A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products
<p>Weight distribution in a 5 by 5 window.</p> ">
<p>Fraction of vegetation cover (FVC) of the study area on 1 July 2009, and the locations of the meteorological stations (red points).</p> ">
<p>Scatter plot between fraction of vegetation cover (FVC) and emissivity in the study area on 1 July 2009.</p> ">
<p>(<b>a</b>) Scatter plot between land surface temperature (LST) mid-morning rising rate and fraction of vegetation cover (FVC) in the study area on 1 July 2009. (<b>b</b>) The LST mid-morning rising processes of the two points approximating to full vegetation and bare soil.</p> ">
<p>RMSEs of soil and vegetation temperature estimation results for different fraction of vegetation cover (FVC) combinations.</p> ">
<p>RMSEs of soil and vegetation temperature estimation for different fraction of vegetation cover (FVC) error cases. M: mean of FVC random error. SD: standard deviation of FVC random error.</p> ">
<p>RMSEs of soil and vegetation temperature estimation for different pixel temperature error cases. M: mean of pixel temperature random error. SD: standard deviation of pixel temperature random error.</p> ">
<p>Linear regression performance of mid-morning land surface temperatures for land surface with fraction of vegetation cover (FVC) ≤ 30% and FVC ≥ 70%: (<b>a</b>) R-squared; (<b>b</b>) RMSE.</p> ">
<p>Linear regression performance of mid-morning land surface temperatures for land surface with fraction of vegetation cover (FVC) ≤ 30% and FVC ≥ 70%: (<b>a</b>) R-squared; (<b>b</b>) RMSE.</p> ">
<p>Flowchart of the preprocess for the MSG-SEVIRI data.</p> ">
Abstract
:1. Introduction
2. Methodology
- (1)
- Vegetation temperature is always lower than soil temperature;
- (2)
- Vegetation temperature is lower than pixel temperature;
- (3)
- Soil temperature is higher than pixel temperature;
- (4)
- The rising rate of vegetation temperature is lower than those of soil temperature and pixel temperature;
- (5)
- The rising rate of soil temperature is higher than that of pixel temperature;
- (6)
- Vegetation temperature is higher than the minimum temperature of the pixel from mid-night to early morning;
- (7)
- The soil and vegetation temperature should be no more than the soil and vegetation temperature estimated from MODIS products at the TERRA overpass time in the daytime.
3. Data Preparation
3.1. Satellite Data
3.2. Simulation Data
3.3. Validation Data
4. Results and Analysis
4.1. Application to the Simulation Data
4.2. Uncertainty Analysis
4.3. Application to Satellite Data
5. Validation and Discussion
- (1)
- The spatial representiveness difference. As mentioned above, the spatial resolution is about 5 km in the study area, thus the spatial representativeness difference between the estimated pixel vegetation temperature and the air temperature measurement at a single site will cause the inconsistence. Meanwhile, as indicated by Czajkowski et al. [58], the canopy-air temperature equality hypothesis is valid due to heterogeneity and shade effects at the satellite pixel scale. However, for MSG-SEVIRI pixel, these effects are not obvious especially for the pixels in the middle and southern part of the study area with extreme low vegetation cover. Under these conditions, the vegetation should have a high value and might deviate more from air temperature.
- (2)
- The difference between air temperature and vegetation temperature. As pointed out by Jia et al. [38], it is not surprising to observe some differences between them in the real world. The partitioning of energy between the heat dissipation processes of a leaf, transpiration and convection, depends on environmental factors, including the radiation impinging upon a leaf and the moisture content, movement, and temperature of the air. Many environmental factors, such as radiation, convection, and transpiration, affect the vegetation temperature. The temperature difference between the leaf and the air is related to the sign and magnitude of heat exchange by convection. The dependence of stomatal conductance on temperature and moisture content of the air caused the deviation between air temperature and vegetation temperature [62].
