Online Planning in Uncertain and Dynamic Environment in the Presence of
Multiple Mobile Vehicles
- URL: http://arxiv.org/abs/2009.03733v1
- Date: Tue, 8 Sep 2020 13:27:57 GMT
- Title: Online Planning in Uncertain and Dynamic Environment in the Presence of
Multiple Mobile Vehicles
- Authors: Junhong Xu, Kai Yin, Lantao Liu
- Abstract summary: We investigate the autonomous navigation of a mobile robot in the presence of other moving vehicles under time-varying uncertain environmental disturbances.
We first predict the future state distributions of other vehicles to account for their uncertain behaviors affected by the time-varying disturbances.
We then construct a dynamic-obstacle-aware reachable space that contains states with high probabilities to be reached by the robot.
- Score: 5.894659354028797
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We investigate the autonomous navigation of a mobile robot in the presence of
other moving vehicles under time-varying uncertain environmental disturbances.
We first predict the future state distributions of other vehicles to account
for their uncertain behaviors affected by the time-varying disturbances. We
then construct a dynamic-obstacle-aware reachable space that contains states
with high probabilities to be reached by the robot, within which the optimal
policy is searched. Since, in general, the dynamics of both the vehicle and the
environmental disturbances are nonlinear, we utilize a nonlinear Gaussian
filter -- the unscented transform -- to approximate the future state
distributions. Finally, the forward reachable space computation and backward
policy search are iterated until convergence. Extensive simulation evaluations
have revealed significant advantages of this proposed method in terms of
computation time, decision accuracy, and planning reliability.
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