ANN in popular and large‐scale fields such as environmental pollution studies is known. Studies are carried out consid...

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Published in:Mathematical methods in the applied sciences 2024-04, Vol.47 (6), p.4306-4318
Main Authors: Yolcu, Ufuk, Yalcin, Ibrahim Ertugrul, Uras, Mehmet Emin, Ozyigit, Ibrahim Ilker
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container_title Mathematical methods in the applied sciences
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Yalcin, Ibrahim Ertugrul
Uras, Mehmet Emin
Ozyigit, Ibrahim Ilker
description The use of artificial neural networks (ANN) in studies with different content is increasing day by day, and its impact and acceptability are also increasing. The importance of using ANN in popular and large‐scale fields such as environmental pollution studies is known. Studies are carried out considering the need to develop ANNs, which can be an alternative to the data obtained as a result of the analyses made with instrumental devices that require high costs and trained human labor. This study, which was carried out using real data and samples showing biomonitoring properties such as soil and plants, is an example to fill the gaps in the literature. In this study, tools that can model both linear and nonlinear relationships were used. The simulation of the dynamic ecological system containing Fe, Mn, and Ni heavy metals was carried out from the point of view of artificial intelligence. It is revealed that ANN systems are supportive methods in studies of determining environmental pollution, especially in biomonitoring studies.
doi_str_mv 10.1002/mma.9815
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ispartof Mathematical methods in the applied sciences, 2024-04, Vol.47 (6), p.4306-4318
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1099-1476
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source Wiley-Blackwell Read & Publish Collection
subjects ANN
Artificial intelligence
Artificial neural networks
Biomonitoring
Cost analysis
environmental pollution
Heavy metals
Iron
Manganese
model design
Neural networks
prediction model
Prediction models
Soil properties
title Modeling the effects of essential heavy metals on environmental pollution: A linear and nonlinear prediction model via cascade forward‐neural network
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