- (3)
- The small vegetation fraction cover. Vegetation transpiration modifies climatic conditions on the land surface during the vegetative season. Evaporative cooling caused by transpiration reduces the maximum vegetation surface temperature by about 15 °C on a hot and dry day [63]. However, for these atmospheric stations, more than 50% of them have low FVC values (smaller than 30%). Therefore, the heating process of the soil surface dominates the air temperature increase and the vegetation surface exerts little influence on the air temperature, which is revealed by the difference between the air temperature and vegetation temperature. The scatter plot between the air temperature and vegetation temperature of all eight days under different vegetation cover conditions are shown in Figure 14. Figure 14a includes all the sites, while Figure 14b only includes the sites whose FVCs are more than 30%. The RMSE drops greatly from 2.90 K to 2.58 K when the sites with low FVC are excluded. The R-squared also has a big improvement from 0.231 to 0.417. In addition, the points are distributed along the 1:1 line in Figure 14b and the slope is more close to 1, which reflects the better relationship between air temperature and vegetation temperature. The result reveals that the vegetation cover cannot effectively prevent air temperature deviating greatly from vegetation temperature in the low FVC condition.
- (4)
- The assumption of only two components. In the algorithm, we assume that land surface is only composed of soil and vegetation. In fact, it is covered with many different types of elements, especially for the big spatial pixel of SEVIRI products. Thus, the retrieved soil and vegetation temperature should be regarded as the apparent temperature, and cannot fully represent the real soil and vegetation temperature. Meanwhile, as introduced by Li et al. [64], an uncertainty of 1% in the emissivity in the reference channel (12 μm) can result in an error of about 0.5 K in LST. Recent research also showed the diurnal variation in surface emissivity during non-raining days [52,65,66]. Therefore, the simple setting of soil and vegetation emissivity in the study also will bring inevitable errors in soil and vegetation temperature estimation.
- (5)
- FVC estimation error. The uncertainty analysis in Section 4.2 has proved the great impact of FVC estimation error on the soil and vegetation temperature retrieval. However, the implement of the algorithm is based on the fact that the FVC functions well, and that the FVC value controls the ratio of the soil or vegetation temperature in the whole pixel temperature information. Therefore, in the component temperature estimation process, the FVC value determines the exact value of the soil and vegetation component temperatures, and the errors in the estimation of the FVC influence the accuracy of the component temperature estimation.
- (6)
- The LST product error. Except for the uncertainty in LST estimation for both SEVIRI and MODIS products, the cold bias is also one important error source. The assessment study of remotely sensed land surface temperature by Trigo et al. [51] has found that the both SEVIRI and MODIS tend to underestimate local measurements, with colder values obtained with MODIS. It agrees with the results of the study [67] that compare MODIS LST with ground measurements over land. As an important input in the method, the cold bias of MODIS LST product will influence the values of the estimated soil and vegetation temperature.
