We consider optimal information acquisition for the control of linear discrete-time random systems with noisy observations and apply the findings to the problem of dynamically implementing emissions-reduction targets. The optimal policy, which is provided in closed form, depends on a single composite parameter which determines the criticality of the system. For subcritical systems, it is optimal to perform “noise-leveling,” that is, to reduce the variance of the uncertainty to an optimal level and keep it constant by a steady feed of information updates. For critical systems, the optimal policy is “noise attenuation,” that is, to substantially decrease the variance once and never acquire information thereafter. Finally for supercritical sys...
Abstract—This paper examines stochastic optimal control problems in which the state is perfectly kno...
In this paper, we study a constrained optimal control on pollution accumulation where the dynamic sy...
137 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.Several new optimal estimatio...
We consider optimal information acquisition for the control of linear discrete-time random systems w...
This paper discusses the con trot of nonlinear stochastic systems and, in particular, linear systems...
This piece is a follow-up of the research started by the authors on the constrained optimal control ...
This thesis poses a general model for optimal control subject to information constraint, motivated i...
We consider an ecosystem with two distinct equations of motion that are separated by a threshold val...
This dissertation concerns fundamental performance limitation in control of nonlinear systems. It co...
The problem of optimization of stochastic dynamic systems with random coefficients is discussed. Sys...
The design of optimal dynamic disturbance accommodation controller with limited model information is...
We apply a computational framework for specifying and solving sequential decision problems to study...
This paper formally introduces the concept of mitigation as a stochastic control problem. This is il...
We study a dynamic model of information provision. A state of nature evolves according to a Markov c...
We consider some problems of optimal control with discrete time where some parameters are fixed but ...
Abstract—This paper examines stochastic optimal control problems in which the state is perfectly kno...
In this paper, we study a constrained optimal control on pollution accumulation where the dynamic sy...
137 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.Several new optimal estimatio...
We consider optimal information acquisition for the control of linear discrete-time random systems w...
This paper discusses the con trot of nonlinear stochastic systems and, in particular, linear systems...
This piece is a follow-up of the research started by the authors on the constrained optimal control ...
This thesis poses a general model for optimal control subject to information constraint, motivated i...
We consider an ecosystem with two distinct equations of motion that are separated by a threshold val...
This dissertation concerns fundamental performance limitation in control of nonlinear systems. It co...
The problem of optimization of stochastic dynamic systems with random coefficients is discussed. Sys...
The design of optimal dynamic disturbance accommodation controller with limited model information is...
We apply a computational framework for specifying and solving sequential decision problems to study...
This paper formally introduces the concept of mitigation as a stochastic control problem. This is il...
We study a dynamic model of information provision. A state of nature evolves according to a Markov c...
We consider some problems of optimal control with discrete time where some parameters are fixed but ...
Abstract—This paper examines stochastic optimal control problems in which the state is perfectly kno...
In this paper, we study a constrained optimal control on pollution accumulation where the dynamic sy...
137 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.Several new optimal estimatio...