Title: How to convert finite step response model to state space representation? · Issue #1002 · python-control/python-control · GitHub
Open Graph Title: How to convert finite step response model to state space representation? · Issue #1002 · python-control/python-control
X Title: How to convert finite step response model to state space representation? · Issue #1002 · python-control/python-control
Description: I have some simulation data for a discrete LTI system which are provided as unit step response models between the 5 inputs (rows) and 12 outputs (columns). I'd like to convert the model to a state space representation in python-control b...
Open Graph Description: I have some simulation data for a discrete LTI system which are provided as unit step response models between the 5 inputs (rows) and 12 outputs (columns). I'd like to convert the model to a state ...
X Description: I have some simulation data for a discrete LTI system which are provided as unit step response models between the 5 inputs (rows) and 12 outputs (columns). I'd like to convert the model to a st...
Opengraph URL: https://github.com/python-control/python-control/issues/1002
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Domain: github.com
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