This paper presents an approach for multi-robot long-term planning under uncertainty over the duration of actions. The proposed methodology takes advantage of generalized stochastic Petri nets with rewards (GSPNR) to model multi-robot problems. A GSPNR allows for unified modeling of action selection, uncertainty on the duration of action execution, and for goal specification through the use of transition rewards and rewards per time unit. Our approach relies on the interpretation of the GSPNR model as an equivalent embedded Markov reward automaton (MRA). We then build on a state-of-the-art method to compute the long-run average reward over MRAs, extending it to enable the extraction of the optimal policy. We provide an empirical evaluation ...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
International audienceMost of works on planning under uncertainty in AI assumes rather simple action...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...
This paper presents a multi-robot long-term planning approach under uncertainty on the duration of t...
Currently, there is a lack of developer-friendly software tools to formally address multi-robot coor...
We present a novel modelling and planning approach for multi-robot systems under uncertain travel ti...
We present a novel modelling and planning approach for multi-robot systems under uncertain travel ti...
Sources of temporal uncertainty affect the duration and start time of robot actions during execution...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
AbstractStochastic Petri Nets have been developed to model and analyze systems involving concurrent ...
Markov Decision Processes (MDPs) provide an extensive theoretical background for problems of decisio...
Formal models of multi-robot behaviour are fundamental to planning, simulation, and model checking t...
International audienceWe consider in this paper a multi-robot planning system where robots realize a...
An interesting class of planning domains, including planning for daily activities of Mars rovers, in...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
International audienceMost of works on planning under uncertainty in AI assumes rather simple action...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...
This paper presents a multi-robot long-term planning approach under uncertainty on the duration of t...
Currently, there is a lack of developer-friendly software tools to formally address multi-robot coor...
We present a novel modelling and planning approach for multi-robot systems under uncertain travel ti...
We present a novel modelling and planning approach for multi-robot systems under uncertain travel ti...
Sources of temporal uncertainty affect the duration and start time of robot actions during execution...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
AbstractStochastic Petri Nets have been developed to model and analyze systems involving concurrent ...
Markov Decision Processes (MDPs) provide an extensive theoretical background for problems of decisio...
Formal models of multi-robot behaviour are fundamental to planning, simulation, and model checking t...
International audienceWe consider in this paper a multi-robot planning system where robots realize a...
An interesting class of planning domains, including planning for daily activities of Mars rovers, in...
We describe a probabilistic framework for synthesizing con-trol policies for general multi-robot sys...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
International audienceMost of works on planning under uncertainty in AI assumes rather simple action...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...