We present a method for designing a robust control policy for an uncertain system subject to temporal logic specifications. The system is modeled as a finite Markov Decision Process (MDP) whose transition probabilities are not exactly known but are known to belong to a given uncertainty set. A robust control policy is generated for the MDP that maximizes the worst-case probability of satisfying the specification over all transition probabilities in this uncertainty set. To this end, we use a procedure from probabilistic model checking to combine the system model with an automaton representing the specification. This new MDP is then transformed into an equivalent form that satisfies assumptions for stochastic shortest path dynamic programmin...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
We consider the problem of synthesizing robust disturbance feedback policies for systems performing ...
Markov decision processes (MDPs) are formal models commonly used in sequential decision-making. MDPs...
We present a method for designing a robust control policy for an uncertain system subject to tempora...
We present a method for designing robust controllers for dynamical systems with linear temporal logi...
Abstract — We present a method for designing a robust control policy for an uncertain system subject...
Abstract—We consider synthesis of control policies that maxi-mize the probability of satisfying give...
Abstract—We consider synthesis of controllers that maximize the probability of satisfying given temp...
We study the synthesis of robust optimal control policies for Markov decision processes with transit...
Optimal solutions to Markov decision problems may be very sensitive with respect to the state transi...
Abstract — We consider the synthesis of control policies for probabilistic systems, modeled by Marko...
The authors consider the fundamental problem of finding good policies in uncertain models. It is dem...
The formal verification and controller synthesis for Markov decision processes that evolve over unco...
Discrete-time stochastic systems are an essential modelling tool for many engineering systems. We co...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
We consider the problem of synthesizing robust disturbance feedback policies for systems performing ...
Markov decision processes (MDPs) are formal models commonly used in sequential decision-making. MDPs...
We present a method for designing a robust control policy for an uncertain system subject to tempora...
We present a method for designing robust controllers for dynamical systems with linear temporal logi...
Abstract — We present a method for designing a robust control policy for an uncertain system subject...
Abstract—We consider synthesis of control policies that maxi-mize the probability of satisfying give...
Abstract—We consider synthesis of controllers that maximize the probability of satisfying given temp...
We study the synthesis of robust optimal control policies for Markov decision processes with transit...
Optimal solutions to Markov decision problems may be very sensitive with respect to the state transi...
Abstract — We consider the synthesis of control policies for probabilistic systems, modeled by Marko...
The authors consider the fundamental problem of finding good policies in uncertain models. It is dem...
The formal verification and controller synthesis for Markov decision processes that evolve over unco...
Discrete-time stochastic systems are an essential modelling tool for many engineering systems. We co...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
The authors consider the fundamental problem of nding good poli-cies in uncertain models. It is demo...
We consider the problem of synthesizing robust disturbance feedback policies for systems performing ...
Markov decision processes (MDPs) are formal models commonly used in sequential decision-making. MDPs...