The robust execution of a temporal plan in a perturbed environment is a problem that remains to be solved. Perturbed environments, such as the real world, are non-deterministic and filled with uncertainty. Hence, the execution of a temporal plan presents several challenges and the employed solution often consists of replanning when the execution fails. In this paper, we propose a novel algorithm, named Olisipo, which aims to maximise the probability of a successful execution of a temporal plan in perturbed environments. To achieve this, a probabilistic model is used in the execution of the plan, instead of in the building of the plan. This approach enables Olisipo to dynamically adapt the plan to changes in the environment. In addition to t...
Algorithms for planning under uncertainty require accurate action models that explicitly cap-ture th...
The final publication is available at link.springer.comProbabilistic planning is very useful for han...
In planning for deliberation or navigation in real-world robotic systems, one of the big challenges ...
The robust execution of a temporal plan in a perturbed environment is a problem that remains to be s...
A critical challenge in temporal planning is robustly dealing with non-determinism, e.g., the durati...
A critical challenge in temporal planning is robustly dealing with non-determinism introduced by the...
In order to ensure the robust execution of a deterministic plan, execution must be adaptable to unex...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
In order to ensure the robust actuation of a plan, execution must be adaptable to unexpected situati...
Dynamic plan execution strategies allow an autonomous agent to respond to uncertainties, while impro...
Due to the high complexity of probabilistic planning algorithms, roboticists often opt for determini...
Flexibility in agent scheduling increases the resilience of temporal plans in the face of new constr...
Algorithms for planning under uncertainty require accurate action models that explicitly capture the...
In temporally uncertain domains, taking uncertainty into account while planning leads to problems wi...
Automated plan generation and execution is an essential component of most autonomous agents. An agen...
Algorithms for planning under uncertainty require accurate action models that explicitly cap-ture th...
The final publication is available at link.springer.comProbabilistic planning is very useful for han...
In planning for deliberation or navigation in real-world robotic systems, one of the big challenges ...
The robust execution of a temporal plan in a perturbed environment is a problem that remains to be s...
A critical challenge in temporal planning is robustly dealing with non-determinism, e.g., the durati...
A critical challenge in temporal planning is robustly dealing with non-determinism introduced by the...
In order to ensure the robust execution of a deterministic plan, execution must be adaptable to unex...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
In order to ensure the robust actuation of a plan, execution must be adaptable to unexpected situati...
Dynamic plan execution strategies allow an autonomous agent to respond to uncertainties, while impro...
Due to the high complexity of probabilistic planning algorithms, roboticists often opt for determini...
Flexibility in agent scheduling increases the resilience of temporal plans in the face of new constr...
Algorithms for planning under uncertainty require accurate action models that explicitly capture the...
In temporally uncertain domains, taking uncertainty into account while planning leads to problems wi...
Automated plan generation and execution is an essential component of most autonomous agents. An agen...
Algorithms for planning under uncertainty require accurate action models that explicitly cap-ture th...
The final publication is available at link.springer.comProbabilistic planning is very useful for han...
In planning for deliberation or navigation in real-world robotic systems, one of the big challenges ...