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
- Wan, Z.; Zhang, Y.; Zhang, Q.; Li, Z.L. Quality assessment and validation of the MODIS global land surface temperature. Int. J. Remote Sens 2004, 25, 261–274. [Google Scholar]
- Bertoldi, G.; Notarnicola, C.; Leitinger, G.; Endrizzi, S.; Zebisch, M.; Della Chiesa, S.; Tappeiner, U. Topographical and ecohydrological controls on land surface temperature in an alpine catchment. Ecohydrology 2010, 3, 189–204. [Google Scholar]
- Claps, P.; Laguardia, G. Assessing spatial variability of soil water content through thermal inertia and NDVI. Proc. SPIE 2004, 5232, 378–387. [Google Scholar]
- Tomlinson, C.J.; Chapman, L.; Thornes, J.E.; Baker, C. Remote sensing land surface temperature for meteorology and climatology: A review. Meteorol. Appl 2011, 18, 296–306. [Google Scholar]
- Li, Z.-L.; Tang, R.; Wan, Z.; Bi, Y.; Zhou, C.; Tang, B.; Yan, G.; Zhang, X. A review of current methodologies for regional evapotranspiration estimation from remotely sensed data. Sensors 2009, 9, 3801–3853. [Google Scholar]
- Li, Z.-L.; Tang, B.-H.; Wu, H.; Ren, H.; Yan, G.; Wan, Z.; Trigo, I.F.; Sobrino, J.A. Satellite-derived land surface temperature: Current status and perspectives. Remote Sens. Environ 2013, 131, 14–37. [Google Scholar]
- Becker, F.; Li, Z.-L. Towards a local split window method over land surfaces. Int. J. Remote Sens 1990, 11, 369–393. [Google Scholar]
- Jiang, G.-M.; Li, Z.-L.; Nerry, F. Land surface emissivity retrieval from combined mid-infrared and thermal infrared data of MSG-SEVIRI. Remote Sens. Environ 2006, 105, 326–340. [Google Scholar]
- Li, Z.-L.; Becker, F. Feasibility of land surface temperature and emissivity determination from AVHRR data. Remote Sens. Environ 1993, 43, 67–85. [Google Scholar]
- Sobrino, J.A.; Romaguera, M. Land surface temperature retrieval from MSG1-SEVIRI data. Remote Sens. Environ 2004, 92, 247–254. [Google Scholar]
- Sun, D.; Pinker, R.T. Retrieval of surface temperature from the MSG-SEVIRI observations: Part I. Methodology. Int. J. Remote Sens 2007, 28, 5255–5272. [Google Scholar]
- Tang, B.; Bi, Y.; Li, Z.-L.; Xia, J. Generalized split-window algorithm for estimate of land surface temperature from Chinese geostationary FengYun meteorological satellite (FY-2C) data. Sensors 2008, 8, 933–951. [Google Scholar]
- Cho, A.-R.; Suh, M.-S. Evaluation of land surface temperature operationally retrieved from Korean geostationary satellite (COMS) Data. Remote Sens 2013, 5, 3951–3970. [Google Scholar]
- Anderson, M.C.; Allen, R.G.; Morse, A.; Kustas, W.P. Use of landsat thermal imagery in monitoring evapotranspiration and managing water resources. Remote Sens. Environ 2012, 122, 50–65. [Google Scholar]
- Stisen, S.; Sandholt, I.; Nørgaard, A.; Fensholt, R.; Eklundh, L. Estimation of diurnal air temperature using MSG SEVIRI data in West Africa. Remote Sens. Environ 2007, 110, 262–274. [Google Scholar]
- Tang, R.; Li, Z.-L.; Tang, B. An application of the Ts–VI triangle method with enhanced edges determination for evapotranspiration estimation from MODIS data in arid and semi-arid regions: Implementation and validation. Remote Sens. Environ 2010, 114, 540–551. [Google Scholar]
- Zhao, W.; Li, Z.-L. Sensitivity study of soil moisture on the temporal evolution of surface temperature over bare surfaces. Int. J. Remote Sens 2013, 34, 3314–3331. [Google Scholar]
- Meng, F.; Liu, M. Remote-sensing image-based analysis of the patterns of urban heat islands in rapidly urbanizing Jinan, China. Int. J. Remote Sens 2013, 34, 8838–8853. [Google Scholar]
