😅Hydrological Modeling Unit 13 – Remote Sensing and GIS in Hydrology
Remote sensing and GIS are powerful tools in hydrology, allowing scientists to gather and analyze data about Earth's surface from afar. These technologies use electromagnetic radiation and computer-based systems to capture, store, and visualize spatial information about water resources and related phenomena.
Key concepts include spectral signatures, spatial and temporal resolution, and data preprocessing. Applications range from land cover mapping to flood monitoring and glacier tracking. Challenges like cloud cover and data volume exist, but future trends in machine learning and cloud computing promise exciting developments.
Remote sensing involves gathering information about the Earth's surface from a distance using sensors on satellites or aircraft
GIS (Geographic Information Systems) are computer-based tools for storing, analyzing, and visualizing spatial data
Remote sensing data is often integrated with GIS for hydrological modeling and analysis
Electromagnetic radiation is the foundation of remote sensing, with different wavelengths interacting differently with Earth's surface features (visible, infrared, microwave)
Spectral signatures are unique reflectance patterns of different land cover types (vegetation, water, soil) used for classification
Spatial resolution refers to the level of detail captured in an image, with higher resolution providing more detailed information
Temporal resolution is the frequency at which images are acquired, important for monitoring changes over time
Passive sensors detect naturally reflected or emitted energy, while active sensors emit their own energy and measure the returned signal (radar, lidar)
Remote Sensing Basics
Remote sensing satellites orbit the Earth at different altitudes and inclinations, affecting coverage and revisit time
Geostationary satellites remain fixed above a specific location, providing continuous coverage (weather monitoring)
Polar-orbiting satellites follow a north-south path, covering the entire Earth at regular intervals (Landsat, Sentinel)
Sensors capture data in different portions of the electromagnetic spectrum, each with unique properties and applications
Visible light (0.4-0.7 μm) is used for true-color imagery and detecting surface features
Near-infrared (0.7-1.4 μm) is sensitive to vegetation health and water content
Thermal infrared (8-14 μm) measures surface temperature and is useful for evapotranspiration studies
Microwave (1 mm-1 m) penetrates clouds and is used for soil moisture and surface roughness estimation (Sentinel-1, SMAP)
Preprocessing steps are necessary to correct for atmospheric effects, geometric distortions, and sensor calibration
Image enhancement techniques (contrast stretching, band combinations) improve visual interpretation and feature extraction
GIS Fundamentals
GIS data is represented in either vector (points, lines, polygons) or raster (grid of cells) format
Vector data is suitable for discrete features (rivers, watersheds), while raster data is used for continuous variables (elevation, precipitation)
Coordinate reference systems (CRS) define the spatial reference for data, ensuring accurate alignment and analysis
Geographic CRS use latitude and longitude coordinates on a spherical Earth model (WGS84)
Projected CRS flatten the Earth's surface onto a 2D plane, preserving shape, area, or distance (UTM, State Plane)
Attribute tables store non-spatial information associated with features, allowing for complex queries and analysis
Spatial analysis tools include overlay (combining layers), buffer (proximity analysis), and interpolation (estimating values between points)
Terrain analysis derives hydrologically relevant parameters from digital elevation models (DEMs), such as slope, aspect, and flow direction
Watershed delineation identifies drainage basins and stream networks based on terrain and flow accumulation thresholds
Data Sources and Acquisition
Landsat satellites have provided continuous multispectral imagery since 1972, with 30 m resolution and 16-day revisit time
Landsat 8 and 9 are the most recent missions, with improved sensors and data quality
MODIS (Moderate Resolution Imaging Spectroradiometer) offers daily global coverage at 250-1000 m resolution, useful for large-scale monitoring
Sentinel satellites, part of the European Copernicus program, provide high-resolution optical (Sentinel-2) and radar (Sentinel-1) data
SRTM (Shuttle Radar Topography Mission) and ASTER GDEM are global digital elevation datasets at 30-90 m resolution
LiDAR (Light Detection and Ranging) uses laser pulses to create high-resolution DEMs and 3D point clouds
Precipitation data is available from ground-based networks (rain gauges), weather radar, and satellite-derived products (TRMM, GPM)
