Search Results for author: Mark Cannon

Found 7 papers, 2 papers with code

Towards non-stochastic targeted exploration

no code implementations10 Dec 2023 Janani Venkatasubramanian, Johannes Köhler, Mark Cannon, Frank Allgöwer

We present a novel targeted exploration strategy for linear time-invariant systems without stochastic assumptions on the noise, i. e., without requiring independence or zero mean, allowing for deterministic model misspecifications.

Data-driven robust MPC of tiltwing VTOL aircraft

no code implementations7 Aug 2023 Martin Doff-Sotta, Mark Cannon, Marko Bacic

This paper investigates robust tube-based Model Predictive Control (MPC) of a tiltwing Vertical Take-Off and Landing (VTOL) aircraft subject to wind disturbances and model uncertainty.

Model Predictive Control

Stochastic output feedback MPC with intermittent observations

no code implementations22 Sep 2020 Shuhao Yan, Mark Cannon, Paul J. Goulart

We analyse robustness of the proposed control law with respect to possible uncertainties in the arrival probability of sensor data and we bound the impact of these uncertainties on constraint satisfaction and the discounted cost.

Model Predictive Control

Stochastic MPC with Dynamic Feedback Gain Selection and Discounted Probabilistic Constraints

no code implementations14 Jul 2020 Shuhao Yan, Paul J. Goulart, Mark Cannon

With dynamic feedback gain selection, the closed loop cost is reduced and conservativeness of Chebyshev's inequality is mitigated.

Model Predictive Control

Parallel ADMM for robust quadratic optimal resource allocation problems

1 code implementation24 Mar 2019 Zawar Qureshi, Sebastian East, Mark Cannon

An alternating direction method of multipliers (ADMM) solver is described for optimal resource allocation problems with separable convex quadratic costs and constraints and linear coupling constraints.

Optimization and Control 90C25, 93E20, 65Y05, 65Y20

COSMO: A conic operator splitting method for convex conic problems

2 code implementations30 Jan 2019 Michael Garstka, Mark Cannon, Paul Goulart

This paper describes the Conic Operator Splitting Method (COSMO) solver, an operator splitting algorithm for convex optimisation problems with quadratic objective function and conic constraints.

Optimization and Control

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