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    A comprehensive statistical study on daytime surface urban heat island during summer in urban areas, case study: Cairo and its new towns

    , Article Remote Sensing ; Volume 8, Issue 8 , 2016 ; 20724292 (ISSN) Taheri Shahraiyni, H ; Sodoudi, S ; El Zafarany, A ; Abou El Seoud, T ; Ashraf, H ; Krone, K ; Sharif University of Technology
    MDPI AG  2016
    Abstract
    Surface urban heat island (SUHI) is defined as the elevated land surface temperature (LST) in urban area in comparison with non-urban areas, and it can influence the energy consumption, comfort and health of urban residents. In this study, the existence of daytime SUHI, in Cairo and its new towns during the summer, is investigated using three different approaches; (1) utilization of pre-urbanization observations as LST references; (2) utilization of rural observations as LST references (urban-rural difference); and (3) utilization of the SIUHI (Surface Intra Urban Heat Island) approach. A time series of Landsat TM & ETM+ data (46 images) from 1984 to 2015 was employed in this study for... 

    Newly desertified regions in Iraq and its surrounding areas: Significant novel sources of global dust particles

    , Article Journal of Arid Environments ; Volume 116 , May , 2015 , Pages 1-10 ; 01401963 (ISSN) Moridnejad, A ; Karimi, N ; Ariya, P. A ; Sharif University of Technology
    Academic Press  2015
    Abstract
    Using the newly developed Middle East Dust Index (MEDI) applied to MODIS satellite data, we consider a relationship between the recent desertified regions, over the past three decades, and the dust source points identified during the period of 2001-2012. Results indicate that major source points are located in Iraq and Syria, and by implementing the spectral mixture analysis on the Landsat TM images (1984 and 2012), a novel desertification map was extracted. Results of this study indicate for the first time that c.a., 39% of all detected source points are located in this newly anthropogenically desertified area. Using extracted indices for Deep Blue algorithm, dust sources were classified... 

    Estimating the Spatial and Temporal Changes in The Salinity of the Hyper-Saline Lake Urmia Using Sentinel-2 Imagery

    , M.Sc. Thesis Sharif University of Technology Bayati, Majid (Author) ; Danesh-Yazdi, Mohammad (Supervisor)
    Abstract
    The spatiotemporal dynamic of salinity concentration (SC) in saline lakes is strongly dependent on the rate of water flow into the lake, water circulation, wind speed, evaporation rate, and the phenomenon of salt precipitation and dissolution. Although in-situ observations most reliably quantify water quality metrics, the spatiotemporal distribution of such data are typically limited and cannot be readily extrapolated for either long-term projections or extensive area. Alternatively, remotely sensed imagery has facilitated less expensive and a stronger ability to estimate water quality over a wide range of spatiotemporal resolutions. This study introduces an adaptive learning model that... 

    Water Quality Monitoring Using Remote Sensing: A Case Study of Gorgan Bay

    , M.Sc. Thesis Sharif University of Technology Mofidi Neyestani, Reza (Author) ; Tajrishi, Massoud (Supervisor)
    Abstract
    Surface water quality management needs water contaminants monitoring and information about water quality parameters. Field measurement is a costly, time-consuming procedure that limits information about the whole surface of a water body. Remote sensing methods are valuable ways that prepare water quality information using different characteristics between reflectance detected from each parameter. This study aimed to investigate the water quality parameters of Gorgan Bay using field sampling and a feasibility study using Landsat-8 and Sentinel-2 images to estimate the spatial and temporal changes of optically active parameters (such as sea surface temperature (SST), salinity, electrical... 

    Revisiting bathymetry dynamics in Lake Urmia using extensive field data and high-resolution satellite imagery

    , Article Journal of Hydrology ; Volume 603 , 2021 ; 00221694 (ISSN) Danesh Yazdi, M ; Bayati, M ; Tajrishy, M ; Chehrenegar, B ; Sharif University of Technology
    Elsevier B.V  2021
    Abstract
    Bathymetric mapping for an accurate estimation of stored water volume in drying lakes is a key information for an effective monitoring of their recession or restoration status. Extraction of bathymetry in shallow saline lakes using remote sensing techniques has always been challenging due to the complex influences imposed by the physical properties of substrate and the spatial variability of salinity. In this study, we developed a machine learning-based model to quantify the implicit, non-linear relationship between water depth and surface reflectance by leveraging extensive in-situ data and high-resolution satellite imagery. We trained and tested the learning model in the hyper-saline Lake... 

    Mapping the spatiotemporal variability of salinity in the hypersaline Lake Urmia using Sentinel-2 and Landsat-8 imagery

    , Article Journal of Hydrology ; Volume 595 , 2021 ; 00221694 (ISSN) Bayati, M ; Danesh Yazdi, M ; Sharif University of Technology
    Elsevier B.V  2021
    Abstract
    The spatiotemporal dynamic of salinity concentration (SC) in saline lakes is strongly dependent on the rate of water flow into the lake, water circulation, wind speed, evaporation rate, and the phenomenon of salt precipitation and dissolution. Although in-situ observations most reliably quantify water quality metrics, the spatiotemporal distribution of such data are typically limited and cannot be readily extrapolated for either long-term projections or extensive areas. Alternatively, remotely sensed imagery has facilitated less expensive and a stronger ability to estimate water quality over a wide range of spatiotemporal resolutions. This study introduces an adaptive learning model that...