Trent University Graduate Thesis Collection

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    tula:etd
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    1 item
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    Copyright for all items in the Trent University Graduate Thesis Collection is held by the author, with all rights reserved, unless otherwise noted.
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    Seasonal variation in nutrient and particulate inputs and outputs at an urban stormwater pond in Peterborough, Ontario

    Year: 2014, 2014
    Member of: Trent University Graduate Thesis Collection
    Name(s): Creator (cre): Geraldi, Jason, Thesis advisor (ths): Eimers, Catherine, Degree committee member (dgc): Watmough, Shaun, Degree committee member (dgc): Buttle, Jim, Degree granting institution (dgg): Trent University
    Abstract: <p>Stormwater ponds (SWPs) are a common feature in new urban developments where they are designed to minimize runoff peaks from impervious surfaces and retain particulate matter. As a consequence, SWPs can be efficient at retaining particle-bound nutrients, but may be less efficient at retaining nutrients that are present primarily in the dissolved form, like nitrogen (N). However, the… more

    ADAPT: An Automated Decision Support Tool For Adaptation To Climate Change-Driven Floods Predicted From A Multiscale And Multi-Model Framework

    Year: 2014, 2014
    Member of: Trent University Graduate Thesis Collection
    Name(s): Creator (cre): Patel, Reesha, Thesis advisor (ths): Ponce-Hernandez, Raul, Degree committee member (dgc): Eimers, Catherine, Degree committee member (dgc): Franklin, Steven, Degree granting institution (dgg): Trent University
    Abstract: <p>This thesis focuses on the design of a modelling framework consisting of loose-coupling of a sequence of spatial and process models and procedures necessary to predict future flood events for the years 2030 and 2050 in Tabasco Mexico. Temperature and precipitation data from the Hadley Centers Coupled Model (HadCM3), for those future years were downscaled using the Statistical Downscaling… more