Access the full text.
Sign up today, get DeepDyve free for 14 days.
E. Weisstein (2014)
Fundamental Theorem of Linear Algebra
(2018)
Department of Environment, Parks and Water Security. (2020) Depth to groundwater from the groundwater model for the Western Davenport Plains at 31
Grayson Badgley, C. Field, J. Berry (2017)
Canopy near-infrared reflectance and terrestrial photosynthesisScience Advances, 3
(2022)
The Authors. Remote Sensing in Ecology and Conservation
D. Eamus, R. Froend, R. Loomes, G. Hose, B. Murray (2006)
A functional methodology for determining the groundwater regime needed to maintain the health of groundwater-dependent vegetationAustralian Journal of Botany, 54
(2008)
Treatment of GDEs in the Ti tree and Western Davenport water allocation plans, unpublished report to the Department of Environment and Natural Resources Northern Territory Government
P. Cook, A. O'Grady, J. Wischusen, A. Duguid, T. Fass, D. Eamus (2008)
Ecohydrology of sand plain woodlands in central Australia
M. Deisenroth, A. Faisal, Cheng Ong (2020)
Mathematics for Machine Learning
C. Tucker (1979)
Red and photographic infrared linear combinations for monitoring vegetationRemote Sensing of Environment, 8
D. Vining, G. Gladish (1992)
Receiver operating characteristic curves: a basic understanding.Radiographics : a review publication of the Radiological Society of North America, Inc, 12 6
J. Gallant, N. Wilson, T. Dowling, A. Read, C. Inskeep (2011)
SRTM-derived 1 Second Digital Elevation Models Version 1.0
D. Eamus (2009)
Identifying groundwater dependent ecosystems: a guide for land and water managers
Strang G. (1993)
10.1080/00029890.1993.11990500The American Mathematical Monthly, 100
H. Yanai, Kei Takeuchi, Yoshio Takane (2011)
Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition
(2018)
Darwin: Department of Environment and Natural Resources, Northern Territory Government
J. Everitt, C. Deloach (1990)
Remote Sensing of Chinese Tamarisk (Tamarix chinensis) and Associated VegetationWeed Science, 38
(1999)
Floodouts in central Australia
(1974)
Monitoring the vernal advancement
S. Villeneuve, P. Cook, M. Shanafield, C. Wood, Nick White (2015)
Groundwater recharge via infiltration through an ephemeral riverbed, central AustraliaJournal of Arid Environments, 117
Naumburg E. (2005)
10.1007/s00267‐004‐0194‐7Environmental Management, 35
C. Canham, R. Froend, W. Stock, M. Davies (2012)
Dynamics of phreatophyte root growth relative to a seasonally fluctuating water table in a Mediterranean-type environmentOecologia, 170
M. Bierkens, Y. Wada (2019)
Non-renewable groundwater use and groundwater depletion: a reviewEnvironmental Research Letters, 14
Box J. (2008)
10.1016/j.jaridenv.2008.02.022Journal of Arid Environments, 72
Masoomeh Alaibakhsh, I. Emelyanova, O. Barron, M. Khiadani, G. Warren (2017)
Large‐scale regional delineation of riparian vegetation in the arid and semi‐arid Pilbara region, WAHydrological Processes, 31
A. Duguid (2009)
Wetlands Of the Western Davenports Water Control Distric
D. Eamus, S. Zolfaghar, R. Villalobos-Vega, J. Cleverly, A. Huete (2015)
Groundwater-dependent ecosystems: recent insights from satellite and field-based studiesHydrology and Earth System Sciences, 19
E. Colstoun (2003)
National Park vegetation mapping using multitemporal Landsat 7 data and a decision tree classifierRemote Sensing of Environment, 85
P. Cook, D. Eamus (2018)
The potential for groundwater use by vegetation in the Australian Arid Zone
(2018)
Western Davenport water allocation plan 2018 – 2021
T. Doody, O. Barron, K. Dowsley, I. Emelyanova, J. Fawcett, I. Overton, J. Pritchard, A. Dijk, G. Warren (2017)
Continental mapping of groundwater dependent ecosystems: A methodological framework to integrate diverse data and expert opinionJournal of Hydrology: Regional Studies, 10
S. Pfautsch, W. Dodson, S. Madden, M. Adams (2015)
Assessing the impact of large‐scale water table modifications on riparian trees: a case study from AustraliaEcohydrology, 8
M. Rohde, R. Froend, J. Howard (2017)
A Global Synthesis of Managing Groundwater Dependent Ecosystems Under Sustainable Groundwater PolicyGroundwater, 55
T. Hubble, B. Docker, I. Rutherfurd (2010)
The role of riparian trees in maintaining riverbank stability: A review of Australian experience and practiceEcological Engineering, 36
Yuanxin Liu, Yihe Lyu, Yingfei Bai, Buyun Zhang, X. Tong (2020)
Vegetation Mapping for Regional Ecological Research and Management: A Case of the Loess Plateau in ChinaChinese Geographical Science, 30
L. Malatesta, F. Attorre, A. Altobelli, A. Adeeb, M. Sanctis, Nadim Taleb, P. Scholte, M. Vitale (2013)
Vegetation mapping from high-resolution satellite images in the heterogeneous arid environments of Socotra Island (Yemen)Journal of Applied Remote Sensing, 7
G. Stephens, J. Slingo, E. Rignot, J. Reager, M. Hakuba, P. Durack, J. Worden, R. Rocca (2020)
Earth's water reservoirs in a changing climateProceedings of the Royal Society A, 476
