We present a novel modelling and planning approach for multi-robot systems under uncertain travel times. The approach uses generalised stochastic Petri nets (GSPNs) to model desired team behaviour, and allows to specify safety constraints and rewards. The GSPN is interpreted as a Markov decision process (MDP) for which we can generate policies that optimise the requirements. This representation is more compact than the equivalent multi-agent MDP, allowing us to scale better. Furthermore, it naturally allows for asynchronous execution of the generated policies across the robots, yielding smoother team behaviour. We also describe how the integration of the GSPN with a lower-level team controller allows for accurate expectations on team perfor...
Robot applications are increasingly based on teams of robots that collaborate to perform a desired m...
Markov Decision Processes (MDPs) provide an extensive theoretical background for problems of decisio...
International audienceIn human-robot collaboration, the objectives of the human are often unknown to...
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...
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...
This paper presents an approach for multi-robot long-term planning under uncertainty over the durati...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
When planning for multi-robot navigation tasks under uncertainty, plans should prevent robots from c...
Research in recent years has made it increasingly plausible to deploy a large number of service robo...
International audienceCoordination is required in order to solve a multi robot navigation problem an...
International audienceWe consider in this paper a multi-robot planning system where robots realize a...
Robots are becoming more of a part of our daily lives. They have become an extension of some our hum...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
Robot applications are increasingly based on teams of robots that collaborate to perform a desired m...
Markov Decision Processes (MDPs) provide an extensive theoretical background for problems of decisio...
International audienceIn human-robot collaboration, the objectives of the human are often unknown to...
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...
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...
This paper presents an approach for multi-robot long-term planning under uncertainty over the durati...
We propose novel techniques for task allocation and planning in multi-robot systems operating in unc...
When planning for multi-robot navigation tasks under uncertainty, plans should prevent robots from c...
Research in recent years has made it increasingly plausible to deploy a large number of service robo...
International audienceCoordination is required in order to solve a multi robot navigation problem an...
International audienceWe consider in this paper a multi-robot planning system where robots realize a...
Robots are becoming more of a part of our daily lives. They have become an extension of some our hum...
This paper presents a probabilistic framework for synthesizing control policies for general multi-ro...
Robot applications are increasingly based on teams of robots that collaborate to perform a desired m...
Markov Decision Processes (MDPs) provide an extensive theoretical background for problems of decisio...
International audienceIn human-robot collaboration, the objectives of the human are often unknown to...