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Andrew Teel

Andrew Teel

· Distinguished ProfessorVerified

University of California, Santa Barbara · Electrical and Computer Engineering

Active 1990–2026

h-index85
Citations35.2k
Papers73673 last 5y
Funding$1.9M
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About

Andrew Teel is a Distinguished Professor in the Department of Electrical and Computer Engineering at UC Santa Barbara. His research interests focus on the development of feedback control algorithms for nonlinear and hybrid dynamical systems. He is associated with the Control and Computation Research Lab and is involved in advancing control theory and its applications. For contact, he can be reached by phone at +1 805-893-3616 or via email at teel@ece.ucsb.edu. His office is located in Harold Frank Hall, Room 5119A.

Research topics

  • Computer Science
  • Artificial Intelligence
  • Mathematics
  • Engineering
  • Machine Learning
  • Control engineering
  • Mathematical optimization
  • Algorithm
  • Pure mathematics
  • Law
  • Combinatorics

Selected publications

  • Data-Driven Control of Continuous-Time LTI Systems via Non-Minimal Realizations

    IEEE Transactions on Automatic Control · 2026-01-01

    preprintOpen accessSenior author

    This article proposes an approach to design output- feedback controllers for unknown continuous-time linear time-invariant systems using only input-output data from a single experiment. To address the lack of state and derivative measurements, we introduce non-minimal realizations whose states can be observed by filtering the available data. We first apply this concept to the disturbance-free case, formulating linear matrix inequalities (LMIs) from batches of sampled signals to design a dynamic, filter-based stabilizing controller. The framework is then extended to the problem of asymptotic tracking and disturbance rejection—in short, output regulation—by incorporating an internal model based on prior knowledge of the disturbance/reference frequencies. Finally, we discuss tuning strategies for a class of multi-input multi-output systems and illustrate the method via numerical examples.

  • Hybrid Set-Seeking Systems: <b>Model-Free Feedback Optimization via Hybrid Inclusions</b>

    IEEE Control Systems · 2026-04-01 · 1 citations

    articleSenior author
  • Stochastic approximations of differential inclusions: almost sure boundedness and asymptotic convergence

    IFAC-PapersOnLine · 2025-01-01

    articleOpen access1st authorCorresponding

    For a stochastic approximation of a differential inclusion, results are given on almost sure boundedness of the approximate solutions and on their convergence to the chain recurrent part of the global attractor. The former involve bounding the stochastic approximation’s variance using a Lyapunov-like function. The novelty of the latter is in the use of Lyapunov-like characterizations of Morse decompositions of the attractor.

  • Robust Recurrence of Discrete-Time Infinite-Horizon Stochastic Optimal Control with Discounted Cost

    ArXiv.org · 2025-04-29

    preprintOpen accessSenior author

    We analyze the stability of general nonlinear discrete-time stochastic systems controlled by optimal inputs that minimize an infinite-horizon discounted cost. Under a novel stochastic formulation of cost-controllability and detectability assumptions inspired by the related literature on deterministic systems, we prove that uniform semi-global practical recurrence holds for the closed-loop system, where the adjustable parameter is the discount factor. Under additional continuity assumptions, we further prove that this property is robust.

  • Derivative-free data-driven control of continuous-time linear time-invariant systems

    European Journal of Control · 2025-07-28 · 2 citations

    articleOpen accessSenior author

    This paper develops a method for data-driven stabilization of continuous-time linear time-invariant systems with theoretical guarantees and no need for signal derivatives. The framework is based on linear matrix inequalities (LMIs) and illustrated in the state-feedback and single-input single-output output-feedback scenarios. Similar to discrete-time approaches, we rely solely on input and state/output measurements. In particular, we avoid differentiation by employing low-pass filters of the measured signals that, rather than approximating the derivatives, reconstruct a non-minimal realization of the plant. With access to the filter states and their derivatives, we can solve LMIs derived from sample batches of the available signals to compute a dynamic controller that stabilizes the plant. The effectiveness of the approach is showcased via numerical examples.