- Ogashawara, I.; Bastos, V. A Quantitative approach for analyzing the relationship between urban heat islands and land cover. Remote Sens 2012, 4, 3596–3618. [Google Scholar]
- Zakšek, K.; Oštir, K. Downscaling land surface temperature for urban heat island diurnal cycle analysis. Remote Sens. Environ 2012, 117, 114–124. [Google Scholar]
- Gao, F.; Kustas, W.; Anderson, M. A data mining approach for sharpening thermal satellite imagery over land. Remote Sens 2012, 4, 3287–3319. [Google Scholar]
- Bechtel, B.; Zakšek, K.; Hoshyaripour, G. Downscaling land surface temperature in an urban area: A case study for Hamburg, Germany. Remote Sens 2012, 4, 3184–3200. [Google Scholar]
- Song, X.; Zhao, Y. Study on component temperatures inversion using satellite remotely sensed data. Int. J. Remote Sens 2007, 28, 2567–2579. [Google Scholar]
- Shi, Y. Thermal infrared inverse model for component temperatures of mixed pixels. Int. J. Remote Sens 2011, 32, 2297–2309. [Google Scholar]
- Geiger, R.; Aron, R.H.; Todhunter, P. Climate near the Ground, 6th ed; Rowman & Littlefield: Lanham, MD, USA, 2003. [Google Scholar]
- Li, Z.-L.; Wu, H.; Wang, N.; Qiu, S.; Sobrino, J.A.; Wan, Z.; Tang, B.-H.; Yan, G. Land surface emissivity retrieval from satellite data. Int. J. Remote Sens 2013, 34, 3084–3127. [Google Scholar]
- Li, Z.-L.; Stoll, M.P.; Zhang, R.H.; Jia, L.; Su, Z. On the separate retrieval of soil and vegetation temperatures from ATSR data. Sci. China Ser. D 2001, 44, 97–111. [Google Scholar]
- Liu, D.; Pu, R. Downscaling thermal infrared radiance for subpixel land surface temperature retrieval. Sensors 2008, 8, 2695–2706. [Google Scholar]
- Yang, G.; Pu, R.; Zhao, C.; Huang, W.; Wang, J. Estimation of subpixel land surface temperature using an endmember index based technique: A case examination on ASTER and MODIS temperature products over a heterogeneous area. Remote Sens. Environ 2011, 115, 1202–1219. [Google Scholar]
- Dozier, J. A method for satellite identification of surface temperature fields of subpixel resolution. Remote Sens. Environ 1981, 11, 221–229. [Google Scholar]
- Rasmussen, M.O.; Goettsche, F.-M.; Olesen, F.-S.; Sandholt, I. Directional effects on land surface temperature estimation from meteosat second generation for Savanna landscapes. IEEE Trans. Geosci. Remote Sens 2011, 49, 4458–4468. [Google Scholar]
- Cuenca, J.; Sobrino, J.A. Experimental measurements for studying angular and Spectral variation of thermal infrared emissivity. Appl. Opt 2004, 43, 4598–4602. [Google Scholar]
- Kimes, D.S. Remote sensing of row crop structure and component temperatures using directional radiometric temperatures and inversion techniques. Remote Sens. Environ 1983, 13, 33–55. [Google Scholar]
- Rees, W.G.; James, S.P. Angular variation of the infrared emissivity of ice and water surfaces. Int. J. Remote Sens 1992, 13, 2873–2886. [Google Scholar]
- Sobrino, J.; Caselles, V. Thermal infrared radiance model for interpreting the directional radiometric temperature of a vegetative surface. Remote Sens. Environ 1990, 33, 193–199. [Google Scholar]
- Li, Z.-L.; Zhang, R.; Sun, X.; Su, H.; Tang, X.; Zhu, Z.; Sobrino, J. Experimental system for the study of the directional thermal emission of natural surfaces. Int. J. Remote Sens 2004, 25, 195–204. [Google Scholar]
- Wang, J.; Li, X.; Sun, X.; Liu, Q. Component temperatures inversion for remote sensing pixel based on directional thermal radiation model. Sci. China Ser. E 2000, 43, 41–47. [Google Scholar]
