8,533 research outputs found

    An algorithm to retrieve Land Surface Temperature using Landsat-8 Dataset

    Get PDF
    Soil moisture, surface temperature, and vegetation are variables that play an important role in our environment which in turn increases the demand for accurate estimation of certain geophysical parameters such as weather, flooding, and land classification. However, for accurate Land Surface Temperature (LST) estimation, remotely sensed data of key environmental forms were considered and applied in this research. The goal of this study was to apply a suitable algorithm for LST estimation from the Landsat-8 dataset that gives a great accuracy when compared with in-situ observations.Spatial and temporal Landsat-8 data were acquired which provided the analytical structure for linking specific data successfully due to fine resolutions. The data were then applied to determine brightness temperatures, vegetation cover, and surface emissivity which demonstrated the effectiveness of the Split-Window Algorithm as an optimum method for LST retrieval from satellite.The results show temperature variation over a long period of time can be used in observing varying temperature values based on terrain i.e. High temperatures in fully built up areas and low temperatures in the well-vegetated regions. Finally, accurate LST estimation is important for land classification, energy budget estimations as well as agricultural production.Keywords: Emissivity, Landsat, Land Surface Temperature, Split-Window, Vegetatio

    Retrieval of Land Surface Temperature of Lahore Through Landsat-8 TIRS Data

    Get PDF
    Land surface temperature (LST) is an important parameter in global climate change and urban thermalenvironmental studies. The significance of land surface temperature is being acknowledged gradually and interest isincreasing in developing methodologies for the retrieval of LST from Satellite Remote Sensing (SRS) data. ThermalInfrared Sensor (TIRS) of Landsat-8 is the newest TIR sensor for the Landsat Data Continuity Mission (LDCM),offering two adjacent thermal infrared bands (10, 11), having significant beneficiary for the land surface temperatureinversion. The spectral radiance can be estimated through TIR bands 10 and 11 of Landsat-8 OLI_TIRS satellite image.In the present study, the radiative transfer equation-based method has been employed in estimating LST of Lahore andthe analysis demonstrated that estimated LST has the highest accuracy from the radiative transfer method through band10. Land Surface Emissivity (LSE) was derived with the aid of the NDVI’s threshold technique. The present studyresults show that as the built-up area increases and vegetation cover decreases in urban surface, they are linked toincrease in urban land surface temperature and conversely larger vegetation cover associated with lower urbantemperature. The output exposed that LST was high in built-up and barren land, whereas it was low in the area wherethere were more vegetation cover and water

    Determination of land surface temperature using Landsat 8 images: Comparative study of algorithms on the city of Granada

