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Journal of Integrative Agriculture  2013, Vol. 12 Issue (4): 723-731    DOI: 10.1016/S2095-3119(13)60290-7
Soil & Fertilization · Irrigation · Agro-Ecology & Environment Advanced Online Publication | Current Issue | Archive | Adv Search |
Integrating Remote Sensing and Proximal Sensors for the Detection of Soil Moisture and Salinity Variability in Coastal Areas
 GUO Yan, SHI Zhou, ZHOU Lian-qing, JIN Xi, TIAN Yan-feng , TENG Hong-fen
Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University, Hangzhou 310058, P.R.China
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摘要  Soil moisture and salinity are two crucial coastal saline soil variables, which influence the soil quality and agricultural productivity in the reclaimed coastal region. Accurately characterizing the spatial variability of these soil parameters is critical for the rational development and utilization of tideland resources. In the present study, the spatial variability of soil moisture and salinity in the reclaimed area of Hangzhou gulf, Shangyu City, Zhejiang Province, China, was detected using the data acquired from radar image and the proximal sensor EM38. Soil moisture closely correlates radar scattering coefficient, and a simplified inversion model was built based on a backscattering coefficient extracted from multi-polarization data of ALOS/PALSAR and in situ soil moisture measured by a time domain reflectometer to detect soil moisture variations. The result indicated a higher accuracy of soil moisture inversion by the HH polarization mode than those by the HV mode. Soil salinity is reflected by soil apparent electrical conductivity (ECa). Further, ECa can be rapidly detected by EM38 equipment in situ linked with GPS for characterizing the spatial variability of soil salinity. Based on the strong spatial variability and interactions of soil moisture and salinity, a cokriging interpolation method with auxiliary variable of backscattering coefficient was adopted to map the spatial variability of ECa. When compared with a map of ECa interpolated by the ordinary kriging method, detail was revealed and the accuracy was increased by 15.3%. The results conclude that the integrating active remote sensing and proximal sensors EM38 are effective and acceptable approaches for rapidly and accurately detecting soil moisture and salinity variability in coastal areas, especially in the subtropical coastal zones of China with frequent heavy cloud cover.

Abstract  Soil moisture and salinity are two crucial coastal saline soil variables, which influence the soil quality and agricultural productivity in the reclaimed coastal region. Accurately characterizing the spatial variability of these soil parameters is critical for the rational development and utilization of tideland resources. In the present study, the spatial variability of soil moisture and salinity in the reclaimed area of Hangzhou gulf, Shangyu City, Zhejiang Province, China, was detected using the data acquired from radar image and the proximal sensor EM38. Soil moisture closely correlates radar scattering coefficient, and a simplified inversion model was built based on a backscattering coefficient extracted from multi-polarization data of ALOS/PALSAR and in situ soil moisture measured by a time domain reflectometer to detect soil moisture variations. The result indicated a higher accuracy of soil moisture inversion by the HH polarization mode than those by the HV mode. Soil salinity is reflected by soil apparent electrical conductivity (ECa). Further, ECa can be rapidly detected by EM38 equipment in situ linked with GPS for characterizing the spatial variability of soil salinity. Based on the strong spatial variability and interactions of soil moisture and salinity, a cokriging interpolation method with auxiliary variable of backscattering coefficient was adopted to map the spatial variability of ECa. When compared with a map of ECa interpolated by the ordinary kriging method, detail was revealed and the accuracy was increased by 15.3%. The results conclude that the integrating active remote sensing and proximal sensors EM38 are effective and acceptable approaches for rapidly and accurately detecting soil moisture and salinity variability in coastal areas, especially in the subtropical coastal zones of China with frequent heavy cloud cover.
Keywords:  remote sensing       proximal sensor       soil moisture       salinity       backscattering coefficient       soil apparent electrical conductivity (ECa)  
Received: 16 June 2012   Accepted:
Fund: 

This study was funded by the Zhejiang Provincial Natural Science Foundation of China (R5100140), the National Natural Science Foundation of China (40871100) and the Science and Technology Project of Zhejiang Province, China (2011C13010).

