159
Views
2
CrossRef citations to date
0
Altmetric
Original Articles

Combined radiometer and scatterometer derived soil moisture product for the Indo-Gangetic basin

ORCID Icon & ORCID Icon
Pages 456-473 | Received 30 Jun 2019, Accepted 06 Jan 2020, Published online: 04 Mar 2020

References

  • Abbaszadeh P, Moradkhani H, Zhan X. 2019. Downscaling SMAP radiometer soil moisture over the CONUS using an ensemble learning method. Water Resour Res. 55(1):324–344.
  • Afshar MH, Yilmaz MT. 2017. The added utility of nonlinear methods compared to linear methods in rescaling soil moisture products. Remote Sens Environ. 196:224–237.
  • Akaike H. 1974. A new look at the statistical model identification. IEEE Trans Automat Control. 19(6):716–723.
  • Arora SK, Jha B. 2008. Frequently asked questions (FAQ). India: Indian Meteorological Department.
  • Bai L, Long D, Yan L. 2019. Estimation of surface soil moisture with downscaled land surface temperatures using a data fusion approach for heterogeneous agricultural land. Water Resour Res. 55(2):1105–1128.
  • Barrett BW, Dwyer E, Whelan P. 2009. Soil moisture retrieval from active spaceborne microwave observations: an evaluation of current techniques. Remote Sens. 1(3):210–242.
  • Brocca L, Ciabatta L, Massari C, Camici S, Tarpanelli A. 2017. Soil moisture for hydrological applications: open questions and new opportunities. Water. 9(2):140.
  • Brocca L, Hasenauer S, Lacava T, Melone F, Moramarco T, Wagner W, Dorigo W, Matgen P, Martínez-Fernández J, Llorens P, et al. 2011. Soil moisture estimation through ASCAT and AMSR-E sensors: an intercomparison and validation study across Europe. Remote Sens Environ. 115(12):3390–3408.
  • Brouwer C, Heibloem M. 1986. Irrigation Water Management: Irrigation Water Needs. Training Manual No. 3. Food and Agriculture Organization. http://www.fao.org/docrep/s2022e/s2022e00.htm#Contents.
  • Chandrasekhar S. 1960. Radiative transfer. 1st ed. New York: Dover Publications, Inc.
  • Cho E, Choi M, Wagner W. 2015. An assessment of remotely sensed surface and root zone soil moisture through active and passive sensors in northeast Asia. Remote Sens Environ. 160:166–179.
  • Chow VT, Maidment DR, Mays LW. 1988. Applied hydrology. New York (NY): Tata Mcgraw Hill Publishing Company Limited. ( McGraw-Hill series in water resources and environmental engineering; IV).
  • Cui C, Xu J, Zeng J, Chen K-S, Bai X, Lu H, Chen Q, Zhao T. 2017. Soil moisture mapping from satellites: an intercomparison of SMAP, SMOS, FY3B, AMSR2, and ESA CCI over two dense network regions at different spatial scales. Remote Sens. 10(2):33.
  • Das NN, Entekhabi D, Dunbar RS, Kim S, Yueh S, Colliander A, O’Neill PE, Jackson T. 2018. SMAP/Sentinel-1 L2 radiometer/radar 30-second scene 3 km EASE-grid soil moisture, version 2. NASA National Snow and Ice Data Center DAAC.
  • de Boer-Euser T, McMillan HK, Hrachowitz M, Winsemius HC, Savenije HHG. 2016. Influence of soil and climate on root zone storage capacity. Water Resour Res. 52(3):2009–2024.
  • Didan K. 2015. MYD13A2 MODIS/Aqua Vegetation Indices 16-day L3 Global 1km SIN Grid V006. NASA EOSDIS Land Processes DAAC.
  • Dobson MC, Ulaby FT. 1986. Active microwave soil moisture research. IEEE Trans Geosci Remote Sens. 1:23–36.
