Access the full text.
Sign up today, get DeepDyve free for 14 days.
Chen‐Wuing Liu, Kao-Hung Lin, Y. Kuo (2003)
Application of factor analysis in the assessment of groundwater quality in a blackfoot disease area in Taiwan.The Science of the total environment, 313 1-3
Haleh Nampak, B. Pradhan, Mohammad Manap (2014)
Application of GIS based data driven evidential belief function model to predict groundwater potential zonationJournal of Hydrology, 513
P. Sander (1997)
Water-Well Siting in Hard-Rock Areas: Identifying Promising Targets Using a Probabilistic ApproachHydrogeology Journal, 5
(2011)
Dynamic ground water resources of India (as on 31 March 2009)
(2004)
Shuttle radar topography mission, 1 arc second scene SRTM_u03_n008e004, unfilled unfinished 2.0
S. Solomon, F. Quiel (2006)
Groundwater study using remote sensing and geographic information systems (GIS) in the central highlands of EritreaHydrogeology Journal, 14
Vanessa Madrucci, Fabio Taioli, C. Araújo (2008)
Groundwater favorability map using GIS multicriteria data analysis on crystalline terrain, Sào Paulo State, BrazilJournal of Hydrology, 357
N. Rao (2006)
Groundwater potential index in a crystalline terrain using remote sensing dataEnvironmental Earth Sciences, 50
G. Bonham-Carter (1995)
Geographic Information Systems for Geoscientists: Modelling with GIS
R. Mall, Akhilesh Gupta, Ranjeet Singh, R. Singh, L. Rathore (2006)
Water resources and climate change: An Indian perspectiveCurrent Science, 90
(2002)
Water management in rural and urban areas
D. Thomas (1989)
Arid zone geomorphology.
Saro Lee, Kyo-Young Song, Yong-Sung Kim, I. Park (2012)
Regional groundwater productivity potential mapping using a geographic information system (GIS) based artificial neural network modelHydrogeology Journal, 20
S. Nag, P. Ghosh (2013)
Delineation of groundwater potential zone in Chhatna Block, Bankura District, West Bengal, India using remote sensing and GIS techniquesEnvironmental Earth Sciences, 70
P. Lachassagne, R. Wyns, P. Bérard, Thierry Bruel, Laurence Chéry, Thierry Coutand, J. Desprats, P. Strat (2001)
Exploitation of High‐Yields in Hard‐Rock Aquifers: Downscaling Methodology Combining GIS and Multicriteria Analysis to Delineate Field Prospecting ZonesGroundwater, 39
Marina Schroder (2016)
Factors Related To Well Yield In The Fractured Bedrock Aquifer Of New Hampshire
K. Adiat, M. Nawawi, K. Abdullah (2012)
Assessing the accuracy of GIS-based elementary multi criteria decision analysis as a spatial prediction tool – A case of predicting potential zones of sustainable groundwater resourcesJournal of Hydrology, 440
TM Mitchell (1977)
Machine learning
S. Shekhar, A. Pandey (2015)
Delineation of groundwater potential zone in hard rock terrain of India using remote sensing, geographical information system (GIS) and analytic hierarchy process (AHP) techniquesGeocarto International, 30
L. Beard (1962)
Statistical Methods in Hydrology
R. Amer, M. Sultan, R. Ripperdan, A. Ghulam, T. Kusky (2013)
An integrated approach for groundwater potential zoning in shallow fracture zone aquifersInternational Journal of Remote Sensing, 34
A. Brown (2016)
Geomorphology And Groundwater
B. Deepika, K. Avinash, K. Jayappa (2013)
Integration of hydrological factors and demarcation of groundwater prospect zones: insights from remote sensing and GIS techniquesEnvironmental Earth Sciences, 70
S. Ettazarini (2007)
Groundwater potentiality index: a strategically conceived tool for water research in fractured aquifersEnvironmental Geology, 52
J. Malczewski (1999)
GIS and Multicriteria Decision Analysis
D. Machiwal, M. Jha, B. Mal (2011)
Assessment of Groundwater Potential in a Semi-Arid Region of India Using Remote Sensing, GIS and MCDM TechniquesWater Resources Management, 25
N Subba Rao (2006)
Groundwater potential index in a crystalline terrain using remote sensing dataEnviron Geol, 50
(1984)
Multivariate analyses: methods and applications
(2001)
Integrated land and water information system, 3.2 academic, user’s guide
D. Machiwal, S. Srivastava, Sadhna Jain (2010)
Estimation of Sediment Yield and Selection of Suitable Sites for Soil Conservation Measures in Ahar River Basin of Udaipur, Rajasthan using RS and GIS TechniquesJournal of the Indian Society of Remote Sensing, 38
M. Jha, V. Chowdary, A. Chowdhury (2010)
Groundwater assessment in Salboni Block, West Bengal (India) using remote sensing, geographical information system and multi-criteria decision analysis techniquesHydrogeology Journal, 18