- Jia, L.; Li, Z.-L.; Menenti, M.; Su, Z.; Verhoef, W.; Wan, Z. A practical algorithm to infer soil and foliage component temperatures from bi-angular ATSR-2 data. Int. J. Remote Sens 2003, 24, 4739–4760. [Google Scholar]
- Menenti, M.; Jia, L.; Li, Z.-L.; Djepa, V.; Wang, J.; Stoll, M.P.; Su, Z.; Rast, M. Estimation of soil and vegetation temperatures with multiangular thermal infrared observations: IMGRASS, HEIFE, and SGP 1997 experiments. J. Geophys. Res.: Atmos 2001, 106, 11997–12010. [Google Scholar]
- Norman, J.M.; Kustas, W.P.; Humes, K.S. Source approach for estimating soil and vegetation energy fluxes in observations of directional radiometric surface temperature. Agric. For. Meteorol 1995, 77, 263–293. [Google Scholar]
- Becker, F.; Li, Z.-L. Temperature-independent spectral indices in thermal infrared bands. Remote Sens. Environ 1990, 32, 17–33. [Google Scholar]
- Wetzel, P.J.; Atlas, D.; Woodward, R.H. Determining soil moisture from geosynchronous satellite infrared data: A feasibility study. J. Appl. Meteorol 1984, 23, 375–391. [Google Scholar]
- Zhao, W.; Li, A. A Downscaling method for improving the spatial resolution of AMSR-E derived soil moisture product based on MSG-SEVIRI data. Remote Sens 2013, 5, 6790–6811. [Google Scholar]
- Goward, S.N.; Xue, Y.; Czajkowski, K.P. Evaluating land surface moisture conditions from the remotely sensed temperature/vegetation index measurements: An exploration with the simplified simple biosphere model. Remote Sens. Environ 2002, 79, 225–242. [Google Scholar]
- Prihodko, L.; Goward, S.N. Estimation of air temperature from remotely sensed surface observations. Remote Sens. Environ 1997, 60, 335–346. [Google Scholar]
- Peres, L.F.; DaCamara, C.C. Land surface temperature and emissivity estimation based on the two-temperature method: Sensitivity analysis using simulated MSG/SEVIRI data. Remote Sens. Environ 2004, 91, 377–389. [Google Scholar]
- Stisen, S.; Sandholt, I.; Nørgaard, A.; Fensholt, R.; Jensen, K.H. Combining the triangle method with thermal inertia to estimate regional evapotranspiration—Applied to MSG-SEVIRI data in the Senegal River basin. Remote Sens. Environ 2008, 112, 1242–1255. [Google Scholar]
- Bennouna, Y.S.; Curier, L.; de Leeuw, G.; Piazzola, J.; Roebeling, R.; de Valk, P. An automated day-time cloud detection technique applied to MSG-SEVIRI data over Western Europe. Int. J. Remote Sens 2010, 31, 6073–6093. [Google Scholar]
- Sobrino, J.A.; Jiménez-Muñoz, J.C.; El-Kharraz, J.; Gómez, M.; Romaguera, M.; Sòria, G. Single-channel and two-channel methods for land surface temperature retrieval from DAIS data and its application to the Barrax site. Int. J. Remote Sens 2004, 25, 215–230. [Google Scholar]
- Jiang, G.M.; Li, Z.L. Split-window algorithm for land surface temperature estimation from MSG1-SEVIRI data. Int. J. Remote Sens 2008, 29, 6067–6074. [Google Scholar]
- Trigo, I.F.; Monteiro, I.T.; Olesen, F.; Kabsch, E. An assessment of remotely sensed land surface temperature. J. Geophys. Res.: Atmos 2008, 113. [Google Scholar] [CrossRef]
- Masiello, G.; Serio, C.; de Feis, I.; Amoroso, M.; Venafra, S.; Trigo, I.; Watts, P. Kalman filter physical retrieval of surface emissivity and temperature from geostationary infrared radiances. Atmos. Meas. Tech 2013, 6, 3613–3634. [Google Scholar]
- Land surface analysis satellite applications facility. Available online: https://landsaf.meteo.pt/ (accessed on 1 December 2013).
