DocumentCode :
82670
Title :
Predictive and Multirate Sensor-Based Planning Under Uncertainty
Author :
Mora, Marta C. ; Tornero, Josep
Author_Institution :
Dept. of Mech. Eng. & Constr., Univ. Jaume I, Castello de la Plana, Spain
Volume :
16
Issue :
3
fYear :
2015
fDate :
Jun-15
Firstpage :
1493
Lastpage :
1504
Abstract :
In this paper, a general formulation of a predictive and multirate (MR) reactive planning method for intelligent vehicles (IVs) is introduced. The method handles path planning and trajectory planning for IVs in dynamic environments with uncertainty, in which the kinodynamic vehicle constraints are also taken into account. It is based on the potential field projection method (PFP), which combines the classical potential field (PF) method with the MR Kalman filter estimation. PFP takes into account the future object trajectories and their associated uncertainties, which makes it different from other look-ahead approaches. Here, a new PF is included in the Lagrange-Euler formulation in a natural way, accounting for the vehicle dynamics. The resulting accelerations are translated into control inputs that are considered in the estimation process. This leads to the generation of a local trajectory in real time (RT) that fully meets the constraints imposed by the kinematic and dynamic models of the IV. The properties of the method are demonstrated by simulation with MATLAB and C++ applications. Very good performance and execution times are achieved, even in challenging situations. In a scenario with 100 obstacles, a local trajectory is obtained in less than 1 s, which is suitable for RT applications.
Keywords :
C++ language; Kalman filters; intelligent transportation systems; mathematics computing; path planning; planning; sensors; vehicle dynamics; C++ applications; IV dynamic model; IV kinematic model; Lagrange-Euler formulation; MATLAB; MR Kalman filter estimation; MR reactive planning method; PF method; PFP; RT; dynamic environments; intelligent vehicles; kinodynamic vehicle constraints; local trajectory; look-ahead approach; multirate sensor-based planning; object trajectories; path planning; potential field projection method; predictive planning; real time; trajectory planning; uncertainty; vehicle dynamics; Ellipsoids; Planning; Robot sensing systems; Trajectory; Uncertainty; Vehicle dynamics; Vehicles; Dynamics; Kalman filter; intelligent vehicles (IVs); potential fields (PFs); sensor-based planning; trajectory prediction; uncertainty;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2014.2366974
Filename :
6979224
Link To Document :
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