A data mining approach for improved interpretation of ERT inverted sections using the DBSCAN clustering algorithm

Author:

Sabor Kawtar12,Jougnot Damien1ORCID,Guerin Roger1,Steck Barthélémy2,Henault Jean-Marie2,Apffel Louis2,Vautrin Denis2

Affiliation:

1. Sorbonne Université, CNRS, EPHE, UMR 7619 METIS, 75005 Paris, France

2. EDF-R&D Lab Chatou, 6 quai watier, 78400 Chatou, France

Abstract

SUMMARY Geophysical imaging using the inversion procedure is a powerful tool for the exploration of the Earth's subsurface. However, the interpretation of inverted images can sometimes be difficult, due to the inherent limitations of existing inversion algorithms, which produce smoothed sections. In order to improve and automate the processing and interpretation of inverted geophysical models, we propose an approach inspired from data mining. We selected an algorithm known as DBSCAN (Density-Based Spatial Clustering of Applications with Noise) to perform clustering of inverted geophysical sections. The methodology relies on the automatic sorting and clustering of data. DBSCAN detects clusters in the inverted electrical resistivity values, with no prior knowledge of the number of clusters. This algorithm has the advantage of being defined by only two parameters: the neighbourhood of a point in the data space, and the minimum number of data points in this neighbourhood. We propose an objective procedure for the determination of these two parameters. The proof of concept described here is applied to simulated ERT (electrical resistivity tomography) sections, for the following three cases: two layers with a step, two layers with a rebound, and two layers with an anomaly embedded in the upper layer. To validate this approach, sensitivity studies were carried out on both of the above parameters, as well as to assess the influence of noise on the algorithm's performance. Finally, this methodology was tested on real field data. DBSCAN detects clusters in the inverted electrical resistivity models, and the former are then associated with various types of earth materials, thus allowing the structure of the prospected area to be determined. The proposed data-mining algorithm is shown to be effective, and to improve the interpretation of the inverted ERT sections. This new approach has considerable potential, as it can be applied to any geophysical data represented in the form of sections or maps.

Publisher

Oxford University Press (OUP)

Subject

Geochemistry and Petrology,Geophysics

Reference48 articles.

1. Research trends on big data in marketing: a text mining and topic modeling based literature analysis;Amado;Eur. Res. Manag. Bus. Econ.,2018

2. Tomographic P wave velocity and vertical velocity gradient structure across the geothermal site Groß Schönebeck (NE German Basin): relationship to lithology, salt tectonics, and thermal regime;Bauer;J. geophys. Res.,2010

3. Integration of geotechnical and geophysical techniques for the characterization of a small earth-filled canal dyke and the localization of water leakage;Bièvre;J. appl. Geophys.,2017

4. Tools and techniques: DC electrical methods;Binley;Treatise on Geophysics,2015

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