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    Data-driven modeling for effective integration of wind power

    Author
    Arrieta Prieto, Mario, Enrique
    View/Open
    ArrietaPrieto_rpi_0185E_11853.pdf (14.35Mb)
    Other Contributors
    Schell, Kristen, R.; Sharkey, Thomas; Mitchell, John, E.; Chow, Joe;
    Date Issued
    2021-05
    Subject
    Decision sciences and engineering systems
    Degree
    PhD;
    Terms of Use
    This electronic version is a licensed copy owned by Rensselaer Polytechnic Institute (RPI), Troy, NY. Copyright of original work retained by author.;
    Metadata
    Show full item record
    URI
    https://hdl.handle.net/20.500.13015/6776
    Abstract
    Stochastic methods to explicitly model the uncertainty of wind power output are essentialfor the effective integration of this renewable energy source into the power supply. Recent years have seen several advances in forecasting models for wind power output, though these models typically focused on a single wind farm that has already been built. A result of this dissertation is a novel forecasting framework that builds probabilistic forecasts for existing farms. This spatio-temporal framework exploits their asymmetric association in time and space via an ARIMA (Auto-Regressive Integrated Moving Average) -DVINE (Drawable Vine) copula model hybridized with support vector regression (SVR). A second result of this dissertation is a new optimization model that, ex ante, finds the best placement of a new wind farm, based on its overall positive impact for society. Utilizing historical data of wind power output for a set of established wind farms belonging to the Energy Reliability Council of Texas (ERCOT), this data-driven optimization problem explicitly considers the temporal and spatial dynamics of the wind power generation process via a predictive model built upon hybrid implementations of spatio-temporal random-effects models and random forests. The predictive model for wind power output is considered, per se, a significant contribution because it allows to conduct prospective analysis of the potential of a given location where no records are available and no farms have been installed. In total, three new models have been developed to better forecast and predict wind power production, in order to increase the effective integration of wind power in the electricity system.;
    Description
    May2021; School of Engineering
    Department
    Dept. of Industrial and Systems Engineering;
    Publisher
    Rensselaer Polytechnic Institute, Troy, NY
    Relationships
    Rensselaer Theses and Dissertations Online Collection;
    Access
    Restricted to current Rensselaer faculty, staff and students in accordance with the Rensselaer Standard license. Access inquiries may be directed to the Rensselaer Libraries.;
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