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High-resolution paleovalley classification from airborne electromagnetic imaging and deep neural network training using digital elevation model data.

Authors :
Jiang, Zhenjiao
Mallants, Dirk
Peeters, Luk
Gao, Lei
Soerensen, Camilla
Mariethoz, Gregoire
Source :
Hydrology & Earth System Sciences; 2019, Vol. 23 Issue 6, p2561-2580, 20p, 1 Diagram, 15 Graphs, 2 Maps
Publication Year :
2019

Abstract

Paleovalleys are buried ancient river valleys that often form productive aquifers, especially in the semiarid and arid areas of Australia. Delineating their extent and hydrostratigraphy is however a challenging task in groundwater system characterization. This study developed a methodology based on the deep learning super-resolution convolutional neural network (SRCNN) approach, to convert electrical conductivity (EC) estimates from an airborne electromagnetic (AEM) survey in South Australia to a high-resolution binary paleovalley map. The SRCNN was trained and tested with a synthetic training dataset, where valleys were generated from readily available digital elevation model (DEM) data from the AEM survey area. Electrical conductivities typical of valley sediments were generated by Archie's law, and subsequently blurred by down-sampling and bicubic interpolation to represent noise from the AEM survey, inversion and interpolation. After a model training step, the SRCNN successfully removed such noise, and reclassified the low-resolution, converted unimodal but skewed EC values into a high-resolution paleovalley index following a bimodal distribution. The latter allows us to distinguish valley from non-valley pixels. Furthermore, a realistic spatial connectivity structure of the paleovalley was predicted when compared with borehole lithology logs and a valley bottom flatness indicator. Overall the methodology permitted us to better constrain the three-dimensional paleovalley geometry from AEM images that are becoming more widely available for groundwater prospecting. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10275606
Volume :
23
Issue :
6
Database :
Complementary Index
Journal :
Hydrology & Earth System Sciences
Publication Type :
Academic Journal
Accession number :
137377774
Full Text :
https://doi.org/10.5194/hess-23-2561-2019