This paper presents a novel method to synthesize stochastic control Lyapunov functions for a class of nonlinear, stochastic control systems. In this work, the classical nonlinear Hamilton-Jacobi-Bellman partial differential equation is transformed into a linear partial differential equation for a class of systems with a particular constraint on the stochastic disturbance. It is shown that this linear partial differential equation can be relaxed to a linear differential inclusion, allowing for approximating polynomial solutions to be generated using sum of squares programming. It is shown that the resulting solutions are stochastic control Lyapunov functions with a number of compelling properties. In particular, a-priori bounds on trajectory...
We prove optimality principles for semicontinuous bounded viscosity solutions of Hamilton-Jacobi-Bel...
This paper presents ConVex optimization-based Stochastic steady-state Tracking Error Minimization (C...
International audienceWe present two applications of the linearization techniques in stochastic opti...
This paper presents a novel method to synthesize stochastic control Lyapunov functions for a class o...
This paper presents a new method for synthesizing stochastic control Lyapunov functions for a class ...
This paper presents a new method for synthesizing stochastic control Lyapunov functions for a class ...
Abstract — This work presents a novel method for synthesiz-ing optimal Control Lyapunov functions fo...
Recent results in the study of the Hamilton Jacobi Bellman (HJB) equation have led to the discovery ...
Motivated by the need for formal guarantees on the stability and safety of controllers for challengi...
We prove optimality principles for semicontinuous bounded viscosity solutions of Hamilton-Jacobi-Bel...
We present a method for solving the Hamilton-Jacobi-Bellman (HJB) equation for a stochastic system w...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/57832/1/BernsteinNonquadraticCost1993.p...
In this paper, a new nonlinear control synthesis technique (θ - D approximation) is presented. This ...
The policy of an optimal control problem for nonlinear stochastic systems can be characterized by a ...
Optimal controller synthesis is a challenging problem to solve. However, in many applications such a...
We prove optimality principles for semicontinuous bounded viscosity solutions of Hamilton-Jacobi-Bel...
This paper presents ConVex optimization-based Stochastic steady-state Tracking Error Minimization (C...
International audienceWe present two applications of the linearization techniques in stochastic opti...
This paper presents a novel method to synthesize stochastic control Lyapunov functions for a class o...
This paper presents a new method for synthesizing stochastic control Lyapunov functions for a class ...
This paper presents a new method for synthesizing stochastic control Lyapunov functions for a class ...
Abstract — This work presents a novel method for synthesiz-ing optimal Control Lyapunov functions fo...
Recent results in the study of the Hamilton Jacobi Bellman (HJB) equation have led to the discovery ...
Motivated by the need for formal guarantees on the stability and safety of controllers for challengi...
We prove optimality principles for semicontinuous bounded viscosity solutions of Hamilton-Jacobi-Bel...
We present a method for solving the Hamilton-Jacobi-Bellman (HJB) equation for a stochastic system w...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/57832/1/BernsteinNonquadraticCost1993.p...
In this paper, a new nonlinear control synthesis technique (θ - D approximation) is presented. This ...
The policy of an optimal control problem for nonlinear stochastic systems can be characterized by a ...
Optimal controller synthesis is a challenging problem to solve. However, in many applications such a...
We prove optimality principles for semicontinuous bounded viscosity solutions of Hamilton-Jacobi-Bel...
This paper presents ConVex optimization-based Stochastic steady-state Tracking Error Minimization (C...
International audienceWe present two applications of the linearization techniques in stochastic opti...