Scholarly record
GEOPHYSICS AND MACHINE LEARNING BASED SURVEYING OF GROUNDWATER POLLUTION: A CASE STUDY OF SOUTHERN ACID TAR LAGOON, INCUKALNS, LATVIA
Abstract
Acid tar lagoons (ATLs) are a common source of groundwater pollution in industrialized countries worldwide. Even after recultivation, the spatial extent of the residual environmental pollution from such lagoons is often unknown, as the monitoring of groundwater is mostly done in discrete locations ? monitoring wells. Shallow surface geophysical methods, such as ground penetrating radar (GPR) and electrical resistivity tomography (ERT) are often used in monitoring groundwater and soil contamination. The greatest value from shallow surface exploration can be received by coupling multiple geophysical methods, which can be a challenge, considering the different geophysical properties measured. We propose the use of machine learning techniques to identify the different subsurface contamination zones. In this study we combine two-dimensional electrical resistivity measurements with GPR amplitude measurements using simple k-means clustering to map out residual soil contamination zones near the acid tar lagoon of Incukalns, Latvia. We then compare the clustering results with more conventional quasi-Newton two-dimensional ERT inversion results of the same site. Information obtained from clustering shows promise in future geophysical exploration, as comparable results can be obtained with fewer assumptions of subsurface geology. Our study demonstrates the potential of clustering methods to integrate different shallow-surface geophysical exploration methods and points out to possible future improvements in machine-learning based soil contamination mapping.
Publication Impact Profile
Publication details
ReferencesPending
Structured references will appear here after the reference import pass. The count is preserved now so the scholarly record is not incomplete.
View or Download full articleAccess options
SWS access login
Login as SWS Scientific CommitteeLogin as SWS Scientific PartnerLogin as SWS AuthorAuthors and approved SWS contributors will read and export their own linked papers after identity matching by SWS profile, email and SGEM GlobalID.
For librarian assistance: [email protected]
Purchase Instant Access
- Article can be downloaded after successful payment.
- Article may be used according to SWS library access terms.
- Article cannot be redistributed.