Corresponding Authors:  Correspondence SHI Zhou, Tel/Fax: +86-571-88982831, E-mail: shizhou@zju.edu.cn     E-mail:  shizhou@zju.edu.cn

Cite this article: 

GUO Yan, SHI Zhou, ZHOU Lian-qing, JIN Xi, TIAN Yan-feng , TENG Hong-fen. 2013. Integrating Remote Sensing and Proximal Sensors for the Detection of Soil Moisture and Salinity Variability in Coastal Areas. Journal of Integrative Agriculture, 12(4): 723-731.

[1]Bell D, Menges C, Ahmad W, van Zyl J J. 2001. Theapplication of dielectric retrieval algorithms for mappingsoil salinity in a tropical coastal environment usingairborne polarimetric SAR. Remote SensingEnvironment, 75, 375-384

[2]Corwin D L, Lesch S M. 2005. Apparent soil electricalconductivity measurements in agriculture. Computersand Electronics in Agriculture, 46, 11-43

[3]Cressie N. 1993. Statistics for Spatial Data. John Wiley &Sons, New York.Danielsson A, Carman R, Rahm L, Aigars J. 1998. Spatialestimation of nutrient distributions in the Gulf of Rigasediments using cokriging. Estuarine, Coastal andShelf Science, 46, 713-722

[4]Dobson M C, Ulaby F T, Le Toan T, Beaudoin A, KasischkeE S, Christensen N C. 1992. Dependence of radarbackscatter on conifer forest biomass. IEEETransactions on Geoscience and Remote Sensing, 30,412-415

[5]Dubois P C, van Zyl J, Engman T. 1995. Measuring soilmoisture with imaging radars. IEEE Transactions onGeoscience and Remote Sensing, 33, 915-926

[6]Entekhabi D, Njoku E G, O’Neill P E, Kellogg K H, Crow WT, Edelstein W N, Entin J K, Goodman S D, Jackson T J,Johnson J, et al. 2010. The soil moisture active passive(SMAP) mission. Proceedings of the IEEE, 98, 704-716

[7]Isoguchi O, Shimada M. 2009. An L-band oceangeophysical model function derived from PALSAR.IEEE Transactions on Geoscience and Remote Sensing,47, 1925-1936

[8]Kobayashi S, Widyorini R, Kawai S, Omura Y, Sanga-NgoieK, Supriadi B. 2012. Backscattering characteristics ofL-band polarimetric and optical satellite imagery overplanted acacia forests in Sumatra, Indonesia. Journalof Applied Remote Sensing, 6, 063525.

[9]McBratney A B, Webster R. 1983. Optimal interpolationand isarithmic mapping of soil properties. V-Coregionalizationand multiple sampling strategy. Journalof Soil Science, 34, 137-162

[10]McColl K A, Ryu D, Matic V, Walker J P, Costelloe J, RüdigerC. 2012. Soil salinity impacts on L-band remote sensingof soil moisture. IEEE Geoscience and Remote SensingLetters, 9, 262-266

[11]McNeill J D. 1992. Rapid, accurate mapping of soil salinityby electromagnetic ground conductivity meters. In:Topp G C, Reynolds W D, Green R E, eds., Advances inMeasurement of Soil Physical Properties. BringingTheory into Practice. SSSA Special Publication No. 30.Madison, Wisconsin, Soil Science Society of America,USA. pp. 209-229

[12]Mortl A, Muñoz-Carpena R, Kaplan D, Li Y. 2011.Calibration of a combined dielectric probe for soilmoisture and porewater salinity measurement in organicand mineral coastal wetland soils. Geoderma, 161, 50-62

