DocumentCode :
41975
Title :
High-Frequency Replanning Under Uncertainty Using Parallel Sampling-Based Motion Planning
Author :
Wen Sun ; Patil, Sachin ; Alterovitz, Ron
Author_Institution :
Robot. Inst., Carnegie Mellon Univ., Pittsburgh, PA, USA
Volume :
31
Issue :
1
fYear :
2015
fDate :
Feb. 2015
Firstpage :
104
Lastpage :
116
Abstract :
As sampling-based motion planners become faster, they can be reexecuted more frequently by a robot during task execution to react to uncertainty in robot motion, obstacle motion, sensing noise, and uncertainty in the robot´s kinematic model. We investigate and analyze high-frequency replanning (HFR) where, during each period, fast sampling-based motion planners are executed in parallel as the robot simultaneously executes the first action of the best motion plan from the previous period. We consider discrete-time systems with stochastic nonlinear (but linearizable) dynamics and observation models with noise drawn from zero mean Gaussian distributions. The objective is to maximize the probability of success (i.e., avoid collision with obstacles and reach the goal) or to minimize path length subject to a lower bound on the probability of success. We show that, as parallel computation power increases, HFR offers asymptotic optimality for these objectives during each period for goal-oriented problems. We then demonstrate the effectiveness of HFR for holonomic and nonholonomic robots including car-like vehicles and steerable medical needles.
Keywords :
Gaussian distribution; collision avoidance; discrete time systems; manipulator kinematics; stochastic systems; uncertain systems; HFR; articulated manipulators; discrete-time systems; goal-oriented problems; high-frequency replanning; holonomic robots; nonholonomic robots; observation models; obstacle motion; parallel sampling-based motion planning; robot kinematic model uncertainty; robot motion; sampling-based motion planners; sensing noise; stochastic nonlinear dynamics; task execution; zero mean Gaussian distributions; Dynamics; Gaussian distribution; Planning; Robot sensing systems; Uncertainty; Motion and path planning; motion planning under uncertainty; sampling-based methods;
fLanguage :
English
Journal_Title :
Robotics, IEEE Transactions on
Publisher :
ieee
ISSN :
1552-3098
Type :
jour
DOI :
10.1109/TRO.2014.2380273
Filename :
7027233
Link To Document :
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