International audienceBayesian Networks (BN) are probabilistic models that are commonly used for the diagnosis in numerous domains (medicine, finance, transport, robotics, …). In the case of autonomous vehicles, they can contribute to elaborate intelligent monitors that can take the environmental context into account. We show in this paper some main abilities of BN that can help in the elaboration of fault detection isolation and recovery (FDIR) modules. One of the main difficulty with the BN model is generally to elaborate these ones according to the case of study. Then, we propose some automatic generation techniques from failure mode and effects analysis (FMEA)-like tables using the pattern design approach. Once defined, these modules ha...
We present the main elements of a distributed architecture supporting diagnosis and control of auton...
International audienceAutonomous Unmanned Aerial Vehicles (UAVs) operate under uncertain environment...
Making decisions under uncertainty is a common challenge in numerous application domains, such as au...
International audienceBayesian Networks (BN) are probabilistic models that are commonly used for the...
UAVs must continuously adapt their mission to face unexpected internal or external hazards. This pap...
International audienceUAVs must continuously adapt their mission to face unexpected internal or exte...
Autonomous vehicles, such as drones, are used in different application areas to perform simple or co...
This article reviews the applications of Bayesian Networks to Intelligent Autonomous Vehicles (IAV) ...
Les véhicules autonomes, tels que les drones, sont utilisés dans différents domaines d'application p...
International audienceThis paper presents a scalable approach to model uncertainties within a UAV (U...
This paper describes how to exploit the modeling features and inference capabilities of dynamic Baye...
International audienceMobile networked robots are distributed systems controlled by a distant statio...
AbstractSafety Assessment (SA) is a well-established process for assuring the safety and reliability...
Safety Assessment (SA) is a well-established process for assuring the safety and reliability of crit...
We present the main elements of a distributed architecture supporting diagnosis and control of auton...
International audienceAutonomous Unmanned Aerial Vehicles (UAVs) operate under uncertain environment...
Making decisions under uncertainty is a common challenge in numerous application domains, such as au...
International audienceBayesian Networks (BN) are probabilistic models that are commonly used for the...
UAVs must continuously adapt their mission to face unexpected internal or external hazards. This pap...
International audienceUAVs must continuously adapt their mission to face unexpected internal or exte...
Autonomous vehicles, such as drones, are used in different application areas to perform simple or co...
This article reviews the applications of Bayesian Networks to Intelligent Autonomous Vehicles (IAV) ...
Les véhicules autonomes, tels que les drones, sont utilisés dans différents domaines d'application p...
International audienceThis paper presents a scalable approach to model uncertainties within a UAV (U...
This paper describes how to exploit the modeling features and inference capabilities of dynamic Baye...
International audienceMobile networked robots are distributed systems controlled by a distant statio...
AbstractSafety Assessment (SA) is a well-established process for assuring the safety and reliability...
Safety Assessment (SA) is a well-established process for assuring the safety and reliability of crit...
We present the main elements of a distributed architecture supporting diagnosis and control of auton...
International audienceAutonomous Unmanned Aerial Vehicles (UAVs) operate under uncertain environment...
Making decisions under uncertainty is a common challenge in numerous application domains, such as au...