    Get PDF
    [EN] The use of satellite images has become, in recent decades, one of the most common ways to determine the Land Surface Temperature (LST). One of them is through the use of Landsat 8 images that requires the use of single-channel (MC) and two-channel (BC) algorithms. In this study, the LST of a medium-sized city, Granada (Spain) has been determined over a year by using five Landsat 8 algorithms that are subsequently compared with ambient temperatures. Few studies compare the data source with the seasonal variations of the same metropolis, which together with its geographical location, high pollution and the significant thermal variations it experiences make it a suitable place for the development of this research. As a result of the statistical analysis process, the regression coefficients R2, mean square error (RMSE), mean error bias (MBE) and standard deviation (SD) were obtained. The average results obtained reveal that the LST derived from the BC algorithms (1.0 °C) are the closest to the ambient temperatures in contrast to the MC (-5.6 °C), although important variations have been verified between the different zones of the city according to its coverage and seasonal periods. Therefore, it is concluded that the BC algorithms are the most suitable for recovering the LST of the city under study.[ES] El empleo de imĂĄgenes satelitales se ha convertido, en las Ășltimas dĂ©cadas, en una de las formas mĂĄs habituales para determinar la Temperatura de la Superficie Terrestre (TST). Una de ellas es mediante el empleo de imĂĄgenes Landsat 8 que requiere del uso de algoritmos del tipo monocanal (MC) y bicanal (BC). En este estudio se ha determinado la TST de una ciudad de tamaño medio, Granada (España) a lo largo de un año mediante el empleo de cinco algoritmos Landsat 8 que posteriormente se comparan con las temperaturas ambientales. Pocos estudios comparan la fuente de datos con las variaciones estacio-temporales de una misma metrĂłpolis lo que unido a su situaciĂłn geogrĂĄfica, alta contaminaciĂłn y las importantes variaciones tĂ©rmicas que experimenta la convierten en un lugar adecuado para el desarrollo de esta investigaciĂłn. Como resultado del proceso de anĂĄlisis estadĂ­stico se obtuvieron los coeficientes de regresiĂłn R2, el error medio cuadrĂĄtico (RMSE), sesgo medio del error (MBE) y la desviaciĂłn estĂĄndar (DE). Los resultados medios obtenidos revelan que las TST derivada de los algoritmos BC (1,0 °C) son las mĂĄs prĂłximas a las temperaturas ambientales en contraposiciĂłn con los MC (-5,6 °C) aunque se han verificado importantes variaciones entre las distintas zonas de la urbe segĂșn su cobertura y los periodos estacionales. Por todo ello, se concluye que los algoritmos BC son los mĂĄs adecuados para recuperar la TST de la urbe objeto de estudio.Hidalgo-GarcĂ­a, D. (2021). DeterminaciĂłn de la temperatura de la superficie terrestre mediante imĂĄgenes Landsat 8: Estudio comparativo de algoritmos sobre la ciudad de Granada. Revista de TeledetecciĂłn. 0(58):1-21. https://doi.org/10.4995/raet.2021.14538OJS121058Avdan, U., Jovanovska, G. 2016. Algorithm for automated mapping of land surface temperature using LANDSAT 8 satellite data. Journal of Sensors, 2016, 1480307. https://doi.org/10.1155/2016/1480307Barbieri, T., Despini, F., Teggi, S. 2018. A multi-temporal analyses of Land Surface Temperature using Landsat-8 data and open source software: The case study of Modena, Italy. Sustainability (Switzerland), 10(5), 1678. https://doi.org/10.3390/ su10051678Becker, F., Li, Z. 1995. Surface temperature and emissivity at various scales: definition, measurement and related problems. Remote sensing reviews, 12(3-4), 225-253. https://doi.org/10.1080/02757259509532286Carlson, T.N., Ripley, D.A. 1997. On the relation between NDVI, fractional vegetation cover, and leaf area index. Remote Sensing of Environment, 62(3), 241-252. https://doi.org/10.1016/S0034-4257(97)00104-1Chavez, P.S. 1988. An improved dark-object subtraction technique for atmospheric scattering correction of multispectral data. Remote Sensing of Environment, 24(3), 459-479. https://doi.org/10.1016/0034-4257(88)90019-3Coll, C., Caselles, V., Galve, J.M., Valor, E., NiclĂČs, R., SĂĄnchez, J.M., Rivas, R. 2005. Ground measurements for the validation of land surface