陈忠, 阴艳超, 易斌, et al. Dynamic Constrained Sampling RRT*-Connect Algorithm for Mobile Robot Path Planning[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(12): 2078-2089.
In order to solve the problems of RRT*-Connect algorithm in complex obstacle environment
such as large randomness
low search efficiency and redundant path nodes
a path planning algorithm of mobile robot based on dynamic constrained sampling RRT*-Connect algorithm is proposed. Firstly
based on RRT*-Connect algorithm
dynamic target node probability bias is used to sample the target node of the opposite search tree
so that the target of double tree extension is the node of the opposite search tree and it reduces the randomness of the double tree connection. Combined with the dynamic region sampling method of target node
the multi-stage sampling region is constructed with the target node and the node nearest to the target node as the core
and the expansion direction of the search tree is constrained to realize dynamic constrained sampling
and the local oscillation is avoided by setting a threshold. On this basis
the repulsive force idea of artificial potential field method is introduced to design the adaptive dynamic step size based on the global and local environmental complexity coefficient
which greatly improves the search efficiency. Additionally
Cantmull-Rom spline curve was used for path smoothing. The simulation results show that the algorithm has faster convergence speed
higher efficiency
more than 30% node utilization rate
significantly reduced useless nodes
less searching branches
and can adapt to various complex obstacle environments. Compared with RRT*-Connect algorithm
the running time of the proposed algorithm is reduced by more than 23%