2-Dimensional soil and vadose-zone representation using an EM38 and EM34 and a laterally constrained inversion model
J. Triantafilis A C and F. A. Monteiro Santos BA School of Biological, Earth and Environmental Sciences, The University of New South Wales, NSW 2006, Australia.
B Universidade de Lisboa, Instituto Don Luís Laboratório Associado, C8, 1749-016 Lisboa, Portugal.
C Corresponding author. Email: j.triantafilis@unsw.edu.au
Australian Journal of Soil Research 47(8) 809-820 https://doi.org/10.1071/SR09013
Submitted: 13 January 2009 Accepted: 17 August 2009 Published: 11 December 2009
Abstract
The network of prior streams and palaeochannels common across the Riverine Plains of the Murray–Darling Basin act as conduits for the redistribution of water and soluble salts beneath the root-zone. To improve scientific understanding of these hydrological processes there is the need to better represent and map the connectivity and spatial extent of these physiographic and stratigraphic features. Groundbased electromagnetic (EM) instruments, which measure bulk soil electrical conductivity (σa), have been used widely to map their areal distribution across the landscape. However, methods to resolve their location with depth have rarely been attempted. In this paper we employ a 1-D inversion algorithm with 2-D smoothness constraints to predict the true electrical conductivity (σ) at discrete depth increments using EM data. The EM data we use include the root-zone measuring EM38 and the deeper sensing EM34. We collected EM38 data in the vertical (EM38v) and horizontal (EM38h) dipole modes and EM34 data in the horizontal mode and coil spacing of 10, 20, and 40 m (respectively, EM34-10, EM34-20, and EM34-40). In order to compare and contrast the value of the various EM data we carried out multiple inversions using different combinations, which include: independent inversions of (i) EM38 (root-zone) and (ii) EM34 data (vadose-zone), and in combination using (iii) EM38v, EM38h, and EM34-10 (near-surface), and (iv) all 5 EM datasets (regolith) available. The general patterns of σ are shown to compare favourably with the known pedoderms, physiographic, and stratigraphic features and soil particle size fractions collected from calibration cores drilled across the lower Macquarie Valley study area. In general we find that the EM38 assists in resolving root-zone variability, specifically duplex soil profiles and physiographic features such as prior streams, while the use of the EM34 assists in resolving the stratigraphic nature of the vadose-zone and specifically the likely location of palaeochannels and subsurface anomalies that may indicate the location of good quality groundwater and/or clay aquitards. In this case, our potential to use σ to predict clay content is limited by the non-linearity of the cumulative functions. In order to improve on the non-linearity of our inversion we need to develop a full solution of the forward problem.
Additional keywords: EM38, EM34, clay content, prior stream channel, palaeochannel, EM inversion.
Acknowledgments
The Australian Federal Governments Australian Cotton Research and Development Corporation in association with the Australian Cotton Cooperative Research Centre (CRC-11C) provided funding for the collection of the EM34 and EM38 surveys, soil sampling, and laboratory analysis. Additional funds were obtained from the Natural Heritage Trust (NHT-CW0369.99). We thank the landholders who allowed access to their farms; in particular, Mr Mal Carpenter (General Manager, Agriland Pty Ltd). We acknowledge Mr Michael Short, Mathew McRrae, Andrew Huckel, Esta Kokkoris, and Dr Ranjith Subasinghe who carried out the EM survey and Esta Kokkoris and Dr Ranjith Subasinghe for determination of the particle size fractions. F. A. Monteiro Santos acknowledges the financial support of Fundação para a Ciência e Tecnologia (Grant: SFRH/BSAB/902/2009).
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