temperatures derived from AATSR and MODIS data. Remote Sensing of Environment, 97(3), 288-300. https://doi.org/10.1016/j.rse.2005.05.007Coll, C., Valor, E., Galve, J.M., Mira, M., Bisquert, M., GarcĂ­a-Santos, V., Caselles, E., Caselles, V. 2012. Long-term accuracy assessment of land surface temperatures derived from the Advanced Along-Track Scanning Radiometer. Remote Sensing of Environment, 116, 211-225. https://doi.org/10.1016/j.rse.2010.01.027Congedo, L. 2016. Semi-Automatic Classification Plugin Documentation Release 4.8.0.1. Release, 4(0.1), 29. https://doi.org/10.13140/RG.2.2.29474.02242/1De Castro, M., Gallardo, C., Jylha, K., Tuomenvirta, H. 2007. The use of a climate-type classification for assessing climate change effects in Europe from an ensemble of nine regional climate models. Climatic Change, 81, 329-341. https://doi.org/10.1007/s10584-006-9224-1Du, C., Ren, H., Qin, Q., Meng, J., Zhao, S. 2015. A practical split-window algorithm for estimating land surface temperature from Landsat 8 data. Remote Sensing, 7(1), 647-665. https://doi.org/10.3390/rs70100647Du, J., Xiang, X., Zhao, B., y Zhou, H. 2020. Impact of urban expansion on land surface temperature in Fuzhou, China using Landsat imagery. Sustainable Cities and Society, 61(June), 102346. https://doi.org/10.1016/j.scs.2020.102346Gallo, K., Hale, R., Tarpley, D., Yu, Y. 2011. Evaluation of the relationship between air and land surface temperature under clear- and cloudy-sky conditions. Journal of Applied Meteorology and Climatology, 50(3), 767-775. https://doi.org/10.1175/2010JAMC2460.1GarcĂ­a-Santos, V., Cuxart, J., MartĂ­nez-Villagrasa, D., JimĂ©nez, M.A., SimĂł, G. 2018. Comparison of three methods for estimating land surface temperature from Landsat 8-TIRS Sensor data. Remote Sensing, 10(9), 1-13. https://doi.org/10.3390/rs10091450Gerace, A., Montanaro, M. 2017. Derivation and validation of the stray light correction algorithm for the thermal infrared sensor onboard Landsat 8. Remote Sensing of Environment, 191, 246-257. https://doi.org/10.1016/j.rse.2017.01.029JimĂ©nez-Muñoz, J.C., Sobrino, J.A., Skoković, D., Mattar, C., CristĂłbal, J. 2014. Land surface temperature retrieval methods from Landsat-8 thermal infrared sensor data. IEEE Geoscience and Remote Sensing Letters, 11(10), 1840-1843. https://doi.org/10.1109/LGRS.2014.2312032Jin, M., Li, J., Wang, C., Shang, R. 2015. A practical split-window algorithm for retrieving land surface temperature from Landsat-8 data and a case study of an urban area in China. Remote Sensing, 7(4), 4371-4390. https://doi.org/10.3390/rs70404371Kafer, P.S., Rolim, S.B.A., Iglesias, M.L., Da Rocha, N.S., Diaz, L.R. 2019. Land surface temperature retrieval by Landsat 8 thermal band: Applications of laboratory and field measurements. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 12(7), 2332-2341. https://doi.org/10.1109/JSTARS.2019.2913822Keeratikasikorn, C., Bonafoni, S. 2018. Urban heat island analysis over the land use zoning plan of Bangkok by means of Landsat 8 imagery. Remote Sensing, 10(3), 440. https://doi.org/10.3390/ rs10030440Keramitsoglou, I., Kiranoudis, C.T., Ceriola, G., Weng, Q., Rajasekar, U. 2011. Identification and analysis of urban surface temperature patterns in Greater Athens, Greece, using MODIS imagery. Remote Sensing of Environment, 115(12), 3080-3090. https://doi.org/10.1016/j.rse.2011.06.014Khalaf, A. 2018. Utilization of thermal bands of Landsat 8 data and geographic information system for analysis of urban heat island in Baghdad governorate 2016. MATEC Web of Conferences, 162, 1-5. https://doi.org/10.1051/matecconf/201816203026Lemus-Canovas, M., Martin-Vide, J., Moreno-Garcia, M.C., Lopez-Bustins, J.A. 2020. Estimating Barcelona's metropolitan daytime hot and cold poles using Landsat-8 Land Surface Temperature. Science of the Total Environment, 699, 134307. https://doi.org/10.1016/j.scitotenv.2019.134307Li, T., Meng, Q. 2018. A mixture emissivity analysis method for urban land surface temperature retrieval from Landsat 8 data. Landscape and Urban Planning, 179(July), 63-71. https://doi.org/10.1016/j.landurbplan.2018.07.010Li, Z.L., Tang, B.H., Wu, H., Ren, H., Yan, G., Wan, Z., Trigo, I.F., Sobrino, J.A. 2013. Satellite-derived land surface temperature: Current status and perspectives. Remote Sensing of Environment, 