E. Naumburg, R. Mata-González, R. Hunter, T. Mclendon, D. Martin (2005)
Phreatophytic Vegetation and Groundwater Fluctuations: A Review of Current Research and Application of Ecosystem Response Modeling with an Emphasis on Great Basin VegetationEnvironmental Management, 35
Rafael Grenade, Rafael Grenade, L. Stevens, L. Stevens (2019)
Desert Oasis Springs: Ecohydrology, Biocultural Diversity, Mythology, and Societal Implications
C. Clifton, B. Cossens, C. McAuley, R. Evans, P. Cook, P. Howe, A. Boulton (2007)
A Framework for Assessing the Environmental Water Requirements of Groundwater Dependent Ecosystems
B. Gao (1996)
NDWI—A normalized difference water index for remote sensing of vegetation liquid water from spaceRemote Sensing of Environment, 58
R. Phillips, L. Watson, R. Wynne, C. Blinn (2009)
Feature reduction using a singular value decomposition for the iterative guided spectral class rejection hybrid classifierIsprs Journal of Photogrammetry and Remote Sensing, 64
D. Kalisperi (2009)
Assessment of groundwater resources in the north-central coast of Crete, Greece using geophysical and geochemical methods
(2008)
A review of groundwater‐dependent ecosystems in Central Australia: oases of aquatic biodiversity
W. Aeschbach–Hertig, T. Gleeson (2012)
Regional strategies for the accelerating global problem of groundwater depletionNature Geoscience, 5
(2018)
Investing in the horticultural growth of Central Australia
(2010)
Eyre peninsula groundwater dependent ecosystem scoping study
(2021)
Available from: https://docs
P. Nagler, E. Glenn, Kim Hursh, C. Curtis, A. Huete (2005)
Vegetation Mapping for Change Detection on an Arid-Zone RiverEnvironmental Monitoring and Assessment, 109
(2000)
A learner’s guide to Kaytetye
(2018)
2018a) The potential for groundwater
(2017)
The impact of modelled pumping scenarios on groundwater dependent ecosystems in the Western Davenport region
R. Jafari, Megan Lewis, B. Ostendorf (2007)
EVALUATION OF VEGETATION INDICES FOR ASSESSING VEGETATION COVER IN SOUTHERN ARID LANDS IN SOUTH AUSTRALIARangeland Journal, 29
A. Huete, K. Didan, T. Miura, E. Rodriguez, Xiang Gao, L. Ferreira (2002)
Overview of the radiometric and biophysical performance of the MODIS vegetation indicesRemote Sensing of Environment, 83
(2011)
Australian groundwater-dependent ecosystems toolbox part 2: assessment tools. Canberra: Waterlines Report, National Water Commission
Valerie Pasquarella, Christopher Holden, L. Kaufman, C. Woodcock (2016)
From imagery to ecology: leveraging time series of all available Landsat observations to map and monitor ecosystem state and dynamicsRemote Sensing in Ecology and Conservation, 2
(2021)
Ecological characteristics of potential groundwater dependent vegetation in the Western Davenport water Control District
(2009)
Unpublished internal report to Northern Territory Government Department of Natural Resources, environment, the Arts and Sport
The spatial extent of terrestrial vegetation types reliant on groundwater in arid Australia is poorly known, largely because they are located in remote areas that are expensive to survey. In previous attempts, the use of traditional remote sensing approaches failed to discriminate vegetation using groundwater from surrounding vegetation. Difficulties in discerning vegetation groundwater use by remote sensing may be exacerbated by the unpredictable rainfall patterns and lack of annual wet and dry seasons common in arid Australia. This study presents a novel approach to mapping terrestrial groundwater‐dependent ecosystems (GDEs) by applying singular value decomposition (SVD) to time‐series of vegetation indices derived from Landsat‐8 data, to isolate the temporal and spatial sources of variation associated with groundwater use. In‐situ data from 442 sites were used to supervise and validate logistic regression models and neural networks, to determine whether sites could be correctly classified as GDEs using components obtained from the SVD. These results were used to produce a probability map of GDE occurrence across a 557 000 ha study area. Overall accuracy of the final classification map was 79%, with 72% of sites correctly identified as GDEs (true positives) and 16% incorrectly classified as GDEs (false positives). The approach is broadly applicable in arid regions globally, and is easily validated if general background knowledge of regional vegetation exists. Globally, and going forward, increased water extraction is expected to severely limit water available for GDEs. Successfully mapping GDEs in arid environments is a critical step towards their sustainable management, and the human and natural systems reliant upon them.
Remote Sensing in Ecology and Conservation – Wiley
Published: Aug 1, 2022
Keywords: Groundwater‐dependent ecosystem; Landsat; mapping; time‐series; singular value decomposition
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.