  • Dobson MC, Ulaby FT, Hallikainen MT, El-Rayes MA. 1985. Microwave dielectric behavior of wet soil-part II: dielectric mixing models. IEEE Trans Geosci Remote Sens. 1:35–46.
  • Duan L, Fan K, Li W, Liu T. 2019. Spatial downscaling algorithm of TRMM precipitation based on multiple high-resolution satellite data for Inner Mongolia, China. Theor Appl Climatol. 135(1–2):45–59.
  • El Hajj M, Baghdadi N, Zribi M, Rodríguez-Fernández N, Wigneron J, Al-Yaari A, Al Bitar A, Albergel C, Calvet J-C. 2018. Evaluation of SMOS, SMAP, ASCAT and Sentinel-1 soil moisture products at sites in southwestern France. Remote Sens. 10(4):569.
  • Entekhabi D, Njoku EG, O'Neill PE, Kellogg KH, Crow WT, Edelstein WN, Entin JK, Goodman SD, Jackson TJ, Johnson J, et al. 2010. The soil moisture active passive (SMAP) mission. Proc IEEE. 98(5):704–716.
  • Entekhabi D, Yueh S, O’Neill PE, Kellogg KH. 2014. SMAP handbook. US: National Aeronautics and Space Administration.
  • Fabozzi FJ, Focardi SM, Rachev ST, Arshanapalli BG. 2014. The basics of financial econometrics: tools, concepts, and asset management applications. Hoboken (NJ): John Wiley & Sons, Inc.
  • Frenken K. 2012. Irrigation in Southern and Eastern Asia in Figures. 37. FAO Water Reports. Rome: Food and Agriculture Organization of the United Nations.
  • “Ganga.” [accessed 2018 September 30]. http://india-wris.nrsc.gov.in/wrpinfo/index.php?title=Ganga.
  • Guhathakurta P, Rajeevan M. 2008. Trends in the rainfall pattern over India. Int J Climatol. 28(11):1453–1469.
  • Gwak Y, Kim S. 2017. Factors affecting soil moisture spatial variability for a humid forest hillslope: factors affecting soil moisture. Hydrol Process. 31(2):431–445.
  • Hallikainen MT, Ulaby FT, Dobson MC, El-Rayes MA, Wu L-K. 1985. Microwave dielectric behavior of wet soil-part 1: empirical models and experimental observations. IEEE Trans Geosci Remote Sens. GE-23(1):25–34.
  • “IMD – Monsoon.” [accessed 2019 May 29]. http://www.imd.gov.in/pages/monsoon_main.php.
  • “India – India: Issues and Priorities for Agriculture.” [accessed 2019 January 1]. http://web.worldbank.org/archive/website01291/WEB/0__CO-12.HTM.
  • Jain SK. 2005. Ganga River, India.
  • Kidd R. 2018. ECV production, fusion of soil moisture products: algorithm theoretical baseline document, 41.
  • Kim D, Moon H, Kim H, Im J, Choi M. 2018. Intercomparison of downscaling techniques for satellite soil moisture products. Adv Meteorol. 2018:1–16.
  • Koster RD. 2004. Regions of strong coupling between soil moisture and precipitation. Science. 305(5687):1138–1140.
  • Koster RD, Sud YC, Guo Z, Dirmeyer PA, Bonan G, Oleson KW, Chan E, Verseghy D, Cox P, Davies H, et al. 2006. GLACE: The Global Land–Atmosphere Coupling Experiment. Part I: Overview. J Hydrometeorol. 7(4):590–610.
  • Lakshmi V. 2013. Remote sensing of soil moisture. ISRN Soil Sci. 2013:1–33.
  • Lakshmi V, Fayne J, Bolten J. 2018. A comparative study of available water in the major river basins of the world. J Hydrol. 567:510–532.
  • Lee CS, Dong Park J, Shin J, Jang J-D. 2017. Improvement of AMSR2 soil moisture products over South Korea. IEEE J Sel Top Appl Earth Obs Remote Sens. 10(9):3839–3849.