A. Chowdhury, M. Jha, V. Chowdary, B. Mal (2009)
インド,西ベンガル湾,Medinipur西部地区における地下水資源を評価するためのリモートセンシングとGIS統合アプローチInternational Journal of Remote Sensing, 30
P. Pothiraj, B. Rajagopalan (2013)
A GIS and remote sensing based evaluation of groundwater potential zones in a hard rock terrain of Vaigai sub-basin, IndiaArabian Journal of Geosciences, 6
A. Chowdhury, M. Jha, V. Chowdary (2009)
Delineation of groundwater recharge zones and identification of artificial recharge sites in West Medinipur district, West Bengal, using RS, GIS and MCDM techniquesEnvironmental Earth Sciences, 59
D. Machiwal, M. Jha (2014)
Characterizing rainfall–groundwater dynamics in a hard‐rock aquifer system using time series, geographic information system and geostatistical modellingHydrological Processes, 28
Prafull Singh, Suyash Kumar, U. Singh (2011)
Groundwater resource evaluation in the Gwalior area, India, using satellite data: an integrated geomorphological and geophysical approachHydrogeology Journal, 19
RB Moore, GE Schwarz, SF Clark, GJ Walsh, JR Degnan (2002)
Factors related to well yield in the fractured-bedrock aquifer of New Hampshire. US Geological Survey Professional Paper 1660
D. Machiwal, A. Mishra, M. Jha, A. Sharma, S. Sisodia (2012)
Modeling Short-Term Spatial and Temporal Variability of Groundwater Level Using Geostatistics and GISNatural Resources Research, 21
A. Chowdhury, M. Jha, V. Chowdary, B. Mal (2009)
Integrated remote sensing and GIS‐based approach for assessing groundwater potential in West Medinipur district, West Bengal, IndiaInternational Journal of Remote Sensing, 30
(2005)
Land use planning of Udaipur district – soil resource and agro-ecological assessment
T. Saaty (1980)
The analytic hierarchy process : planning, priority setting, resource allocation
J. Krishnamurthy, N. Kumar, V. Jayaraman, M. Manivel (1996)
An approach to demarcate ground water potential zones through remote sensing and a geographical information systemInternational Journal of Remote Sensing, 17
Rakesh Kumar, Rohit Singh, Kumudini Sharma (2005)
Water resources of IndiaCurrent Science, 89
T. Oberlander (1997)
Slope and pediment systems
Prafull Singh, J. Thakur, Suyash Kumar (2013)
Delineating groundwater potential zones in a hard-rock terrain using geospatial toolHydrological Sciences Journal, 58
D. Machiwal, Jayesh Nimawat, K. Samar (2011)
Evaluation of efficacy of groundwater level monitoring network by graphical and multivariate statistical techniques.Journal of Agricultural Engineering, 48
W. Thornbury (1955)
Principles of geomorphology
This study utilizes for the first time integrated knowledge-driven and data-driven methods for groundwater potential zoning in the hard-rock terrain of Ahar River catchment, Rajasthan, India by employing remote sensing, geographical information system, multi-criteria decision making (MCDM), and multiple linear regression (MLR) techniques. Thematic maps of the 11 hydrological/hydrogeological factors i.e., geomorphology, soil, topographic elevation, slope, drainage density, proximity to surface waterbodies, pre- and post-monsoon groundwater depths, net recharge, transmissivity, and land use/land cover, influencing the groundwater occurrence were used. The themes and their features were assigned suitable weights, which were normalized by the MCDM technique. Finally, the knowledge-driven groundwater potential map, generated by weighted linear combination, revealed that the good, moderate and poor groundwater potential zones are spread over 90.94 km2 (26 %), 135 km2 (39 %) and 122.36 km2 (35 %), respectively. Furthermore, the data-driven precise groundwater potential index (GPI) map was computed by MLR technique. The results of both the knowledge- and data-driven approaches were validated from the well yields of 18 sites and were found to be comparable to each other. Moreover, exogenous and endogenous factors affecting the good, moderate and poor groundwater potential were identified by applying principal component analysis. The results of the study are useful to water managers and decision makers for locating appropriate positions of new productive wells in the study area. The novel approach and findings of this study may also be used for developing policies for sustainable utilization of the groundwater resources in other hard-rock regions of the world.
Environmental Earth Sciences – Springer Journals
Published: Jul 30, 2014
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.