131, 14-37. https://doi.org/10.1016/j.rse.2012.12.008Lin, W., Yu, T., Chang, X., Wu, W., Zhang, Y. 2015. Calculating cooling extents of green parks using remote sensing: Method and test. Landscape and Urban Planning, 134, 66-75. https://doi. org/10.1016/j.landurbplan.2014.10.012Liu, L., Zhang, Y. 2011. Urban heat island analysis using the landsat TM data and ASTER Data: A case study in Hong Kong. Remote Sensing, 3(7), 1535-1552. https://doi.org/10.3390/rs3071535Macarof, P., Statescu, F. 2017. Comparasion of NDBI and NDVI as Indicators of Surface Urban Heat Island Effect in Landsat 8 Imagery: A Case Study of Iasi. Present Environment and Sustainable Development, 11(2), 141-150. https://doi.org/10.1515/pesd-2017-0032Mao, K., Qin, Z., Shi, J., Gong, P. 2005. A practical split-window algorithm for retrieving land-surface temperature from MODIS data. International Journal of Remote Sensing, 26(15), 3181-3204. https://doi.org/10.1080/01431160500044713Meng, X., Cheng, J., Zhao, S., Liu, S., y Yao, Y. 2019. Estimating land surface temperature from Landsat-8 data using the NOAA JPSS enterprise algorithm. Remote Sensing, 11(2), 155. https://doi.org/10.3390/rs11020155Mukherjee, F., Singh, D. 2020. Assessing Land Use-Land Cover Change and Its Impact on Land Surface Temperature Using LANDSAT Data: A Comparison of Two Urban Areas in India. Earth Systems and Environment, 4(2), 385-407. https://doi.org/10.1007/s41748-020-00155-9Prata, A., Caselles, V., Coll, C., Sobrino, J.A., OttlĂ©, C. 1995. Thermal remote sensing of land surface temperature from satellites: current status and future prospects. Remote sensing reviews, 12(3-4), 175-224. https://doi.org/10.1080/02757259509532285Peres, L.F., Sobrino, J.A., Libonati, R., JimĂ©nez Muñoz, J.C., Dacamara, C.C., Romaguera, M. 2008. Validation of a temperature emissivity separation hybrid method from airborne hyperspectral scanner data and ground measurements in the SEN2FLEX field campaign. International Journal of Remote Sensing, 29(24), 7251-7268. https://doi.org/10.1080/01431160802036532Qin, Z., Karnieli, A., Berliner, P. 2001. A mono-window algorithm for retrieving land surface temperature from Landsat TM data and its application to the Israel-Egypt border region. International Journal of Remote Sensing, 22(18), 3719-3746. https://doi.org/10.1080/01431160010006971Reuter, D.C., Richardson, C.M., Pellerano, F.A., Irons, J.R., Allen, R.G., Anderson, M., Jhabvala, M.D., Lunsford, A.W., Montanaro, M., Smith, R.L., Tesfaye, Z., Thome, K.J. 2015. The thermal infrared sensor (tirs) on Landsat 8: Design overview and pre-launch characterization. Remote Sensing, 7(1), 1135-1153. https://doi.org/10.3390/rs70101135Rongali, G., Keshari, A.K., Gosain, A.K., Khosa, R. 2018. A mono-window algorithm for land surface temperature estimation from Landsat 8 thermal infrared sensor data: A case study of the beas river basin, India. Pertanika Journal of Science and Technology, 26(2), 829-840. https://doi.org/10.1007/s41651-018-0021-yRozenstein, O., Qin, Z., Derimian, Y., Karnieli, A. 2014. Derivation of land surface temperature for landsat-8 TIRS using a split window algorithm. Sensors (Switzerland), 14(4), 5768-5780. https://doi.org/10.3390/s140405768Saaroni, H., Amorim, J.H., Hiemstra, J.A., Pearlmutter, D. 2018. Urban Green Infrastructure as a tool for urban heat mitigation: Survey of research methodologies and findings across different climatic regions. Urban Climate, 24(October 2017), 94-110. https://doi.org/10.1016/j.uclim.2018.02.001Sabol, D.E., Gillespie, A.R., Abbott, E., Yamada, G. 2009. Field validation of the ASTER Temperature Emissivity Separation algorithm. Remote Sensing of Environment, 113(11), 2328-2344. https://doi. org/10.1016/j.rse.2009.06.008Sekertekin, A. 2019. Validation of Physical Radiative Transfer Equation-Based Land Surface Temperature Using Landsat 8 Satellite Imagery and SURFRAD in-situ Measurements. Journal of Atmospheric and Solar-Terrestrial Physics, 196(July), 105161. https://doi.org/10.1016/j.jastp.2019.105161Sekertekin, A., Bonafoni, S. 2020. Land surface temperature retrieval from Landsat 5, 7, and 8 over rural areas: Assessment of different retrieval algorithms and emissivity models and toolbox implementation. Remote Sensing, 12(2), 294. https://doi.org/10.3390/rs12020294Sobrino, J.A., Raissouni, N. 