Performance Analysis of Adaptive Dynamic Tube MPC
Savva Morozov, Parker C. Lusk, Brett T. Lopez, Jonathan P. How

TL;DR
This paper experimentally compares traditional, dynamic, and adaptive Tube MPC methods, demonstrating that adaptive DTMPC offers superior control efficiency and accuracy for uncertain nonlinear systems like a pendulum.
Contribution
It provides the first comprehensive experimental analysis of DTMPC and ADTMPC, showing their advantages over standard TMPC in real-world uncertain systems.
Findings
DTMPC reduces control effort by up to 30% compared to TMPC.
ADTMPC further reduces control effort by up to 35%.
ADTMPC improves trajectory tracking accuracy by up to 34%.
Abstract
Model predictive control (MPC) is an effective method for control of constrained systems but is susceptible to the external disturbances and modeling error often encountered in real-world applications. To address these issues, techniques such as Tube MPC (TMPC) utilize an ancillary offline-generated robust controller to ensure that the system remains within an invariant set, referred to as a tube, around an online-generated trajectory. However, TMPC is unable to modify its tube and ancillary controller in response to changing state-dependent uncertainty, often resulting in overly-conservative solutions. Dynamic Tube MPC (DTMPC) addresses these problems by simultaneously optimizing the desired trajectory and tube geometry online. Building upon this framework, Adaptive DTMPC (ADTMPC) produces better model approximations by reducing model uncertainty, resulting in more accurate control…
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