379 research outputs found
Vibration Free Flexible Object Handling with a Robot Manipulator Using Learning Control
Many industries extensively use flexible materials. Effective approaches for
handling flexible objects with a robot manipulator must address residual
vibrations. Existing solutions rely on complex models, use additional
instrumentation for sensing the vibrations, or do not exploit the repetitive
nature of most industrial tasks. This paper develops an iterative learning
control approach that jointly learns model parameters and residual dynamics
using only the interoceptive sensors of the robot. The learned model is
subsequently utilized to design optimal (PTP) trajectories that accounts for
residual vibration, nonlinear kinematics of the manipulator and joint limits.
We experimentally show that the proposed approach reduces the residual
vibrations by an order of magnitude compared with optimal vibration suppression
using the analytical model and threefold compared with the available
state-of-the-art method. These results demonstrate that effective handling of a
flexible object does not require neither complex models nor additional
instrumentation.Comment: Have been submitted to IFAC World Congres
Optimal input design for flat systems using B-splines
This paper deals with optimal design of input signals for
linear, controllable systems, by means of their flat
output. The flat output is parametrized by a polynomial
spline and a linear problem is formulated in which both the
spline coefficients and the knot locations are found
simultaneously. Conservative constraints on the spline
coefficients ensure that semi-infinite bounds are never
violated and numerical results show that the amount of
conservatism is little.status: publishe
An Efficient Solution to the 2D Visibility Problem in Cartesian Grid Maps and its Application in Heuristic Path Planning
This paper introduces a novel, lightweight method to solve the visibility
problem for 2D grids. The proposed method evaluates the existence of
lines-of-sight from a source point to all other grid cells in a single pass
with no preprocessing and independently of the number and shape of obstacles.
It has a compute and memory complexity of , where is the size of the grid, and requires at most ten
arithmetic operations per grid cell. In the proposed approach, we use a linear
first-order hyperbolic partial differential equation to transport the
visibility quantity in all directions. In order to accomplish that, we use an
entropy-satisfying upwind scheme that converges to the true visibility polygon
as the step size goes to zero. This dynamic-programming approach allows the
evaluation of visibility for an entire grid orders of magnitude faster than
typical ray-casting algorithms. We provide a practical application of our
proposed algorithm by posing the visibility quantity as a heuristic and
implementing a deterministic, local-minima-free path planner, setting apart the
proposed planner from traditional methods. Lastly, we provide necessary
algorithms and an open-source implementation of the proposed methods.Comment: 7 pages, 5 figures, IEEE ICRA 202
Evaluation of MPC-based Imitation Learning for Human-like Autonomous Driving
This work evaluates and analyzes the combination of imitation learning (IL)
and differentiable model predictive control (MPC) for the application of
human-like autonomous driving. We combine MPC with a hierarchical
learning-based policy, and measure its performance in open-loop and closed-loop
with metrics related to safety, comfort and similarity to human driving
characteristics. We also demonstrate the value of augmenting open-loop
behavioral cloning with closed-loop training for a more robust learning,
approximating the policy gradient through time with the state space model used
by the MPC. We perform experimental evaluations on a lane keeping control
system, learned from demonstrations collected on a fixed-base driving
simulator, and show that our imitative policies approach the human driving
style preferences.Comment: This work has been submitted to IFAC for possible publication. arXiv
admin note: text overlap with arXiv:2206.1234
Experimental study on active structural acoustic control of rotating machinery using rotating piezo-based inertial actuators
info:eu-repo/semantics/publishe
ASAP-MPC: An Asynchronous Update Scheme for Online Motion Planning with Nonlinear Model Predictive Control
This paper presents a Nonlinear Model Predictive Control (NMPC) scheme
targeted at motion planning for mechatronic motion systems, such as drones and
mobile platforms. NMPC-based motion planning typically requires low computation
times to be able to provide control inputs at the required rate for system
stability, disturbance rejection, and overall performance. Although there exist
various ways in literature to reduce the solution times in NMPC, such times may
not be low enough to allow real-time implementations. This paper presents
ASAP-MPC, an approach to handle varying, sometimes restrictively large,
solution times with an asynchronous update scheme, always allowing for full
convergence and real-time execution. The NMPC algorithm is combined with a
linear state feedback controller tracking the optimised trajectories for
improved robustness against possible disturbances and plant-model mismatch.
ASAP-MPC seamlessly merges trajectories, resulting from subsequent NMPC
solutions, providing a smooth and continuous overall trajectory for the motion
system. This frameworks applicability to embedded applications is shown on two
different experiment setups where a state-of-the-art method fails: a quadcopter
flying through a cluttered environment in hardware-in-the-loop simulation and a
scale model truck-trailer manoeuvring in a structured lab environment.Comment: This work has been submitted to the IEEE for possible publication.
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