  • Robust Recurrence of Discrete-Time Infinite-Horizon Stochastic Optimal Control with Discounted Cost

    IFAC-PapersOnLine · 2025-01-01

    articleOpen accessSenior authorCorresponding

    We analyze the stability of general nonlinear discrete-time stochastic systems controlled by optimal inputs that minimize an infinite-horizon discounted cost. Under a novel stochastic formulation of cost-controllability and detectability assumptions inspired by the related literature on deterministic systems, we prove that uniform semi-global practical recurrence holds for the closed-loop system, where the adjustable parameter is the discount factor. Under additional continuity assumptions, we further prove that this property is robust.

  • A smooth Conley–Lyapunov function for hybrid inclusions on <mml:math xmlns:mml="http://www.w3.org/1998/Math/MathML" altimg="si1.svg" display="inline" id="d1e23"><mml:msup><mml:mrow><mml:mi mathvariant="double-struck">R</mml:mi></mml:mrow><mml:mrow><mml:mi>n</mml:mi></mml:mrow></mml:msup></mml:math>

    Systems & Control Letters · 2025-07-29

    articleSenior author
  • Emulation-based Stabilization for Networked Control Systems with Stochastic Channels

    arXiv (Cornell University) · 2024-01-22

    preprintOpen access

    This paper studies the stabilization problem of networked control systems (NCSs) with random packet dropouts caused by stochastic channels. To describe the effects of stochastic channels on the information transmission, the transmission times are assumed to be deterministic, whereas the packet transmission is assumed to be random. We first propose a stochastic scheduling protocol to model random packet dropouts, and address the properties of the proposed stochastic scheduling protocol. The proposed scheduling protocol provides a unified modelling framework for a general class of random packet dropouts due to different stochastic channels. Next, the proposed scheduling protocol is embedded into the closed-loop system, which leads to a stochastic hybrid model for NCSs with random packet dropouts. Based on this stochastic hybrid model, we follow the emulation approach to establish sufficient conditions to guarantee uniform global asymptotical stability in probability. In particular, an upper bound on the maximally allowable transmission interval is derived explicitly for all stochastic protocols satisfying Lyapunov conditions that guarantee uniform global asymptotic stability in probability. Finally, two numerical examples are presented to demonstrate the derived results.

  • A Switched System Dwell-Time Update Mechanism for Path Following With Intermittent State Feedback Constraints

    IEEE Transactions on Automatic Control · 2024-02-06 · 1 citations

    article

    This article focuses on a class of problems where a switched system approach is used to model intermittencies in state feedback. Specifically, a single-agent with nonlinear dynamics is tasked with following a desired path that lies in a feedback-denied region where state feedback is unavailable. As a result, the agent must use open-loop state estimates (dead-reckon) to navigate along the desired path while periodically returning to a known feedback region where the accumulated dead-reckoning errors are regulated. A dwell-time update mechanism is developed that leverages intermittent data measurements to generate a relaxed dwell-time condition in comparison to previous literature. The updated dwell-time conditions are used to plan the duration spent following the desired path before returning to the feedback region to acquire state feedback. A Lyapunov-based switched system dwell-time analysis is used to show the state tracking error is uniformly ultimately bounded to a prescribed error threshold that also guarantees re-entry of the agent to the feedback region. Comparative numerical simulations are conducted to demonstrate the efficacy of the developed method.

  • Some converse Lyapunov-like results for strong forward invariance

    2024-12-16 · 3 citations

    articleSenior author

    In the setting of a differential inclusion, strong forward invariance of a closed or a compact set is studied. Main results are novel necessary Lyapunov-like conditions for this property. They involve time-varying and autonomous Lyapunov/barrier functions that are smooth everywhere or at least outside the invariant set and are decreasing or at least not increasing faster than exponentially.

Recent grants

Frequent coauthors

  • Dragan Nešić

    767 shared
  • Warren E. Dixon

    University of Florida

    697 shared
  • P Khargonekar

    Office of International Affairs

    688 shared
  • Maria Prandini

    688 shared
  • Marco Lovera

    Politecnico di Milano

    688 shared
  • John Lygeros

    ETH Zurich

    688 shared
  • Robert R. Bitmead

    University of California, San Diego

    688 shared
  • James Farrell

    University of Arizona

    688 shared

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