Noniterative Model Predictive Control with Soft Input Constraints for Real-Time Trajectory Tracking

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Noniterative Model Predictive Control with Soft Input Constraints for Real-Time Trajectory Tracking. / Handler, Johannes; Harker, Matthew; Rath, Gerhard et al.
2023 American Control Conference (ACC). 2023.

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Handler, J, Harker, M, Rath, G & Rollett, M 2023, Noniterative Model Predictive Control with Soft Input Constraints for Real-Time Trajectory Tracking. in 2023 American Control Conference (ACC). American Control Conference (ACC) 2023, San Diego, Kalifornien, USA / Vereinigte Staaten, 31/05/23. https://doi.org/10.23919/ACC55779.2023.10156191

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@inproceedings{c6cfb660c30944919e37c6ae2ed0e94a,
title = "Noniterative Model Predictive Control with Soft Input Constraints for Real-Time Trajectory Tracking",
abstract = "This paper develops a new approach to soft constrained model predictive control (MPC) for real-time trajectory tracking. The presented method does not rely on solving an iterative optimization algorithm at each sampling instance. In fact, the optimal control input is directly computed via an inner product of two vectors. This enables the computation of an optimal control input in real-time rather than having to use a suboptimal solution as is the case in most current real-time MPC approaches. The computational complexity of the presented method is linear w.r.t. the prediction horizon, state and input dimension, which makes it ideal for fast sampled, large systems. The functionality of the new approach is demonstrated in a laboratory setup of an underactuated, cranelike system. Furthermore, its performance is compared with a suboptimal MPC based on an active-set method with warmstart (ASM-MPC). It is shown that the new method is of the order of 10 5 times faster than the ASM-MPC, while achieving similar and in some cases even better tracking accuracy.",
author = "Johannes Handler and Matthew Harker and Gerhard Rath and Mathias Rollett",
year = "2023",
month = jul,
day = "3",
doi = "10.23919/ACC55779.2023.10156191",
language = "English",
booktitle = "2023 American Control Conference (ACC)",
note = "American Control Conference (ACC) 2023, ACC ; Conference date: 31-05-2023 Through 02-06-2023",

}

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TY - GEN

T1 - Noniterative Model Predictive Control with Soft Input Constraints for Real-Time Trajectory Tracking

AU - Handler, Johannes

AU - Harker, Matthew

AU - Rath, Gerhard

AU - Rollett, Mathias

PY - 2023/7/3

Y1 - 2023/7/3

N2 - This paper develops a new approach to soft constrained model predictive control (MPC) for real-time trajectory tracking. The presented method does not rely on solving an iterative optimization algorithm at each sampling instance. In fact, the optimal control input is directly computed via an inner product of two vectors. This enables the computation of an optimal control input in real-time rather than having to use a suboptimal solution as is the case in most current real-time MPC approaches. The computational complexity of the presented method is linear w.r.t. the prediction horizon, state and input dimension, which makes it ideal for fast sampled, large systems. The functionality of the new approach is demonstrated in a laboratory setup of an underactuated, cranelike system. Furthermore, its performance is compared with a suboptimal MPC based on an active-set method with warmstart (ASM-MPC). It is shown that the new method is of the order of 10 5 times faster than the ASM-MPC, while achieving similar and in some cases even better tracking accuracy.

AB - This paper develops a new approach to soft constrained model predictive control (MPC) for real-time trajectory tracking. The presented method does not rely on solving an iterative optimization algorithm at each sampling instance. In fact, the optimal control input is directly computed via an inner product of two vectors. This enables the computation of an optimal control input in real-time rather than having to use a suboptimal solution as is the case in most current real-time MPC approaches. The computational complexity of the presented method is linear w.r.t. the prediction horizon, state and input dimension, which makes it ideal for fast sampled, large systems. The functionality of the new approach is demonstrated in a laboratory setup of an underactuated, cranelike system. Furthermore, its performance is compared with a suboptimal MPC based on an active-set method with warmstart (ASM-MPC). It is shown that the new method is of the order of 10 5 times faster than the ASM-MPC, while achieving similar and in some cases even better tracking accuracy.

U2 - 10.23919/ACC55779.2023.10156191

DO - 10.23919/ACC55779.2023.10156191

M3 - Conference contribution

BT - 2023 American Control Conference (ACC)

T2 - American Control Conference (ACC) 2023

Y2 - 31 May 2023 through 2 June 2023

ER -