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    Flood mapping tools for disaster preparedness and emergency response using satellite data and hydrodynamic models: a case study of Bagmathi Basin, India

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    Authors
    Amarnath, Giriraj
    Matheswaran, Karthikeyan
    Pandey, Pooja
    Alahacoon, Niranga
    Yoshimoto, Shuhei
    Date Issued
    2017-12
    Date Online
    2017-11
    Language
    en
    Type
    Journal Article
    Accessibility
    Open Access
    Usage rights
    Copyrighted; all rights reserved
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    Citation
    Amarnath, Giriraj; Matheswaran, Karthikeyan; Pandey, Pooja; Alahacoon, Niranga; Yoshimoto, Shuhei. 2017. Flood mapping tools for disaster preparedness and emergency response using satellite data and hydrodynamic models: a case study of Bagmathi Basin, India. Proceedings of the National Academy of Sciences India Section A-Physical Sciences. 12p. (Online first). . 10.1007/s40010-017-0461-7
    Permanent link to cite or share this item: https://hdl.handle.net/10568/91311
    DOI: https://doi.org/10.1007/s40010-017-0461-7
    Abstract/Description
    Northern Bihar is one of the major flood prone region in India affecting thousands of human lives and livelihoods during the recurrent floods occurring due to the monsoonal rains. While it is impossible to prevent the occurrence of extreme flood events, disaster planning can help in mitigating its detrimental effects. Monitoring flood extent using satellite observations just after the flood disasters is a core component of rapid emergency response process, which enables the emergency rescue teams to prioritize their efforts in critical areas to save lives and protect health, in addition to providing near real-time flooding information to the decision makers and planners. The main objective of this study is to demonstrate the utility of less data intensive, but equally robust hydrodynamic models to develop flood extent maps in conjunction with freely available remote sensing imageries at different scales. MODIS TERRA satellite data was used to map flood extent from 2001 to 2016 for entire Bihar. Two hydraulic models namely FLDPLN and RRI applied for the Bagmathi basin to evaluate our objectives. Both these models are of varying complexity but generate flood extent patterns with minimum amount of input data. The proposed approach is suited for mapping flood extents to provide an input information in near real time (h) when there is no availability to detailed hydraulic models and satellite datasets. Flood inundation extents from FLDPLN and RRI models were validated with Landsat-7 and MODIS TERRA derived flood extents for model performance. The results show acceptable spatial agreement between model predicted and Landsat-7 observed flood extents, denoting the utility of these tools for flood mapping application in data scarce environments.
    Other CGIAR Affiliations
    Climate Change, Agriculture and Food Security; Water, Land and Ecosystems
    AGROVOC Keywords
    floodplains; disaster preparedness; satellite observation; satellite imagery; hydrodynamics; models; mapping; emergencies; rainfall-runoff relationships; river basins; case studies
    Subjects
    CLIMATE SERVICES AND SAFETY NETS;
    Countries
    India
    Regions
    Asia; Southern Asia
    Organizations Affiliated to the Authors
    International Water Management Institute
    Collections
    • IWMI Journal Articles [2546]
    • WLE Journal Articles [922]

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