A major task in motion planning is to find paths that have a high ability to react to external influences while ensuring a collision-free operation at any time. This flexibility is even more important in human-robot collaboration since unforeseen events can occur anytime. Such ability can be described as mobility, which is composed of two characteristics. First, the ability to manipulate, and second, the distance to joint limits. This mobility needs to be optimized while generating collision-free motions so that there is always the flexibility of the robot to evade dynamic obstacles in the future execution of generated paths. For this purpose, we present a Rapidly-exploring Random Tree (RRT), which applies additional costs and sampling methods to increase mobility. Additionally, we present two methods for the optimization of a generated path. Our first approach utilizes the built-in capabilities of the RRT*. The second method optimize the path with the stochastic trajectory optimization for motion planning (STOMP) approach with Gaussian Mixture Models. Moreover, we evaluate the algorithms in complex simulation and real environments and demonstrate an enhancement of mobility.
[1]
Jong-Hwan Kim,et al.
RRT*-Quick: A Motion Planning Algorithm with Faster Convergence Rate
,
2014,
RiTA.
[2]
Byron Boots,et al.
Continuous-time Gaussian process motion planning via probabilistic inference
,
2017,
Int. J. Robotics Res..
[3]
Tamim Asfour,et al.
Representing the robot’s workspace through constrained manipulability analysis
,
2015,
Auton. Robots.
[4]
Tsuneo Yoshikawa,et al.
Manipulability of Robotic Mechanisms
,
1985
.
[5]
Estela Bicho,et al.
Position-based kinematics for 7-DoF serial manipulators with global configuration control, joint limit and singularity avoidance
,
2018
.
[6]
Emilio Frazzoli,et al.
RRTX: Asymptotically optimal single-query sampling-based motion planning with quick replanning
,
2016,
Int. J. Robotics Res..
[7]
Emilio Frazzoli,et al.
Sampling-based algorithms for optimal motion planning
,
2011,
Int. J. Robotics Res..