We address the problem of steering the state of a linear stochastic system to a prescribed distribution over a finite horizon with minimum energy, and the problem to maintain the state at a stationary distribution over an infinite horizon with minimum power. For both problems the control and Gaussian noise channels are allowed to be distinct, thereby, placing the results of this paper outside of the scope of previous work both in probability and in control. The special case where the disturbance and control enter through the same channels has been addressed in the first part of this work that was presented as Part I. Herein, we present sufficient conditions for optimality in terms of a system of dynamically coupled Riccati equations in the ...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussia...
We address the problem of steering the state of a linear stochastic system to a prescribed distribut...
We address the problem of steering the state of a linear stochastic system to a prescribed distribut...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
The subject of this work has its roots in the so-called Schrödginer bridge problem (SBP) which asks ...
The subject of this work has its roots in the so called Schroedginer Bridge Problem (SBP) which asks...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussia...
We address the problem of steering the state of a linear stochastic system to a prescribed distribut...
We address the problem of steering the state of a linear stochastic system to a prescribed distribut...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider the problem of steering a linear dynamical system with complete state observation from a...
We consider a variant of the classical linear quadratic Gaussian regulator (LQG) in which penalties ...
The subject of this work has its roots in the so-called Schrödginer bridge problem (SBP) which asks ...
The subject of this work has its roots in the so called Schroedginer Bridge Problem (SBP) which asks...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussian...
Consider a linear stochastic system whose initial state is a random vector with a specified Gaussia...