An Efficient Linear Programming-Based Time-Optimal Feedrate Planning Considering Kinematic and Dynamics Constraints of Robots
Guanghui Liu, Qiang Li, Bohan Yang, Hualiang Zhang, Lijin Fang
Abstract
This letter investigates the time-optimal trajectory generation for a six-degrees-of-freedom articulated robot mov- ing along a given parametric path. In the generation procedure, besides the velocity, acceleration, and joint torque, the jerk is also constrained to enhance the smoothness of the robot’s motion. Meanwhile, the trajectory generation is formulated as a convex optimization problem with a nonlinear objective function and con- straints. Then, the problem is solved with a typical linear program- ming (LP) approach by discretizing the continuous path into many sampling points. Specifically, the time-optimal problem is formu- lated as maximizing the sum of the velocities at all discrete points instead of minimizing time. Moreover, the time-optimal trajectory generation with nonlinear jerk constraints is decoupled into two sub-LP problems, and the solution of the first sub-LP is employed to scale the nonlinear constraints. Finally, the proposed method is verified through robotic experiments. The results indicate that the smoothness of the generated trajectory improves significantly. Also, the trajectory planning accuracy and computational efficiency are increased by 36% and 62%, respectively.