11 research outputs found
Multi-contact Stochastic Predictive Control for Legged Robots with Contact Locations Uncertainty
Trajectory optimization under uncertainties is a challenging problem for
robots in contact with the environment. Such uncertainties are inevitable due
to estimation errors, control imperfections, and model mismatches between
planning models used for control and the real robot dynamics. This induces
control policies that could violate the contact location constraints by making
contact at unintended locations, and as a consequence leading to unsafe motion
plans. This work addresses the problem of robust kino-dynamic whole-body
trajectory optimization using stochastic nonlinear model predictive control
(SNMPC) by considering additive uncertainties on the model dynamics subject to
contact location chance-constraints as a function of robot's full kinematics.
We demonstrate the benefit of using SNMPC over classic nonlinear MPC (NMPC) for
whole-body trajectory optimization in terms of contact location constraint
satisfaction (safety). We run extensive Monte-Carlo simulations for a quadruped
robot performing agile trotting and bounding motions over small stepping
stones, where contact location satisfaction becomes critical. Our results show
that SNMPC is able to perform all motions safely with 100% success rate, while
NMPC failed 48.3% of all motions
On the Use of Torque Measurement in Centroidal State Estimation
State of the art legged robots are either capable of measuring torque at the
output of their drive systems, or have transparent drive systems which enable
the computation of joint torques from motor currents. In either case, this
sensor modality is seldom used in state estimation. In this paper, we propose
to use joint torque measurements to estimate the centroidal states of legged
robots. To do so, we project the whole-body dynamics of a legged robot into the
nullspace of the contact constraints, allowing expression of the dynamics
independent of the contact forces. Using the constrained dynamics and the
centroidal momentum matrix, we are able to directly relate joint torques and
centroidal states dynamics. Using the resulting model as the process model of
an Extended Kalman Filter (EKF), we fuse the torque measurement in the
centroidal state estimation problem. Through real-world experiments on a
quadruped robot with different gaits, we demonstrate that the estimated
centroidal states from our torque-based EKF drastically improve the recovery of
these quantities compared to direct computation
Nonlinear Stochastic Trajectory Optimization for Centroidal Momentum Motion Generation of Legged Robots
Generation of robust trajectories for legged robots remains a challenging
task due to the underlying nonlinear, hybrid and intrinsically unstable
dynamics which needs to be stabilized through limited contact forces.
Furthermore, disturbances arising from unmodelled contact interactions with the
environment and model mismatches can hinder the quality of the planned
trajectories leading to unsafe motions. In this work, we propose to use
stochastic trajectory optimization for generating robust centroidal momentum
trajectories to account for additive uncertainties on the model dynamics and
parametric uncertainties on contact locations. Through an alternation between
the robust centroidal and whole-body trajectory optimizations, we generate
robust momentum trajectories while being consistent with the whole-body
dynamics. We perform an extensive set of simulations subject to different
uncertainties on a quadruped robot showing that our stochastic trajectory
optimization problem reduces the amount of foot slippage for different gaits
while achieving better performance over deterministic planning
Sleep quality in elderly patients diagnosed with osteoarthritis at orthopedic outpatient clinic
Background: Elderly patients have osteoarthritis pain who suffering from sleep latency, difficulty maintaining sleep, sleep fregmentation and early morning are all symptoms of poor sleep. Aim: This study aims to assess sleep quality in elderly patients diagnosed with osteoarthritis. Study Design: : A descriptive research design was used for conducted this study. Setting: The study was conducted at the orthopedic outpatient clinic of Fayoum General Hospital. Sample: A purposive sample was used in this study and included 169 of elderly patients diagnosed with osteoarthritis (demographic characteristics, past and present medical history and patients’ knowledge about osteoarthritis). Tool II: Two standardize tools; Part I- Pittsburgh Sleep Quality Index to assess sleep quality. Part II- The Visual Analog Pain Scale to assess pain severity. Results: the presenting study showed that, (90.9%) of patients with osteoarthritis were found to have poor sleep quality, 80% had unsatisfactory knowledge, 92.9% of females were having poor sleep more than men. 60 % of patients had severe pain (VAS > 7). 55.7% of patients had sleep latency, 59.2% had short sleep duration. Statistically significant relation between total knowledge, sleep quality and pain with p value (p=0.001*).