Wu, Meng (2017-12). Physics-Based and Data-Driven Analytics for Enhanced Planning and Operations in Power Systems with Deep Renewable Penetration. Doctoral Dissertation. Thesis uri icon

abstract

  • This dissertation is motivated by the lack of combined physics-based and data-driven framework for solving power system challenges that are introduced by the integration of new devices and new system components. As increasing number of stochastic generation, responsive loads, and dynamic measurements are involved in the planning and operations of modern power systems, utilities and system operators are in great need of new analysis framework that could combine physical models and measuring data together for solving challenging planning and operational problems. In view of the above challenges, the high-level objective of this dissertation is to develop a framework for integrating measurement data into large physical systems modeled by dynamical equations. To this end, the dissertation first identifies four critical tasks for the planning and operations of the modern power systems: the data collection and pre-processing, the system situational awareness, the decision making process, as well as the post-event analysis. The dissertation then takes one concrete application in each of these critical tasks as the example, and proposes the physics-based/data-driven approach for solving the challenging problems faced by this specific application. To this end, this dissertation focuses on solving the following specific problems using physics-based/data-driven approaches. First, for the data collection and pre-processing platform, a purely data-driven approach is proposed to detect bad metering data in the phasor measurement unit (PMU) monitoring systems, and ensure the overall PMU data quality. Second, for the situational awareness platform, a physics-based voltage stability assessment method is presented to improve the situational awareness of system voltage instabilities. Third, for the decision making platform, a combined physics-based and data-driven framework is proposed to support the decision making process of PMU-based power plant model validation. Forth, for the post-event analysis platform, a physics-based post-event analysis is presented to identify the root causes of the sub-synchronous oscillations induced by the wind farm integration. The above problems and proposed solutions are discussed in detail in Section 2 through Section 5. The results of this work can be integrated to address practical problems in modern power system planning and operations.
  • This dissertation is motivated by the lack of combined physics-based and data-driven
    framework for solving power system challenges that are introduced by the integration of
    new devices and new system components. As increasing number of stochastic generation,
    responsive loads, and dynamic measurements are involved in the planning and operations
    of modern power systems, utilities and system operators are in great need of new analysis
    framework that could combine physical models and measuring data together for solving
    challenging planning and operational problems.

    In view of the above challenges, the high-level objective of this dissertation is to develop
    a framework for integrating measurement data into large physical systems modeled
    by dynamical equations. To this end, the dissertation first identifies four critical tasks
    for the planning and operations of the modern power systems: the data collection and
    pre-processing, the system situational awareness, the decision making process, as well as
    the post-event analysis. The dissertation then takes one concrete application in each of
    these critical tasks as the example, and proposes the physics-based/data-driven approach
    for solving the challenging problems faced by this specific application.

    To this end, this dissertation focuses on solving the following specific problems using
    physics-based/data-driven approaches. First, for the data collection and pre-processing
    platform, a purely data-driven approach is proposed to detect bad metering data in the
    phasor measurement unit (PMU) monitoring systems, and ensure the overall PMU data
    quality. Second, for the situational awareness platform, a physics-based voltage stability
    assessment method is presented to improve the situational awareness of system voltage
    instabilities. Third, for the decision making platform, a combined physics-based and
    data-driven framework is proposed to support the decision making process of PMU-based
    power plant model validation. Forth, for the post-event analysis platform, a physics-based
    post-event analysis is presented to identify the root causes of the sub-synchronous oscillations
    induced by the wind farm integration.

    The above problems and proposed solutions are discussed in detail in Section 2 through
    Section 5. The results of this work can be integrated to address practical problems in
    modern power system planning and operations.

publication date

  • December 2017