  • Liao K, Lai X, Zhou Z, Zhu Q. 2017. Combining the ensemble mean and bias correction approaches to reduce the uncertainty in hillslope-scale soil moisture simulation. Agric Water Manage. 191:29–36.
  • Liu M, Adam JC, Richey AS, Zhu Z, Myneni RB. 2018. Factors controlling changes in evapotranspiration, runoff, and soil moisture over the conterminous U.S.: accounting for vegetation dynamics. J Hydrol. 565:123–137.
  • Liu YY, Parinussa RM, Dorigo WA, De Jeu RAM, Wagner W, van Dijk AIJM, McCabe MF, Evans JP. 2011. Developing an improved soil moisture dataset by blending passive and active microwave satellite-based retrievals. Hydrol Earth Syst Sci. 15(2):425–436.
  • Mishra A, Singh R, Raghuwanshi NS, Chatterjee C, Froebrich J. 2013. Spatial variability of climate change impacts on yield of rice and wheat in the Indian Ganga Basin. Sci Total Environ. 468–469:S132–S138.
  • Mishra V, Shah R, Garg A. 2016. Climate change in Madhya Pradesh: indicators, impacts and adaptation. Ahmedabad (India): Indian Institute of Management Ahmedabad.
  • Naeimi V, Bartalis Z, Wagner W. 2009. ASCAT soil moisture: an assessment of the data quality and consistency with the ERS scatterometer heritage. J Hydrometeorol. 10(2):555–563.
  • Njoku EG, Entekhabi D. 1996. Passive microwave remote sensing of soil moisture. J Hydrol. 184(1–2):101–129.
  • Oh Y, Sarabandi K, Ulaby FT. 1992. An empirical model and an inversion technique for radar scattering from bare soil surfaces. IEEE Trans Geosci Remote Sens. 30(2):370–381.
  • Oza SR, Panigrahy S, Parihar JS. 2008. Concurrent use of active and passive microwave remote sensing data for monitoring of rice crop. Int J Appl Earth Obs Geoinf. 10(3):296–304.
  • Peplinski NR, Ulaby FT, Dobson MC. 1995. Dielectric properties of soils in the 0.3–1.3-GHz range. IEEE Trans Geosci Remote Sens. 33(3):803–807.
  • Petropoulos GP. 2017. Remote sensing of energy fluxes and soil moisture content. 1st ed. US: CRC Press.
  • Petropoulos G, Griffiths H, Dorigo W, Xaver A, Gruber A. 2013. Surface soil moisture estimation: significance, controls, and conventional measurement techniques. In: G. Petropoulos, editor. Remote Sensing of Energy Fluxes and Soil Moisture Content. US: CRC Press; p. 29–48.
  • Ramakrishnan PS. 2003. The sacred Ganga river-based cultural landscape. Mus Int. 55(2):7–17.
  • Rodell M, Houser PR, Jambor U, Gottschalck J, Mitchell K, Meng C.-J, Arsenault K, Cosgrove B, Radakovich J, Bosilovich M, et al. 2004. The global land data assimilation system. Bull Am Meteorol Soc. 85(3):381–394.
  • Schlenz F, Loew A, Mauser W. 2008. Soil moisture retrieval from passive microwave data: a sensitivity study using a coupled Svat-Radiative Transfer Model at the Upper Danube Anchor Site. In: IEEE International Geoscience and Remote Sensing Symposium, 2008. IGARSS 2008; vol. 2, p. II–680. http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=4779084.
  • Schwarz G. 1978. Estimating the dimension of a model. Ann Stat. 6(2):461–464.
  • Shaxson F, Barber R. 2003. Optimizing soil moisture for plant production. Food and Agriculture Organization of the United Nations. http://www.fao.org/3/y4690e/y4690e00.htm#Contents.
  • Su C-H, Ryu D, Young RI, Western AW, Wagner W. 2013. Inter-comparison of microwave satellite soil moisture retrievals over the Murrumbidgee Basin, Southeast Australia. Remote Sens Environ. 134:1–11.
