CPS: Medium: Compositional Learning and Control of Networked Cyber-Physical Systems

Information

  • NSF Award
  • 2409535
Owner
  • Award Id
    2409535
  • Award Effective Date
    6/1/2024 - 4 days ago
  • Award Expiration Date
    5/31/2027 - 2 years from now
  • Award Amount
    $ 1,200,000.00
  • Award Instrument
    Standard Grant

CPS: Medium: Compositional Learning and Control of Networked Cyber-Physical Systems

This project aims to develop theoretical frameworks and design practical algorithms for learning data-driven models and control strategies in networked cyber-physical systems. In particular, the project is grounded in power distribution systems, whose modular structure and hierarchical positioning of subsystems in subnetworks make them ideal candidates for compositional learning and control design, in which dynamical properties and performance guarantees propagate among hierarchical subsystems. To this end, both theory and algorithms will exploit physical invariants and compositional network structure to improve the generalization of learned components beyond their training regime, mitigate the prohibitive data requirements of current approaches, and provide auditable assurances of both component-level and system-level performance.<br/><br/>This project will be comprised of three closely related thrusts. The first thrust will build upon the formalism of port-Hamiltonian systems and design data-driven algorithms which learn dynamical models of individual subsystems that embed network structure, and control policies that leverage these structures to provide local performance guarantees. The second thrust will characterize latent uncertainty by reformulating port-Hamiltonian models in the context of neural stochastic differential equations. Explicitly modeling process noise in this way will facilitate the data-driven design of control policies which reason directly about the risk of constraint violation at both the subsystem and, ultimately, network level. Thus equipped, the third thrust will develop theoretical mechanisms for propagating subsystem-level input-output properties to network-level guarantees, without further data collection or learning. These results will guide the development of algorithms to identify which subsystems influence network-level guarantees most directly, and thereby prioritize further data collection and learning for the most critical subsystems. All algorithms will be implemented and validated in a physical hardware testbed which faithfully emulates a large power distribution network.<br/><br/>This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

  • Program Officer
    Ralph Wachterrwachter@nsf.gov7032928950
  • Min Amd Letter Date
    4/30/2024 - a month ago
  • Max Amd Letter Date
    4/30/2024 - a month ago
  • ARRA Amount

Institutions

  • Name
    University of Texas at Austin
  • City
    AUSTIN
  • State
    TX
  • Country
    United States
  • Address
    110 INNER CAMPUS DR
  • Postal Code
    787121139
  • Phone Number
    5124716424

Investigators

  • First Name
    Ufuk
  • Last Name
    Topcu
  • Email Address
    utopcu@utexas.edu
  • Start Date
    4/30/2024 12:00:00 AM
  • First Name
    Brian
  • Last Name
    Johnson
  • Email Address
    b.johnson@utexas.edu
  • Start Date
    4/30/2024 12:00:00 AM
  • First Name
    David
  • Last Name
    Fridovich-Keil
  • Email Address
    dfk@utexas.edu
  • Start Date
    4/30/2024 12:00:00 AM

Program Element

  • Text
    CPS-Cyber-Physical Systems
  • Code
    791800

Program Reference

  • Text
    CYBER-PHYSICAL SYSTEMS (CPS)
  • Code
    7918
  • Text
    MEDIUM PROJECT
  • Code
    7924