Advanced Analysis Of Soil Pollution In Southwestern Ghana Using Variational Autoencoders (VAE) And Positive Matrix Factorization (PMF)
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Date
2025-02-06
Journal Title
Journal ISSN
Volume Title
Publisher
Environmental and Sustainability Indicators
Abstract
The study combined the Positive Matrix Factorization (PMF) receptor model with the Variational Autoencoders
(VAE) Machine Learning technique and ecological risk indices to study the spatial distribution, sources and
patterns of soil pollution in the study area. 719 soil samples were analysed for selected Potentially Toxic Ele ments (PTEs) concentrations. As (9.68 mg/L), and Pb (7.43 mg/L) reported elevated levels across the area linked
to mining activities. The PTEs displayed a decreasing trend in the order Ba > Cr > V > Zn > Cu > Ni > As > Pb
> Co. The Pearson correlation matrix outlines two main groups of PTEs: (1) moderate correlation (Ba, Cr, Cu, Ni
and V) and (2) weak correlation (As, Pb and Zn). These relationships are corroborated by the VAE, which
outlined a low contribution by As and a high contribution by V to all the latent dimensions. The PMF revealed
three factors: Factor 1 (geogenic): Ba (77.5%), Cu (54.4%), Ni (66.4%), V (54.0) and Cr (46.8%). Factor 2
(mixed) Co (61.6%), Pb (64.8%) and Zn (71.0%). Factor 3 (anthropogenic) As (86.7%). The degree of
contamination analysis depicts that 69.03% of the samples are moderately polluted, while 15.14% and 0.28%
revealed considerable and very high pollution, respectively. The pollution load index shows that 20% of the
samples depict the existence of pollution. The Potential Ecological Risk Index (RI) values showed that most
samples (97.08%) suggest low pollution, while 2.92% depict moderate pollution. Integrating chemometric and
machine learning techniques provides a dynamic system that can monitor pollution shifts early, to aid reme diation efforts in highly affected areas.
Description
Research Article
Keywords
Toxicity, Galamsey, Gold mining, Environmental degradation, Data reduction
Citation
Kazapoe, R. W., Kwayisi, D., Alidu, S., Sagoe, S. D., Umaru, A. O., Amuah, E. E. Y., ... & Fynn, O. F. (2025). Advanced analysis of soil pollution in southwestern Ghana using Variational Autoencoders (VAE) and positive matrix factorization (PMF). Environmental and Sustainability Indicators, 26, 100627.
