165 research outputs found
Order Reduction of the Radiative Heat Transfer Model for the Simulation of Plasma Arcs
An approach to derive low-complexity models describing thermal radiation for
the sake of simulating the behavior of electric arcs in switchgear systems is
presented. The idea is to approximate the (high dimensional) full-order
equations, modeling the propagation of the radiated intensity in space, with a
model of much lower dimension, whose parameters are identified by means of
nonlinear system identification techniques. The low-order model preserves the
main structural aspects of the full-order one, and its parameters can be
straightforwardly used in arc simulation tools based on computational fluid
dynamics. In particular, the model parameters can be used together with the
common approaches to resolve radiation in magnetohydrodynamic simulations,
including the discrete-ordinate method, the P-N methods and photohydrodynamics.
The proposed order reduction approach is able to systematically compute the
partitioning of the electromagnetic spectrum in frequency bands, and the
related absorption coefficients, that yield the best matching with respect to
the finely resolved absorption spectrum of the considered gaseous medium. It is
shown how the problem's structure can be exploited to improve the computational
efficiency when solving the resulting nonlinear optimization problem. In
addition to the order reduction approach and the related computational aspects,
an analysis by means of Laplace transform is presented, providing a
justification to the use of very low orders in the reduction procedure as
compared with the full-order model. Finally, comparisons between the full-order
model and the reduced-order ones are presented
Robust Model Predictive Control via Scenario Optimization
This paper discusses a novel probabilistic approach for the design of robust
model predictive control (MPC) laws for discrete-time linear systems affected
by parametric uncertainty and additive disturbances. The proposed technique is
based on the iterated solution, at each step, of a finite-horizon optimal
control problem (FHOCP) that takes into account a suitable number of randomly
extracted scenarios of uncertainty and disturbances, followed by a specific
command selection rule implemented in a receding horizon fashion. The scenario
FHOCP is always convex, also when the uncertain parameters and disturbance
belong to non-convex sets, and irrespective of how the model uncertainty
influences the system's matrices. Moreover, the computational complexity of the
proposed approach does not depend on the uncertainty/disturbance dimensions,
and scales quadratically with the control horizon. The main result in this
paper is related to the analysis of the closed loop system under
receding-horizon implementation of the scenario FHOCP, and essentially states
that the devised control law guarantees constraint satisfaction at each step
with some a-priori assigned probability p, while the system's state reaches the
target set either asymptotically, or in finite time with probability at least
p. The proposed method may be a valid alternative when other existing
techniques, either deterministic or stochastic, are not directly usable due to
excessive conservatism or to numerical intractability caused by lack of
convexity of the robust or chance-constrained optimization problem.Comment: This manuscript is a preprint of a paper accepted for publication in
the IEEE Transactions on Automatic Control, with DOI:
10.1109/TAC.2012.2203054, and is subject to IEEE copyright. The copy of
record will be available at http://ieeexplore.ieee.or
On generalized terminal state constraints for model predictive control
This manuscript contains technical results related to a particular approach
for the design of Model Predictive Control (MPC) laws. The approach, named
"generalized" terminal state constraint, induces the recursive feasibility of
the underlying optimization problem and recursive satisfaction of state and
input constraints, and it can be used for both tracking MPC (i.e. when the
objective is to track a given steady state) and economic MPC (i.e. when the
objective is to minimize a cost function which does not necessarily attains its
minimum at a steady state). It is shown that the proposed technique provides,
in general, a larger feasibility set with respect to existing approaches, given
the same computational complexity. Moreover, a new receding horizon strategy is
introduced, exploiting the generalized terminal state constraint. Under mild
assumptions, the new strategy is guaranteed to converge in finite time, with
arbitrarily good accuracy, to an MPC law with an optimally-chosen terminal
state constraint, while still enjoying a larger feasibility set. The features
of the new technique are illustrated by three examples.Comment: Part of the material in this manuscript is contained in a paper
accepted for publication on Automatica and it is subject to Elsevier
copyright. The copy of record is available on http://www.sciencedirect.com
Automatic Retraction and Full Cycle Operation for a Class of Airborne Wind Energy Generators
Airborne wind energy systems aim to harvest the power of winds blowing at
altitudes higher than what conventional wind turbines reach. They employ a
tethered flying structure, usually a wing, and exploit the aerodynamic lift to
produce electrical power. In the case of ground-based systems, where the
traction force on the tether is used to drive a generator on the ground, a two
phase power cycle is carried out: one phase to produce power, where the tether
is reeled out under high traction force, and a second phase where the tether is
recoiled under minimal load. The problem of controlling a tethered wing in this
second phase, the retraction phase, is addressed here, by proposing two
possible control strategies. Theoretical analyses, numerical simulations, and
experimental results are presented to show the performance of the two
approaches. Finally, the experimental results of complete autonomous power
generation cycles are reported and compared with first-principle models.Comment: This manuscript is a preprint of a paper submitted for possible
publication on the IEEE Transactions on Control Systems Technology and is
subject to IEEE Copyright. If accepted, the copy of record will be available
at IEEEXplore library: http://ieeexplore.ieee.or
Autonomous take-off and landing of a tethered aircraft: a simulation study
The problem of autonomous launch and landing of a tethered rigid aircraft for
airborne wind energy generation is addressed. The system operates with
ground-based power conversion and pumping cycles, where the tether is
repeatedly reeled in and out of a winch installed on the ground and linked to
an electric motor/generator. In order to accelerate the aircraft to take-off
speed, the ground station is augmented with a linear motion system composed by
a slide translating on rails and controlled by a second motor. An onboard
propeller is used to sustain the forward velocity during the ascend of the
aircraft. During landing, a slight tension on the line is kept, while the
onboard control surfaces are used to align the aircraft with the rails and to
land again on them. A model-based, decentralized control approach is proposed,
capable to carry out a full cycle of launch, low-tension flight, and landing
again on the rails. The derived controller is tested via numerical simulations
with a realistic dynamical model of the system, in presence of different wind
speeds and turbulence, and its performance in terms of landing accuracy is
assessed. This study is part of a project aimed to experimentally verify the
launch and landing approach on a small-scale prototype.Comment: This is the longer version of a paper submitted to the 2016 American
Control Conference 2016, with more details on the simulation parameter
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