2000. Toward remote sensing methods for land cover dynamic monitoring: Application to Morocco. International Journal of Remote Sensing, 21(2), 353-366. https://doi.org/10.1080/014311600210876Sobrino, J.A., JimĂ©nez-Muñoz, J.C., SĂČria, G., Romaguera, M., Guanter, L., Moreno, J., Plaza, A., MartĂ­nez, P. 2008. Land surface emissivity retrieval from different VNIR and TIR sensors. IEEE Transactions on Geoscience and Remote Sensing, 46(2), 316-327. https://doi.org/10.1109/TGRS.2007.904834Srivanit, M., Hokao, K., Phonekeo, V. 2012. Assessing the Impact of Urbanization on Urban Thermal Environment: A Case Study of Bangkok Metropolitan. International Journal of Applied Science and Technology, 2(7), 243-256. Recuperado de http://www.ijastnet.com/journals/Vol_2_No_7_ August_2012/26.pdf (Último acceso octubre 2020).Srivastava, P.K., Majumdar, T.J., Bhattacharya, A.K. 2009. Surface temperature estimation in Singhbhum Shear Zone of India using Landsat-7 ETM+ thermal infrared data. Advances in Space Research, 43(10), 1563-1574. https://doi.org/10.1016/j.asr.2009.01.023Stisen, S., Sandholt, I., NĂžrgaard, A., Fensholt, R., Eklundh, L. 2007. Estimation of diurnal air temperature using MSG SEVIRI data in West Africa. Remote Sensing of Environment, 110(2), 262-274. https://doi.org/10.1016/j.rse.2007.02.025Tan, K., Liao, Z., Du, P., Wu, L. 2017. Land surface temperature retrieval from Landsat 8 data and validation with geosensor network. Frontiers of Earth Science, 11(1), 20-34. https://doi.org/10.1007/s11707-016-0570-7Trigo, I.F., Monteiro, I.T., Olesen, F., Kabsch, E. 2008. An assessment of remotely sensed land surface temperature. Journal of Geophysical Research Atmospheres, 113(17), 1-12. https://doi. org/10.1029/2008JD010035USGS. 2017. Landsat 8 surface reflectance derived spectral indices. VersiĂłn 3.6. in: sioux falls, SD.Wan, Z., Dozier. J. 1996. A generalized split window algorithm for retrieving land-surface temperature from space. IEEE Transactions on Geoscience and Remote Sensing, 34(4), 892-905. https://doi.org/10.1109/36.508406Wang, F., Qin, Z., Song, C., Tu, L., Karnieli, A., Zhao, S. 2015a. An improved mono-window algorithm for land surface temperature retrieval from Landsat 8 thermal infrared sensor data. Remote Sensing, 7(4), 4268-4289. https://doi.org/10.3390/rs70404268Wang, L., Lu, Y., Yao, Y. 2019. Comparison of three algorithms for the retrieval of land surface temperature from landsat 8 images. Sensors (Switzerland), 19(22), 5049. https://doi.org/10.3390/s19225049Wang, S., He, L., Hu, W. 2015b. A temperature and emissivity separation algorithm for landsat-8 thermal infrared sensor data. Remote Sensing, 7(8), 9904-9927. https://doi.org/10.3390/rs70809904Wu, C., Li, J., Wang, C., Song, C., Chen, Y., Finka, M., La Rosa, D. 2019. Understanding the relationship between urban blue infrastructure and land surface temperature. Science of the Total Environment, 694, 133742. https://doi.org/10.1016/j.scitotenv.2019.133742Yang, C., Yan, F., Zhang, S. 2020. Comparison of land surface and air temperatures for quantifying summer and winter urban heat island in a snow climate city. Journal of Environmental Management, 265(March), 110563. https://doi.org/10.1016/j.jenvman.2020.110563Yu, X., Guo, X., Wu, Z. 2014. Land surface temperature retrieval from landsat 8 TIRS comparison between radiative transfer equation based method, split window algorithm and single channel method. Remote Sensing, 6(10), 9829-9852. https://doi.org/10.3390/rs6109829Yu, Y., Liu, Y., Yu, P., Liu, Y., Yu, P. 2017. Land surface temperature product development for JPSS and GOES-R missions. Comprehensive Remote Sensing, 1-9, 284-303. https://doi.org/10.1016/B978-0-12- 409548-9.10522-6Zhan, W., Chen, Y., Zhou, J., Wang, J., Liu, W., Voogt, J., Zhu, X., Quan, J., Li, J. 2013. Disaggregation of remotely sensed land surface temperature: Literature survey, taxonomy, issues, and caveats. Remote Sensing of Environment, 131(19), 119-139. https://doi.org/10.1016/j.rse.2012.12.014Zhang, Y., Chen, L., Wang, Y., Chen, L., Yao, F., Wu, P., Wang, B., Li, Y., Zhou, T., Zhang, T. 2015. Research on the contribution of urban land surface moisture to the alleviation effect of urban land surface heat based on Landsat 8 data. Remote Sensing, 7(8), 10737-10762. https://doi.org/10.3390/rs7081073

