Stochastic Model Predictive Control Toolbox

Stochastic model predictive control (chance-constrained and scenario based) simulator for linear systems with additive disturbances.
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Mise à jour 18 oct. 2021

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Most stochastic MPC's can be classified within two groups: In the first group are those based in analytical methods (Chance-Constrained), which solve an OCP based on the expected value of an index cost, subject to probabilistic constraints, generally in the predicted states. In the second group are those based on random scenarios (Scenario-Based), which solve an OCP for a determined number of random realizations of uncertainties also called scenarios.
The files contain a basic Stochastic predictive control simulators for multivariable linear systems with additive disturbances. The disturbances have a Gaussian probability distribution and can be bounded. In total there are two simulators: a simulator for an MPC based on chance constraints for states; and another based on scenarios of realizations of the disturbances. In addition, for each controller there are files with examples based on a two-mass spring system implementation.
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Please, before starting to use it, read the file "readme.txt"
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Author: Edwin Alonso González Querubín
https://www.researchgate.net/profile/Edwin_Gonzalez_Querubin
https://es.mathworks.com/matlabcentral/profile/authors/15149689
Research Group: Predictive Control and Heuristic Optimization (CPOH)
http://cpoh.upv.es
Unversity: Universidad Politécnica de Valencia
http://www.upv.es
For more details about the stochastic predictive control algorithms implemented here, please consult the article associated with this toolbox:
https://www.mdpi.com/2079-9292/9/12/2078

Citation pour cette source

Edwin Alonso González Querubín (2024). Stochastic Model Predictive Control Toolbox (https://www.mathworks.com/matlabcentral/fileexchange/75803-stochastic-model-predictive-control-toolbox), MATLAB Central File Exchange. Récupéré le .

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Créé avec R2020a
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Version Publié le Notes de version
1.0.8

Updated for probabilistic constraints for MPC with state feedback inputs.

1.0.7

Description changes

1.0.6

Description changes

1.0.5

- Updated for use in multivariate systems.
- Changes in description.

1.0.4

just a modification in the title.

1.0.3

only changes in the post description

1.0.2

Just an update to the image of this post.

1.0.1

Only changes to the image of the publication.

1.0.0