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This thesis is concern with gait generation methods for stable walk of flat footed and toe
footed biped robot models. Methods are proposed to generate suitable trajectory, which
can easily adapt the changes in the boundary conditions/constraints during walk. Different
type of approaches such as polynomials, Feedforward Neural Network(FNN) and Wavelet
Neural Network(WNN) are considered for some biped models walking on uneven surfaces
and for avoiding obstacles. To avoid stable leg’s knee bending and for more stable walk,
lateral upper body motion is considered. Force/torque control for walk is designed by
developing the dynamic equations of the biped model.
The thesis is divided into 7 chapters which are briefly described below:
Chapter 1 is introductory with a brief literature review in the area of robotics and neural
networks. We have discussed some biped models and also the inherent challenges associated
with the robots’ stable walk. Finally, a summary of the thesis is presented.
Chapter 2 gives some basics and preliminaries which are used in subsequent chapters.
Chapter 3 focuses on stable FNN trajectory tracking of flat footed biped robot with
upper body motion. Trajectories using cubic spline are generated for ankle joints, hip
joints and upper body so that the resulting walk is stable. Here, the effects of different
lateral upper body motions of the flat footed robot on ZMP stability is analyzed for plane
surface walking. The inverse kinematics of the ankle and hip trajectories are solved using
FNN. Further, simulations are done using Matlab2010b.
Chapter 4 proposes polynomial based trajectory generation algorithm of a robot model
for stable human like gait considering the upper body motion, movable foot and active toe.
This approach allows the smooth transition between walking phases namely, single support
phase and double support phase. ZMP stability is analyzed for plane and uneven surface
walking of the toe footed model by taking into account the lateral upper-body movements
i
along with the planned motion trajectories.
Chapter 5 proposes and compares FNN and WNN based approaches for smooth trajectory
generation under given constraints. The trajectory generation procedure is derived
from semi-supervised NNs for given boundary conditions without assigning any path in advance.
The trajectories generated by using proposed approaches can be modified according
to the constraints value at any instant of time during tracking. Further, these approaches
are used for the gait generation of a 5 DOF flat footed biped to walk on flat terrain in
3-dimensional space. The suitability of the proposed approaches is studied using ZMP
stability criteria and simulations have been carried out using Matlab2014a.
In Chapter 6, a biped robot model with flat foot is considered. The dynamic equation of
this model is derived and a PD controller for stable walk is presented. FNN approach proposed
in Chapter 5 is used for smooth and dynamically stable trajectory generation and the
results are compared with polynomial approach. Simulation results (using Matlab2014a)
show that this model can cross over obstacles of different heights and cross over a ditch by
adjusting the step height and step length in ankle trajectory at any instant during tracking.
Conclusions, limitations and future work have been outlined |
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