    Google Earth Engine Open-Source Code for Land Surface Temperature Estimation from the Landsat Series

    Get PDF
    Land Surface Temperature (LST) is increasingly important for various studies assessing land surface conditions, e.g., studies of urban climate, evapotranspiration, and vegetation stress. The Landsat series of satellites have the potential to provide LST estimates at a high spatial resolution, which is particularly appropriate for local or small-scale studies. Numerous studies have proposed LST retrieval algorithms for the Landsat series, and some datasets are available online. However, those datasets generally require the users to be able to handle large volumes of data. Google Earth Engine (GEE) is an online platform created to allow remote sensing users to easily perform big data analyses without increasing the demand for local computing resources. However, high spatial resolution LST datasets are currently not available in GEE. Here we provide a code repository that allows computing LSTs from Landsat 4, 5, 7, and 8 within GEE. The code may be used freely by users for computing Landsat LST as part of any analysis within GEE

    Downscaling landsat land surface temperature over the urban area of Florence

    Get PDF
    A new downscaling algorithm for land surface temperature (LST) images retrieved from Landsat Thematic Mapper (TM) was developed over the city of Florence and the results assessed against a high-resolution aerial image. The Landsat TM thermal band has a spatial resolution of 120 m, resampled at 30 m by the US Geological Survey (USGS) agency, whilst the airborne ground spatial resolution was 1 m. Substantial differences between Landsat USGS and airborne thermal data were observed on a 30 m grid: therefore a new statistical downscaling method at 30 m was developed. The overall root mean square error with respect to aircraft data improved from 3.3 °C (USGS) to 3.0 °C with the new method, that also showed better results with respect to other regressive downscaling techniques frequently used in literature. Such improvements can be ascribed to the selection of independent variables capable of representing the heterogeneous urban landscape