In-situ measurements (streamflow, soil moisture) are used for calibration and validation of remote sensing estimates
Data portals and cloud platforms (USGS EarthExplorer, Google Earth Engine) facilitate access to large archives of remote sensing data
Processing and Analysis Techniques
Image classification assigns pixels to land cover classes based on their spectral signatures
Supervised classification uses training samples to guide the algorithm (Maximum Likelihood, Support Vector Machines)
Unsupervised classification groups pixels based on statistical patterns without prior knowledge (K-means, ISODATA)
Change detection identifies differences in land cover or surface conditions over time
Post-classification comparison detects changes between independently classified images
Image differencing subtracts pixel values between two dates to highlight areas of change
Vegetation indices (NDVI, EVI) quantify vegetation greenness and vigor using ratios of red and near-infrared reflectance
Spectral unmixing estimates the fractional abundance of different land cover types within mixed pixels
Radar interferometry (InSAR) measures surface deformation and elevation changes using phase differences between radar images
Machine learning algorithms (Random Forests, Deep Learning) are increasingly used for complex classification and regression tasks
Data fusion techniques combine information from multiple sensors or sources to improve accuracy and resolution (pan-sharpening, downscaling)
Applications in Hydrology
Land use/land cover mapping provides essential input data for hydrological models, affecting runoff, infiltration, and evapotranspiration
Evapotranspiration estimation using remote sensing-based models (SEBAL, METRIC) helps quantify water losses and irrigation requirements
Soil moisture monitoring using microwave sensors (SMAP, SMOS) improves drought assessment and flood forecasting
Snow cover mapping and snow water equivalent (SWE) estimation are critical for water supply forecasting in mountainous regions
Flood mapping and monitoring using optical and radar imagery helps assess the extent and duration of inundation
Water quality assessment using spectral indices (chlorophyll-a, turbidity) supports the management of lakes, reservoirs, and coastal waters
Groundwater exploration using remote sensing indicators (lineaments, vegetation patterns) guides the identification of potential aquifers
Glacier and permafrost monitoring using multi-temporal imagery informs water resource planning in cold regions
Challenges and Limitations
Cloud cover and atmospheric effects can obscure or distort surface features, requiring careful preprocessing and cloud masking
Trade-offs between spatial, temporal, and spectral resolution limit the ability to capture fine-scale processes and rapid changes
Data volume and processing requirements can be significant, necessitating high-performance computing and storage solutions
Ground truth data is essential for accuracy assessment and model calibration but can be costly and time-consuming to collect
Spectral confusion between similar land cover types (e.g., bare soil and urban areas) can lead to classification errors
Radar and lidar signals can be affected by surface roughness, vegetation structure, and moisture conditions, complicating interpretation
Integrating remote sensing data with physical models requires careful consideration of scale, parameterization, and uncertainty propagation
Socioeconomic and policy factors can limit the adoption and application of remote sensing technologies in water resources management
Future Trends and Developments
Increased availability of high-resolution, multi-sensor data from new satellite missions (Landsat 9, Sentinel-6, NISAR)
Advances in cloud computing and big data analytics (Google Earth Engine, AWS, Microsoft Azure) enable large-scale processing and analysis
Machine learning and artificial intelligence techniques improve classification accuracy, change detection, and data fusion
Integration of remote sensing with process-based models (SWAT, VIC) enhances understanding of hydrological fluxes and feedbacks
Adoption of open data policies and standards (FAIR principles) promotes collaboration and reproducibility in research and applications
Citizen science and crowdsourcing initiatives engage the public in data collection and validation, expanding the reach of remote sensing
Development of low-cost, high-resolution sensors on drones and small satellites (CubeSats) increases the accessibility of remote sensing technology
Incorporation of socioeconomic and demographic data with remote sensing supports integrated water resources management and decision-making