Learning controllers from data for stabilizing dynamical systems typically follows a two step process of first identifying a model and then constructing a controller based on the identified model. However, learning models means identifying generic descriptions of the dynamics of systems, which can require large amounts of data and extracting information that are unnecessary for the specific task of stabilization. The contribution of this work is to show that if a linear dynamical system has dimension (McMillan degree) $n$, then there always exist $n$ states from which a stabilizing feedback controller can be constructed, independent of the dimension of the representation of the observed states and the number of inputs. By building on previo...
We present an extension of Willems' Fundamental Lemma to the class of multi-input multi-output discr...
In this work, we combine nonlinear system control techniques with next-generation reservoir computin...
The problem of determining the underlying dynamics of a system when only given data of its state ove...
This work introduces a data-driven control approach for stabilizing high-dimensional dynamical syste...
In this paper, we study the statistical difficulty of learning to control linear systems. We focus o...
In this work, we study model-based reinforcement learning (RL) in unknown stabilizable linear dynami...
A fundamental concept in control theory is that of controllability, where any system state can be re...
In this paper, we directly design a state feedback controller that stabilizes a class of uncertain n...
We consider the problem of learning the dynamics of autonomous linear systems (i.e., systems that ar...
In a recent paper, we have shown how to learn controllers for unknown linear systems using finite le...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 1999.In...
In this note, we explore a middle ground between data-driven model reduction and data-driven control...
We consider norms which assess transient behavior of stable LTI systems. Minimizing such a norm in c...
Despite the remarkable success of machine learning in various domains in recent years, our understan...
This thesis reports on my research in data-driven control, addressing the problem of data-driven sta...
We present an extension of Willems' Fundamental Lemma to the class of multi-input multi-output discr...
In this work, we combine nonlinear system control techniques with next-generation reservoir computin...
The problem of determining the underlying dynamics of a system when only given data of its state ove...
This work introduces a data-driven control approach for stabilizing high-dimensional dynamical syste...
In this paper, we study the statistical difficulty of learning to control linear systems. We focus o...
In this work, we study model-based reinforcement learning (RL) in unknown stabilizable linear dynami...
A fundamental concept in control theory is that of controllability, where any system state can be re...
In this paper, we directly design a state feedback controller that stabilizes a class of uncertain n...
We consider the problem of learning the dynamics of autonomous linear systems (i.e., systems that ar...
In a recent paper, we have shown how to learn controllers for unknown linear systems using finite le...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 1999.In...
In this note, we explore a middle ground between data-driven model reduction and data-driven control...
We consider norms which assess transient behavior of stable LTI systems. Minimizing such a norm in c...
Despite the remarkable success of machine learning in various domains in recent years, our understan...
This thesis reports on my research in data-driven control, addressing the problem of data-driven sta...
We present an extension of Willems' Fundamental Lemma to the class of multi-input multi-output discr...
In this work, we combine nonlinear system control techniques with next-generation reservoir computin...
The problem of determining the underlying dynamics of a system when only given data of its state ove...