Estimating soil moisture content using laboratory spectral data

Xiguang Yang , Ying Yu , Mingze Li

Journal of Forestry Research ›› 2019, Vol. 30 ›› Issue (3) : 1073 -1080.

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Journal of Forestry Research ›› 2019, Vol. 30 ›› Issue (3) : 1073 -1080. DOI: 10.1007/s11676-018-0633-6
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Estimating soil moisture content using laboratory spectral data

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Abstract

Monitoring soil moisture is important for agriculture and forestry and plays an essential role in land surface processes as well as providing feedback among the earth’s surface ecosystems. Large-scale regional soil moisture spatial data can be obtained with a reliable and operational approach using remote sensing. In this paper, we provide an operational framework for retrieving soil moisture using laboratory spectral data. The inverted Gaussian function was used to fit soil spectral data, and its feature parameters, including absorption depth (AD) and absorption area (AA), were selected as variables for a soil moisture estimate model. There was a significant correlative relationship between soil moisture and AD, as well as AA near 1400 and 1900 nm. A one-variable linear regression model was established to estimate soil moisture. The model was evaluated using the determination coefficients (R 2), root mean square error and average precision. Four models were established and evaluated in this study. The determination coefficients of the four models ranged from 0.794 to 0.845. The average accuracy for soil moisture estimates ranged from 90 to 92%. The results prove that it is feasible to estimate soil moisture using remote sensing technology.

Keywords

Absorption feature / Hyperspectral / Inverted Gaussian function / Remote sensing

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Xiguang Yang, Ying Yu, Mingze Li. Estimating soil moisture content using laboratory spectral data. Journal of Forestry Research, 2019, 30(3): 1073-1080 DOI:10.1007/s11676-018-0633-6

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References

[1]

Álvarez-Mozos J, Casalí J, González-Audícana M, Verhoest NEC. Correlation between ground measured soil moisture and RADARSAT-1 derived backscattering coefficient over an agricultural catchment of navarre (North of Spain). Biosys Eng, 2005, 92(1): 119-133.

[2]

Amani M, Parsian S, Mazloumi SM, Aieneh O. Two new soil moisture indices based on the NIR-red triangle space of Landsat-8 data. Int J Appl Earth Obs Geoinf, 2016, 50: 176-186.

[3]

Carlson TN, Gilles RR, Perry EM. A method to make use of thermal infrared temperature and NDVI measurements to infer surface soil water content and fractional vegetation cover. Remote Sens Rev, 1994, 9(1–2): 161-173.

[4]

Carlson TN, Capehart WJ, Gillies RR. A new look at the simplified method for remote sensing of daily evapotranspiration. Remote Sens Environ, 1995, 54(2): 161-167.

[5]

Carlson TN, Gilles RR, Schmugge TJ. An interpretation of methodologies for indirect measurement of soil water content. Agric For Meteorol, 1995, 77(3): 191-205.

[6]

Chauhan NS, Miller S, Ardanuy P. Spaceborne soil moisture estimation at high resolution: a microwave-optical/IR synergistic approach. Int J Remote Sens, 2003, 24(22): 4599-4622.

[7]

Clark RN, Roush TL. Reflectance spectroscopy: quantitative analysis techniques for remote sensing applications. J Geophys Res Atmos, 1984, 89(NB7): 6329-6340.

[8]

De Lannoy GJM, Reichle RH, Pauwels VRN. Global calibration of the GEOS-5 L-band microwave radiative transfer model over nonfrozen land using SMOS observations. J Hydrometeorol, 2013, 14(3): 765-785.

[9]

Di L, Rundquist DC, Han L. Modelling relationships between NDVI and precipitation during vegetative growth cycles. Int J Remote Sens, 1994, 15(10): 2121-2136.

[10]

Drake NA. Reflectance spectra of evaporite minerals (400–2500 nm): applications for remote sensing. Int J Remote Sens, 1995, 16(14): 2555-2571.

[11]

Dunne SC, Entekhabi D, Njoku EG. Impact of multiresolution active and passive microwave measurements on soil moisture estimation using the ensemble Kalman smoother. IEEE Trans Geosci Remote Sens, 2007, 45(4): 1016-1028.

[12]

Ghulam A, Qin Q, Teyip T, Li ZL. Modified perpendicular drought index (MPDI): a real-time drought monitoring method. ISPRS J Photogramm Remote Sens, 2007, 62(2): 150-164.

[13]

Gill MK, Kemblowski MW, Mckee M. Soil moisture data assimilation using support vector machines and ensemble Kalman filter 1. JAWRA J Am Water Resour Assoc, 2007, 43(4): 1004-1015.

[14]

Gillies RR, Kustas WP, Humes KS. A verification of the ‘triangle’ method for obtaining surface soil water content and energy fluxes from remote measurements of the Normalized Difference Vegetation Index (NDVI) and surface. Int J Remote Sens, 1997, 18(15): 3145-3166.

[15]

Grayson RB, Western AW. Towards areal estimation of soil water content from point measurements: time and space stability of mean response. J Hydrol, 1998, 207(1–2): 68-82.

[16]

Hassan-Esfahani L, Torres-Rua A, Jensen A, McKee M. Assessment of surface soil moisture using high-resolution multi-spectral imagery and artificial neural networks. Remote Sens, 2015, 7(3): 2627-2646.

[17]

Jackson TJ, Chen D, Cosh M, Li F, Anderson M, Walthall C, Doriaswamy P, Hunt ER. Vegetation water content mapping using Landsat data derived normalized difference water index for corn and soybeans. Remote Sens Environ, 2004, 92(4): 475-482.

