Title :
Health aware stochastic planning for persistent package delivery missions using quadrotors
Author :
Agha-Mohammadi, Ali-Akbar ; Ure, N. Kemal ; How, Jonathan P. ; Vian, John
Author_Institution :
Lab. for Inf. & Decision Syst., Massachusetts Inst. of Technol., Cambridge, MA, USA
Abstract :
In persistent missions, taking system´s health and capability degradation into account is an essential factor to predict and avoid failures. The state space in health-aware planning problems is often a mixture of continuous vehicle-level and discrete mission-level states. This in particular poses a challenge when the mission domain is partially observable and restricts the use of computationally expensive forward search methods. This paper presents a method that exploits a structure that exists in many health-aware planning problems and performs a two-layer planning scheme. The lower layer exploits the local linearization and Gaussian distribution assumption over vehicle-level states while the higher layer maintains a non-Gaussian distribution over discrete mission-level variables. This two-layer planning scheme allows us to limit the expensive online forward search to the mission-level states, and thus predict system´s behavior over longer horizons in the future. We demonstrate the performance of the method on a long duration package delivery mission using a quadrotor in a partially-observable domain in the presence of constraints and health/capability degradation.
Keywords :
Gaussian distribution; autonomous aerial vehicles; continuous time systems; discrete time systems; helicopters; linearisation techniques; path planning; service robots; stochastic processes; Gaussian distribution assumption; computationally-expensive online forward search methods; continuous vehicle-level states; discrete mission-level states; failure avoidance; failure prediction; health aware stochastic planning; local linearization; long-duration package delivery mission; lower layer; nonGaussian distribution; partially-observable mission domain; persistent package delivery missions; quadrotors; state space; system behavior prediction; system capability degradation; system health degradation; two-layer planning scheme; Aerospace electronics; Batteries; Heuristic algorithms; Planning; Space missions; Vehicle dynamics; Vehicles;
Conference_Titel :
Intelligent Robots and Systems (IROS 2014), 2014 IEEE/RSJ International Conference on
Conference_Location :
Chicago, IL
DOI :
10.1109/IROS.2014.6943034