- Wan, Z.M.; Dozier, J. A generalized split-window algorithm for retrieving land-surface temperature from space. IEEE Trans. Geosci. Remote Sens 1996, 34, 892–905. [Google Scholar]
- Garcia-Haro, F.J.; Sommer, S.; Kemper, T. A new tool for variable multiple endmember spectral mixture analysis (VMESMA). Int. J. Remote Sens 2005, 26, 2135–2162. [Google Scholar]
- Reverb. Available online: http://reverb.echo.nasa.gov/reverb (accessed on 1 December 2013).
- Ehrler, W.L. Cotton leaf temperatures as related to soil-water depletion and meteorological factors. Agron. J 1973, 65, 404–409. [Google Scholar]
- Czajkowski, K.P.; Mulhern, T.; Goward, S.N.; Cihlar, J.; Dubayah, R.O.; Prince, S.D. Biospheric environmental monitoring at BOREAS with AVHRR observations. J. Geophys. Res.: Atmos 1997, 102, 29651–29662. [Google Scholar]
- NCDC Climate Data Online. Available online: http://www.ncdc.noaa.gov/cdo-web/ (accessed on 1 December 2013).
- Rousseeuw, P.J.; Leroy, A.M. Robust Regression and Outlier Detection; Wiley: Hoboken, NJ, USA, 2005; Volume 589. [Google Scholar]
- Gao, C.; Jiang, X.; Wu, H.; Tang, B.; Li, Z.; Li, Z.-L. Comparison of land surface temperatures from MSG-2/SEVIRI and Terra/MODIS. J. Appl. Remote Sens 2012, 6. [Google Scholar] [CrossRef]
- Drake, B.G.; Raschke, K.; Salisbury, F.B. Temperature and transpiration resistances of Xanthium leaves as affected by air temperature, humidity, and wind speed. Plant Physiol 1970, 46, 324–330. [Google Scholar]
- Novak, V.; Havrila, J. Method to estimate the critical soil water content of limited availability for plants. Biologia 2006, 61, S289–S293. [Google Scholar]
- Li, Z.-L.; Becker, F.; Stoll, M.; Wan, Z. Evaluation of six methods for extracting relative emissivity spectra from thermal infrared images. Remote Sens. Environ 1999, 69, 197–214. [Google Scholar]
- Li, Z.; Li, J.; Li, Y.; Zhang, Y.; Schmit, T.J.; Zhou, L.; Goldberg, M.D.; Menzel, W.P. Determining diurnal variations of land surface emissivity from geostationary satellites. J. Geophys. Res.: Atmos 2012, 117. [Google Scholar] [CrossRef]
- Masiello, G.; Serio, C.; Venafra, S.; DeFeis, I.; Borbas, E.E. Diurnal variation in Sahara desert sand emissivity during the dry season from IASI observations. J. Geophys. Res.: Atmos 2014. [Google Scholar] [CrossRef]
- Bosilovich, M.G. A comparison of MODIS land surface temperature with in situ observations. Geophys. Res. Lett 2006, 33. [Google Scholar] [CrossRef]
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Zhao, W.; Li, A.; Bian, J.; Jin, H.; Zhang, Z. A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products. Remote Sens. 2014, 6, 2213-2238. https://doi.org/10.3390/rs6032213
Zhao W, Li A, Bian J, Jin H, Zhang Z. A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products. Remote Sensing. 2014; 6(3):2213-2238. https://doi.org/10.3390/rs6032213
Chicago/Turabian StyleZhao, Wei, Ainong Li, Jinhu Bian, Huaan Jin, and Zhengjian Zhang. 2014. "A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products" Remote Sensing 6, no. 3: 2213-2238. https://doi.org/10.3390/rs6032213
APA StyleZhao, W., Li, A., Bian, J., Jin, H., & Zhang, Z. (2014). A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products. Remote Sensing, 6(3), 2213-2238. https://doi.org/10.3390/rs6032213