Introduction: Motion Planning, Optimization, and Biped Gait Generation

2018 ◽  
pp. 1571-1574
Author(s):  
Eiichi Yoshida ◽  
Katja Mombaur
2014 ◽  
Vol 670-671 ◽  
pp. 1370-1377 ◽  
Author(s):  
Lin Lin Wang ◽  
Hong Jian Wang ◽  
Li Xin Pan

In order to improve the ability of independent planning for AUV (Autonomous Underwater Vehicle), a new method of motion planning based on SBMPC (Sampling Based Model Predictive Control) is proposed, which is combined with model predictive control theory. Input sampling is directly made in control variable space, and sampling data is substituted into the predictive model of AUV motion. Then surge velocity and yaw angular rate in next sampling time are obtained through calculations. If predictive states are evaluated according to the performance index previously defined, optimal prediction of AUV states in next sampling can be used to realize motion planning optimization. Effects of three sampling methods (viz. uniform sampling, Halton sampling and CVT sampling) on motion planning performance are also compared in simulations. Statistical analysis demonstrates that CVT sampling points has the most uniform coverage in two-dimensional plane when amount of sampling points is the same for three methods. Simulation results show that it is effective and feasible to plan a route for AUV by using CVT sampling and rolling optimization of MPC (Model Predictive Control).


Author(s):  
Shinya Aoi

Humans have an extremely redundant system for locomotion. To handle the redundancy problem, humans use coordinative structures using conditions of constraint in their joint movements to reduce the number of degrees of freedom, which is called kinematic synergy. This chapter shows some characteristics in the kinematic synergy in human locomotion and shows a locomotion control system for a biped robot, which is inspired by the physiological concept of Central Pattern Generator (CPG) and phase resetting to produce gaits (quadrupedal and bipedal locomotion) and change them based on the kinematic synergy to tackle the redundancy problem in the motion planning of the robot.


2006 ◽  
Author(s):  
Jonathan Vaughan ◽  
Steven Jax ◽  
David A. Rosenbaum
Keyword(s):  

2021 ◽  
Author(s):  
Eliot S. Rudnick-Cohen ◽  
Joshua D. Hodson ◽  
Gregory W. Reich ◽  
Alexander M. Pankonien ◽  
Philip S. Beran

Author(s):  
Ioan Sucan ◽  
Sachin Chitta
Keyword(s):  


Sign in / Sign up

Export Citation Format

Share Document