Optimal control policy synthesis for probabilistic systems from high-level specifications is increasingly often studied. One major question that is commonly faced, however, is what to do when the optimal probability of achieving the specification is not satisfactory? We address this question by viewing the specification as a soft constraint and present a synthesis framework for MDPs that encodes and automates specification revision in a trade-off for higher probability. The method uses co-safe LTL as the specification language and quantifies the revisions to the specification according to userdefined proposition costs. The framework computes a control policy that optimizes the trade-off between the probability of satisfaction and the cost o...
In this paper, we focus on formal synthesis of control policies for finite Markov decision processes...
Often one has a preference order among the different systems that satisfy a given specification. Und...
In this paper, we develop a method to automatically generate a control policy for a dynamical system...
Optimal control policy synthesis for probabilistic systems from high-level specifications is increas...
Abstract—We consider synthesis of controllers that maximize the probability of satisfying given temp...
Abstract — We propose a human-supervised control synthesis method for a stochastic Dubins vehicle su...
Abstract—We consider synthesis of control policies that maxi-mize the probability of satisfying give...
This letter studies formal synthesis of control policies for continuous-state MDPs. In the quest to ...
The traditional synthesis question given a specification asks for the automatic construction of a sy...
Abstract — In this paper, we develop a method to automati-cally generate a control policy for a dyna...
Abstract: We study the synthesis of robust optimal control policies for Markov decision processes wi...
We propose a human-supervised control synthesis method for a stochastic Dubins vehicle such that the...
Reactive synthesis algorithms allow automatic construction of policies to control an environment mod...
Abstract — In this paper, we focus on formal synthesis of control policies for finite Markov decisio...
We present a new approach for synthesising Pareto- optimal Markov decision process (MDP) policies th...
In this paper, we focus on formal synthesis of control policies for finite Markov decision processes...
Often one has a preference order among the different systems that satisfy a given specification. Und...
In this paper, we develop a method to automatically generate a control policy for a dynamical system...
Optimal control policy synthesis for probabilistic systems from high-level specifications is increas...
Abstract—We consider synthesis of controllers that maximize the probability of satisfying given temp...
Abstract — We propose a human-supervised control synthesis method for a stochastic Dubins vehicle su...
Abstract—We consider synthesis of control policies that maxi-mize the probability of satisfying give...
This letter studies formal synthesis of control policies for continuous-state MDPs. In the quest to ...
The traditional synthesis question given a specification asks for the automatic construction of a sy...
Abstract — In this paper, we develop a method to automati-cally generate a control policy for a dyna...
Abstract: We study the synthesis of robust optimal control policies for Markov decision processes wi...
We propose a human-supervised control synthesis method for a stochastic Dubins vehicle such that the...
Reactive synthesis algorithms allow automatic construction of policies to control an environment mod...
Abstract — In this paper, we focus on formal synthesis of control policies for finite Markov decisio...
We present a new approach for synthesising Pareto- optimal Markov decision process (MDP) policies th...
In this paper, we focus on formal synthesis of control policies for finite Markov decision processes...
Often one has a preference order among the different systems that satisfy a given specification. Und...
In this paper, we develop a method to automatically generate a control policy for a dynamical system...