    The future of Earth observation in hydrology

    Get PDF
    In just the past 5 years, the field of Earth observation has progressed beyond the offerings of conventional space-agency-based platforms to include a plethora of sensing opportunities afforded by CubeSats, unmanned aerial vehicles (UAVs), and smartphone technologies that are being embraced by both for-profit companies and individual researchers. Over the previous decades, space agency efforts have brought forth well-known and immensely useful satellites such as the Landsat series and the Gravity Research and Climate Experiment (GRACE) system, with costs typically of the order of 1 billion dollars per satellite and with concept-to-launch timelines of the order of 2 decades (for new missions). More recently, the proliferation of smart-phones has helped to miniaturize sensors and energy requirements, facilitating advances in the use of CubeSats that can be launched by the dozens, while providing ultra-high (3-5 m) resolution sensing of the Earth on a daily basis. Start-up companies that did not exist a decade ago now operate more satellites in orbit than any space agency, and at costs that are a mere fraction of traditional satellite missions. With these advances come new space-borne measurements, such as real-time high-definition video for tracking air pollution, storm-cell development, flood propagation, precipitation monitoring, or even for constructing digital surfaces using structure-from-motion techniques. Closer to the surface, measurements from small unmanned drones and tethered balloons have mapped snow depths, floods, and estimated evaporation at sub-metre resolutions, pushing back on spatio-temporal constraints and delivering new process insights. At ground level, precipitation has been measured using signal attenuation between antennae mounted on cell phone towers, while the proliferation of mobile devices has enabled citizen scientists to catalogue photos of environmental conditions, estimate daily average temperatures from battery state, and sense other hydrologically important variables such as channel depths using commercially available wireless devices. Global internet access is being pursued via high-altitude balloons, solar planes, and hundreds of planned satellite launches, providing a means to exploit the "internet of things" as an entirely new measurement domain. Such global access will enable real-time collection of data from billions of smartphones or from remote research platforms. This future will produce petabytes of data that can only be accessed via cloud storage and will require new analytical approaches to interpret. The extent to which today's hydrologic models can usefully ingest such massive data volumes is unclear. Nor is it clear whether this deluge of data will be usefully exploited, either because the measurements are superfluous, inconsistent, not accurate enough, or simply because we lack the capacity to process and analyse them. What is apparent is that the tools and techniques afforded by this array of novel and game-changing sensing platforms present our community with a unique opportunity to develop new insights that advance fundamental aspects of the hydrological sciences. To accomplish this will require more than just an application of the technology: in some cases, it will demand a radical rethink on how we utilize and exploit these new observing systems

    Monitoring the impact of land cover change on surface urban heat island through google earth engine. Proposal of a global methodology, first applications and problems

    Get PDF
    All over the world, the rapid urbanization process is challenging the sustainable development of our cities. In 2015, the United Nation highlighted in Goal 11 of the SDGs (Sustainable Development Goals) the importance to "Make cities inclusive, safe, resilient and sustainable". In order to monitor progress regarding SDG 11, there is a need for proper indicators, representing different aspects of city conditions, obviously including the Land Cover (LC) changes and the urban climate with its most distinct feature, the Urban Heat Island (UHI). One of the aspects of UHI is the Surface Urban Heat Island (SUHI), which has been investigated through airborne and satellite remote sensing over many years. The purpose of this work is to show the present potential of Google Earth Engine (GEE) to process the huge and continuously increasing free satellite Earth Observation (EO) Big Data for long-term and wide spatio-temporal monitoring of SUHI and its connection with LC changes. A large-scale spatio-temporal procedure was implemented under GEE, also benefiting from the already established Climate Engine (CE) tool to extract the Land Surface Temperature (LST) from Landsat imagery and the simple indicator Detrended Rate Matrix was introduced to globally represent the net effect of LC changes on SUHI. The implemented procedure was successfully applied to six metropolitan areas in the U.S., and a general increasing of SUHI due to urban growth was clearly highlighted. As a matter of fact, GEE indeed allowed us to process more than 6000 Landsat images acquired over the period 1992-2011, performing a long-term and wide spatio-temporal study on SUHI vs. LC change monitoring. The present feasibility of the proposed procedure and the encouraging obtained results, although preliminary and requiring further investigations (calibration problems related to LST determination from Landsat imagery were evidenced), pave the way for a possible global service on SUHI monitoring, able to supply valuable indications to address an increasingly sustainable urban planning of our cities

