RT - Journal Article
T1 - Linear Time Varying MPC Based Path Planning of an Autonomous Vehicle via Convex Optimization
JF - jiaeee
YR - 2018
JO - jiaeee
VO - 14
IS - 4
UR - http://jiaeee.com/article-1-463-fa.html
SP - 79
EP - 88
K1 - Stochastic Path Planning
K1 - Path Planning Under Uncertainty
K1 - Linear Time-Varying MPC
K1 - Quadratic Programming
K1 - Error Ellipse
K1 - Convex Optimization.
AB - In this paper a new method is introduced for path planning of an autonomous vehicle. In this method, the environment is considered cluttered and with some uncertainty sources. Thus, the state of detected object should be estimated using an optimal filter. To do so, the state distribution is assumed Gaussian. Thus the state vector is estimated by a Kalman filter at each time step. The estimation of the probabilistic distribution can be shown using an error ellipse for a constant collision probability. Analytical forms of error ellipses can be obtained by quadratic inequalities. These quadratic inequalities make the optimization problem nonconvex. Thus, these inequalities are relaxed by applying a linearization approach. Finally, the optimization problem is reformulated to a convex optimization problem. There are some strong algorithms for solving a convex optimization problem, so the consequent path planning method can be solved efficiently with considerable performance that will be obtained in the end of this paper.
LA eng
UL http://jiaeee.com/article-1-463-fa.html
M3
ER -