  • Subramanya K. 2008. Engineering hydrology. 3rd ed. New Delhi: Tata McGraw-Hill Publishing Company Limited.
  • Sun H, Cai C, Liu H, Yang B. 2019. Microwave and meteorological fusion: a method of spatial downscaling of remotely sensed soil moisture. IEEE J Sel Top Appl Earth Obs Remote Sens. 12(4):1107–1119.
  • Sure A, Dikshit O. 2019. Estimation of root zone soil moisture using passive microwave remote sensing: a case study for rice and wheat crops for three states in the Indo-Gangetic Basin. J Environ Manage. 234:75–89.
  • Sure A, Varade D, Dikshit O. 2017. Factors determining spatio-temporal variations of soil moisture using microwave data. In: 2017 International Conference on Emerging Trends in Computing and Communication Technologies (ICETCCT). Dehradun (India): IEEE; p. 1–5.
  • Tian J, Deng X, Su H. 2019. Intercomparison of two trapezoid-based soil moisture downscaling methods using three scaling factors. Int J Digital Earth. 12(4):485–499.
  • Ulaby FT, Long DG. 2014. Microwave radar and radiometric remote sensing. 1st ed. US: The University of Michigan Press.
  • Ulaby FT, Moore RK, Fung AK. 1986. Microwave remote sensing: active and passive, from theory to applications; vol. 3. Microwave Remote Sensing #3. United States: Addison-Wesley Publishing Company.
  • Valayamkunnath P, Sridhar V, Zhao W, Allen RG. 2019. A comprehensive analysis of interseasonal and interannual energy and water balance dynamics in semiarid shrubland and forest ecosystems. Sci Total Environ. 651:381–398.
  • Varikoden H, Revadekar JV. 2018. Relation between the rainfall and soil moisture during different phases of Indian monsoon. Pure Appl Geophys. 175(3):1187–1196.
  • Wagner W, Hahn S, Kidd R, Melzer T, Bartalis Z, Hasenauer S, Figa-Saldaña J, de Rosnay P, Jann A, Schneider S, et al. 2013. The ASCAT soil moisture product: a review of its specifications, validation results, and emerging applications. Meteorol Z. 22(1):5–33.
  • Walker J. 2000. Estimating soil moisture profile dynamics from near-surface soil moisture measurements and standard meteorological data. Australia: University of Newcastle.
  • Wan Z, Hook S. 2015. MYD11A2 MODIS/Aqua Land Surface Temperature/Emissivity 8-Day L3 Global 1km SIN Grid V006. NASA EOSDIS Land Processes DAAC.
  • Wani S, Rockstrom J, Oweis T. 2009. Rainfed Agriculture; vol. 7. Comprehensive assessment of water management in agriculture, IV. Reading (UK): CAB International.
  • White J, Berg AA, Champagne C, Warland J, Zhang Y. 2019. Canola yield sensitivity to climate indicators and passive microwave-derived soil moisture estimates in Saskatchewan, Canada. Agric For Meteorol. 268:354–362.
  • Woodhouse IH. 2006. Introduction to microwave remote sensing. 1st ed. US: CRC Press.
  • Wu Z, Zhou J, He H, Lin Q, Wu X, Xu Z. 2018. An advanced error correction methodology for merging in-situ observed and model-based soil moisture. J Hydrol. 566:150–163.
  • Xu C, Qu J, Hao X, Cosh M, Prueger J, Zhu Z, Gutenberg L. 2018. Downscaling of surface soil moisture retrieval by combining MODIS/Landsat and in situ measurements. Remote Sens. 10(2):210.
  • Xu X, Tolson BA, Li J, Staebler RM, Seglenieks F, Haghnegahdar A, Davison B. 2015. Assimilation of SMOS soil moisture over the Great Lakes Basin. Remote Sens Environ. 169:163–175.
  • Ye Q, Yang X, Dai S, Chen G, Li Y, Zhang C. 2015. Effects of climate change on suitable rice cropping areas, cropping systems and crop water requirements in Southern China. Agric Water Manage. 159:35–44.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.