[13]Njoku E G, Entekhabi D. 1996. Passive microwave remotesensing of soil moisture. Journal of Hydrology, 184,101-129

[14]Oh Y, Sarabandi K, Ulaby F T. 1992. An empirical modeland an inversion technique for radar scattering frombare soil surfaces. IEEE Transactions on Geoscienceand Remote Sensing, 30, 370-381

[15]Paloscia S, Pettinato S, Santi E. 2012. Combining L and Xband SAR data for estimating biomass and soil moistureof agricultural fields. European Journal of RemoteSensing, 45, 99-109

[16]Park S. 2011. Integration of satellite-measured LST datainto cokriging for temperature estimation on tropicaland temperate islands. International Journal ofClimatology, 31, 1653-1664

[17]Pellarin T, Calvet J C, Wigneron J P. 2003. Surface soilmoisture retrieval from L-band radiometry: a globalregression study. IEEE Transactions on Geoscienceand Remote Sensing, 41, 2037-2051

[18]Rodríguez-Pérez J R, Plant R E, Lambert J-J, Smart D R.2011. Using apparent soil electrical conductivit radiometric and geometric calibration. IEEETransactions on Geoscience and Remote Sensing, 47,3915-3932

[19]Shi Z, Li Y, Wang R C, Makeschine F. 2005. Assessment oftemporal and spatial variability of soil salinity in acoastal saline field. Environmental Geology, 48, 171-178

[20]Shi Z, Wang R C, Huang M X. 2002. Detection of coastalsaline land uses with multi-temporal landsat images inShangyu City, China. Environmental Management, 30,142-150

[21]Song X Y, Wang J H, Liu L Y, Huang W J, Shen T, Yu Z Z.2007. Research of management zones generating basedon Quickbird imagery. Scientia Agircultura Sinica, 40,1996-2006 (in Chinese)

[22]Viscarra Rossel R A, McBratney A B, Minasny B. 2010.Proximal Soil Sensing. Springer Science+BusinessMedia B. V.Wang L L, Qu J J. 2009. Satellite remote sensing applicationsfor surface soil moisture monitoring: a review. Frontiersof Earth Science in China, 3, 237-247

[23]Webster R, Oliver M A. 2007. Geostatistics forEnvironmental Scientists. John Wiley & Sons, England.Wu C F, Wu J P, Luo Y M, Zhang L M, DeGloria S D. 2009.Spatial estimation of soil total nitrogen using cokrigingwith predicted soil organic matter content. Soil ScienceSociety of America Journal, 73, 1676-1681

[24]Yao R J, Yang J S, Jiang L. 2007. Study on spatial variabilityand profile distribution characteristics of soil salinityby kriging with an electromagnetic induction. Journalof Zhejiang University (Agriculture & Life Science),33, 207-216 (in Chinese)

[25]Yates S R, Warrick A W. 1987. Estimation soil water contentusing cokriging. Soil Science Society of AmericaJournal, 51, 23-30

[26]Ye J Y, Li H Y, Cheng J L, Shi Z. 2008. Application andpredominance of EM38 equipment in measuringelectrical conductivity of coastal saline soil. ActaAgriculturae Zhejiangensis, 20, 467-470 (in Chinese)

[27]Zhang X Y, Jiang H, Zhou G M, Zhong Y, Xiao Z Y, ZhangZ. 2012. Geostatistical interpolation of missing data anddownscaling of spatial resolution for remotely sensedatmospheric methane column concentrations.International Journal of Remote Sensing, 33, 120-134

[28]y (ECa)to characterize vineyard soils of high clay content.Precision Agriculture, 12, 775-794

[29]Sahebi M R, Bonn F, Gwyn H J. 2003. Estimation of themoisture content of bare soil from RADARSAT-1 SARusing simple empirical models International Journalof Remote Sensing, 24, 2575-2582

[30]Shimada M, Isoguchi O, Tadono T, Isono K. 2009. PALSAR
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