205 research outputs found
Supervised learning for kinetic consensus control
In this paper, how to successfully and efficiently condition a target population of agents towards consensus is discussed. To overcome the curse of dimensionality, the mean field formulation of the consensus control problem is considered. Although such formulation is designed to be independent of the number of agents, it is feasible to solve only for moderate intrinsic dimensions of the agents space. For this reason, the solution is approached by means of a Boltzmann procedure, i.e. quasi-invariant limit of controlled binary interactions as approximation of the mean field PDE. The need for an efficient solver for the binary interaction control problem motivates the use of a supervised learning approach to encode a binary feedback map to be sampled at a very high rate. A gradient augmented feedforward neural network for the Value function of the binary control problem is considered and compared with direct approximation of the feedback law
Gradient-augmented supervised learning of optimal feedback laws using state-dependent Riccati equations
A supervised learning approach for the solution of large-scale nonlinear stabilization problems is presented. A stabilizing feedback law is trained from a dataset generated from State-dependent Riccati Equation solvers. The training phase is enriched by the use of gradient information in the loss function, which is weighted through the use of hyperparameters. High-dimensional nonlinear stabilization tests demonstrate that real-time sequential large-scale Algebraic Riccati Equation solvers can be substituted by a suitably trained feedforward neural network
Control with uncertain data of socially structured compartmental epidemic models
The adoption of containment measures to reduce the amplitude of the epidemic
peak is a key aspect in tackling the rapid spread of an epidemic. Classical
compartmental models must be modified and studied to correctly describe the
effects of forced external actions to reduce the impact of the disease. In
addition, data are often incomplete and heterogeneous, so a high degree of
uncertainty must naturally be incorporated into the models. In this work we
address both these aspects, through an optimal control formulation of the
epidemiological model in presence of uncertain data. After the introduction of
the optimal control problem, we formulate an instantaneous approximation of the
control that allows us to derive new feedback controlled compartmental models
capable of describing the epidemic peak reduction. The need for long-term
interventions shows that alternative actions based on the social structure of
the system can be as effective as the more expensive global strategy. The
importance of the timing and intensity of interventions is particularly
relevant in the case of uncertain parameters on the actual number of infected
people. Simulations related to data from the recent COVID-19 outbreak in Italy
are presented and discussed
Structure preserving schemes for mean-field equations of collective behavior
In this paper we consider the development of numerical schemes for mean-field
equations describing the collective behavior of a large group of interacting
agents. The schemes are based on a generalization of the classical Chang-Cooper
approach and are capable to preserve the main structural properties of the
systems, namely nonnegativity of the solution, physical conservation laws,
entropy dissipation and stationary solutions. In particular, the methods here
derived are second order accurate in transient regimes whereas they can reach
arbitrary accuracy asymptotically for large times. Several examples are
reported to show the generality of the approach.Comment: Proceedings of the XVI International Conference on Hyperbolic
Problem
Uncertainty quantification for kinetic models in socio-economic and life sciences
Kinetic equations play a major rule in modeling large systems of interacting
particles. Recently the legacy of classical kinetic theory found novel
applications in socio-economic and life sciences, where processes characterized
by large groups of agents exhibit spontaneous emergence of social structures.
Well-known examples are the formation of clusters in opinion dynamics, the
appearance of inequalities in wealth distributions, flocking and milling
behaviors in swarming models, synchronization phenomena in biological systems
and lane formation in pedestrian traffic. The construction of kinetic models
describing the above processes, however, has to face the difficulty of the lack
of fundamental principles since physical forces are replaced by empirical
social forces. These empirical forces are typically constructed with the aim to
reproduce qualitatively the observed system behaviors, like the emergence of
social structures, and are at best known in terms of statistical information of
the modeling parameters. For this reason the presence of random inputs
characterizing the parameters uncertainty should be considered as an essential
feature in the modeling process. In this survey we introduce several examples
of such kinetic models, that are mathematically described by nonlinear Vlasov
and Fokker--Planck equations, and present different numerical approaches for
uncertainty quantification which preserve the main features of the kinetic
solution.Comment: To appear in "Uncertainty Quantification for Hyperbolic and Kinetic
Equations
Kinetic models for optimal control of wealth inequalities
We introduce and discuss optimal control strategies for kinetic models for wealth distribution in a simple market economy, acting to minimize the variance of the wealth density among the population. Our analysis is based on a finite time horizon approximation, or model predictive control, of the corresponding control problem for the microscopic agents' dynamic and results in an alternative theoretical approach to the taxation and redistribution policy at a global level. It is shown that in general the control is able to modify the Pareto index of the stationary solution of the corresponding Boltzmann kinetic equation, and that this modification can be exactly quantified. Connections between previous Fokker-Planck based models and taxation-redistribution policies and the present approach are also discussed
Optical spectroscopic variability of Herbig Ae/Be stars
We analysed 337 multi-epoch optical spectra of 38 Herbig Ae/Be (HAeBe) stars
to gain insights into the variability behaviour of the circumstellar (CS)
atomic gas. Equivalent widths (EWs) and line fluxes of the Halpha, [OI]6300,
HeI5876 and NaID lines were obtained for each spectrum; the Halpha line width
at 10% of peak intensity (W10) and profile shapes were also measured and
classified. The mean line strengths and relative variabilities were quantified
for each star. Simultaneous optical photometry was used to estimate the line
fluxes.
We present a homogeneous spectroscopic database of HAeBe stars. The lines are
variable in practically all stars and timescales, although 30 % of the objects
show a constant EW in [OI]6300, which is also the only line that shows no
variability on timescales of hours. The HeI5876 and NaID EW relative
variabilities are typically the largest, followed by those in [OI]6300 and
Halpha. The EW changes can be larger than one order of magnitude for the
HeI5876 line, and up to a factor 4 for Halpha. The [OI]6300 and Halpha EW
relative variabilities are correlated for most stars in the sample. The Halpha
mean EW and W10 are uncorrelated, as are their relative variabilities. The
Halpha profile changes in 70 % of the objects. The massive stars in the sample
usually show more stable Halpha profiles with blueshifted self-absorptions and
less variable 10% widths.
Our data suggest multiple causes for the different line variations, but the
[OI]6300 and Halpha variability must share a similar origin in many objects.
The physical mechanism responsible for the Halpha line broadening does not
depend on the amount of emission; unlike in lower-mass stars, physical
properties based on the Halpha luminosity and W10 would significantly differ.
Our results provide additional support to previous works that reported
different physical mechanisms in Herbig Ae and Herbig Be stars.Comment: 10 pages, 5 figures, 2 appendixe
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