Model-based Control using Koopman Operators
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Updated
Jun 13, 2020 - Jupyter Notebook
Model-based Control using Koopman Operators
This repository provides code in R reproducing examples of the states space models presented in book "An Introduction to State Space Time Series Analysis" by J.J.F. Commandeur and S.J. Koopman.
Modred main repository
Welcome the repo for Ishana Koopman
a little library to help me with things involving Koopman operators
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