    Assessing the utility of geospatial technologies to investigate environmental change within lake systems

    Get PDF
    Over 50% of the world's population live within 3. km of rivers and lakes highlighting the on-going importance of freshwater resources to human health and societal well-being. Whilst covering c. 3.5% of the Earth's non-glaciated land mass, trends in the environmental quality of the world's standing waters (natural lakes and reservoirs) are poorly understood, at least in comparison with rivers, and so evaluation of their current condition and sensitivity to change are global priorities. Here it is argued that a geospatial approach harnessing existing global datasets, along with new generation remote sensing products, offers the basis to characterise trajectories of change in lake properties e.g., water quality, physical structure, hydrological regime and ecological behaviour. This approach furthermore provides the evidence base to understand the relative importance of climatic forcing and/or changing catchment processes, e.g. land cover and soil moisture data, which coupled with climate data provide the basis to model regional water balance and runoff estimates over time. Using examples derived primarily from the Danube Basin but also other parts of the World, we demonstrate the power of the approach and its utility to assess the sensitivity of lake systems to environmental change, and hence better manage these key resources in the future

    Development of an empirical model for chlorophyll-a and Secchi Disk Depth estimation for a Pampean shallow lake (Argentina)

    Get PDF
    Shallow Pampean lakes are located in the most productive plain of Argentina. They are highly variable in salinity, turbidity and surface area. Laguna ChascomĂșs has been monitored as a representative example of them. We developed a linear model based on satellite images validated against field measurements (2001–2011 period). A vegetation index and Landsat Surface Reflectance (Band 4) produced the best correlations with chlorophyll-a (Chl-a) and Secchi Disk Depth (SDD), respectively. In a second instance, a retrospective analysis (1986–2013) was performed. As a result, significant positive trends were observed for SDD and Chl-a. In addition, both variables displayed trends related to rainfall and site depth.Fil: Bohn, Vanesa Yael. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - BahĂ­a Blanca; Argentina. Universidad Nacional del Sur. Departamento de GeografĂ­a y Turismo; ArgentinaFil: Carmona, Facundo. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina. Universidad Nacional del Centro de la Provincia de Buenos Aires. Rectorado. Instituto de HidrologĂ­a de Llanuras - Sede Tandil. Provincia de Buenos Aires. GobernaciĂłn. ComisiĂłn de Investigaciones CientĂ­ficas. Instituto de HidrologĂ­a de Llanuras - Sede Tandil; ArgentinaFil: Rivas, RaĂșl Eduardo. Universidad Nacional del Centro de la Provincia de Buenos Aires. Rectorado. Instituto de HidrologĂ­a de Llanuras - Sede Tandil. Provincia de Buenos Aires. GobernaciĂłn. ComisiĂłn de Investigaciones CientĂ­ficas. Instituto de HidrologĂ­a de Llanuras - Sede Tandil; ArgentinaFil: Lagomarsino, Leonardo. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - La Plata. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs). Universidad Nacional de San MartĂ­n. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs); ArgentinaFil: Diovisalvi, Nadia Rosalia. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - La Plata. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs). Universidad Nacional de San MartĂ­n. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs); ArgentinaFil: Zagarese, Horacio Ernesto. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - La Plata. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs). Universidad Nacional de San MartĂ­n. Instituto de Investigaciones BiotecnolĂłgicas. Instituto de Investigaciones BiotecnolĂłgicas "Dr. RaĂșl AlfonsĂ­n" (sede ChascomĂșs); Argentin
    • 

    corecore