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Lasso-MPC – Predictive Control with ℓ1-Regularised Least Squares

Authors :
Marco Gallieri
Marco Gallieri
Publication Year :
2016

Abstract

This thesis proposes a novel Model Predictive Control (MPC) strategy, which modifies the usual MPC cost function in order to achieve a desirable sparse actuation. It features an ℓ1-regularised least squares loss function, in which the control error variance competes with the sum of input channels magnitude (or slew rate) over the whole horizon length. While standard control techniques lead to continuous movements of all actuators, this approach enables a selected subset of actuators to be used, the others being brought into play in exceptional circumstances. The same approach can also be used to obtain asynchronous actuator interventions, so that control actions are only taken in response to large disturbances. This thesis presents a straightforward and systematic approach to achieving these practical properties, which are ignored by mainstream control theory.

Subjects

Subjects :
Least squares
Predictive control

Details

Language :
English
ISBNs :
9783319279619 and 9783319279633
Database :
eBook Index
Journal :
Lasso-MPC – Predictive Control with ℓ1-Regularised Least Squares
Publication Type :
eBook
Accession number :
1175309