[18]

Jian J, Yang W, Jiang H, Wan X, Li Y, Peng L. A model for retrieving soil moisture saturation with Landsat remotely sensed data. Int J Remote Sens, 2012, 33(14): 4553-4566.

[19]

Kim SB, Moghaddam M, Tsang L, Burgin M, Xu X, Njoku EG. Models of L-band radar backscattering coefficients over global terrain for soil moisture retrieval. IEEE Trans Geosci Remote Sens, 2014, 52(2): 1381-1396.

[20]

Li B, Ti C, Zhao Y, Yan X. Estimating soil moisture with landsat data and its application in extracting the spatial distribution of winter flooded paddies. Remote Sens, 2016, 8(1): 38-56.

[21]

Liu W, Baret F, Gu X, Zhang B, Tong Q, Zheng L. Evaluation of methods for soil surface moisture estimation from reflectance data. Int J Remote Sens, 2003, 24(10): 2069-2083.

[22]

Lobell DB, Asner GP. Moisture effects on soil reflectance. Soil Sci Soc Am J, 2002, 66(3): 722-727.

[23]

Merzouki A, Bannari A, Teillet PM, King DJ. Statistical properties of soil moisture images derived from Radarsat-1 SAR data. Int J Remote Sens, 2011, 32(19): 5443-5460.

[24]

Miller JR, Hare EW, Wu J. Quantitative characterization of the vegetation red edge reflectance 1. An inverted-Gaussian reflectance model. Int J Remote Sens, 1990, 11(10): 1755-1773.

[25]

Nolet C, Poortinga A, Roosjen P, Bartholomeus H, Ruessink G. Measuring and modeling the effect of surface moisture on the spectral reflectance of coastal beach sand. PLoS ONE, 2014, 9(11): e112151-e112151.

[26]

Notarnicola C, Angiulli M, Posa F. Use of radar and optical remotely sensed data for soil moisture retrieval over vegetated areas. IEEE Trans Geosci Remote Sens, 2006, 44(4): 925-935.

[27]

Rahman MM, Moran MS, Thoma DP, Bryant R, Holifield Collins CD, Jackson T, Orr BJ, Tischler M. Mapping surface roughness and soil moisture using multi-angle radar imagery without ancillary data. Remote Sens Environ, 2008, 112(2): 391-402.

[28]

Rodríguez-Fernández NJ, Aires F, Richaume P, Kerr YH, Prigent C, Kolassa J, Cabot F, Jiménez C, Mahmoodi A, Drusch M. Soil moisture retrieval using neural networks: application to SMOS. IEEE Trans Geosci Remote Sens, 2015, 53(11): 5991-6007.

[29]

Schnur MT, Xie H, Wang X. Estimating root zone soil moisture at distant sites using MODIS NDVI and EVI in a semi-arid region of southwestern USA. Ecol Inform, 2010, 5(5): 400-409.

[30]

Shepherd A, McGinn SM, Wyseure GCL. Simulation of the effect of water shortage on the yields of winter wheat in North-East England. Ecol Model, 2002, 147(1): 41-52.

[31]

Sohrabinia M, Rack W, Zawar-Reza P. Geostatistical analysis of surface temperature and in-situ soil moisture using LST time-series from MODIS. ISPRS Int Arch Photogram Remote Sens Spat Inf Sci, 2012, XXXIX-B7: 17-21.

[32]

Song K, Zhou X, Fan Y. Empirically adopted IEM for retrieval of soil moisture from radar backscattering coefficients. IEEE Trans Geosci Remote Sens, 2009, 47(6): 1662-1672.

[33]

Vicente-Serrano SM, Pons-Fernández X, Cuadrat-Prats JM. Mapping soil moisture in the central Ebro River Valley (Northeast Spain) with Landsat and NOAA satellite imagery: a comparison with meteorological data. Int J Remote Sens, 2004, 25(20): 4325-4350.

[34]

Wang C, Qi J, Moran S, Marsett R. Soil moisture estimation in a semiarid rangeland using ERS-2 and TM imagery. Remote Sens Environ, 2004, 90(2): 178-189.

[35]

Weng Y, Gong P, Zhu Z. Reflectance spectroscopy for the assessment of soil salt content in soils of the Yellow River Delta of China. Int J Remote Sens, 2008, 29(19): 5511-5531.

[36]

Western AW, Grayson RB, Blöschl G, Willgoose GR, Mcmahon TA. Observed spatial organization of soil moisture and its relation to terrain indices. Water Resour Res, 1999, 35(3): 797-810.

[37]

Whiting ML, Ustin SL, Orueta AP, Li L. Light absorption model for water content to improve soil mineral estimates in hyperspectral imagery. Pecora, 2005, 16: 23-27.

[38]

Yu F, Li HT, Jia Y, Han YS, Gu HY. The Multi-level and multi-scale factor analysis for soil moisture information extraction by multi-source remote sensing data. ISPRS Int Arch Photogram Remote Sens Spat Inf Sci, 2013, XL-7/W1(7): 167-171.

[39]

Zhan Z, Qin Q, Ghulan A, Wang D. NIR-red spectral space based new method for soil moisture monitoring. Sci China Ser D Earth Sci, 2007, 50(2): 283-289.

[40]

Zhang J, Zhou Z, Yao F, Yang L, Hao C. Validating the modified perpendicular drought index in the north china region using in situ soil moisture measurement. IEEE Geosci Remote Sens Lett, 2015, 12(3): 542-546.

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