{"id":2610,"date":"2020-12-07T18:29:50","date_gmt":"2020-12-07T16:29:50","guid":{"rendered":"http:\/\/people.sissa.it\/~grozza\/?p=2610"},"modified":"2021-09-21T09:00:40","modified_gmt":"2021-09-21T07:00:40","slug":"cime-summerschool","status":"publish","type":"post","link":"https:\/\/people.sissa.it\/~grozza\/cime-summerschool\/","title":{"rendered":"CIME Summerschool"},"content":{"rendered":"\n<h3><a href=\"http:\/\/php.math.unifi.it\/users\/cime\/Courses\/2021\/course.php?codice=20215\" target=\"_blank\" rel=\"noopener noreferrer\"><em><b class=\"dodici\">Model order reduction and applications<\/b><\/em><\/a><\/h3>\n<p>\u00a0<\/p>\n<h3><strong><span dir=\"ltr\">Aims of the school<\/span><\/strong><\/h3>\n<p><strong><span dir=\"ltr\">Motivation<\/span><\/strong><span dir=\"ltr\">The behaviour of processes in several fields like mechanical engineering, geophysics, seismic modeling,<\/span><span dir=\"ltr\">climate\/weather prediction is usually modeled by dynamical systems. Such models often involve systems <\/span><span dir=\"ltr\">of nonlinear partial di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erential equations. Their approximation by classical discretization techniques like<\/span><span dir=\"ltr\"> finite di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erence and finite element methods, leads to high-dimensional systems of ordinary di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erential <\/span><span dir=\"ltr\">equations or di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erence equations. The number of equations is typically very large and it can easily <\/span><span dir=\"ltr\">reach a few million. Even after a linearization this system is therefore at best computationally very<\/span><span dir=\"ltr\"> expensive, and often it is not feasible to simulate its evolution. The aim of model order reduction<\/span><span dir=\"ltr\">(MOR) is to develop reduced order models giving an accurate approximation of the dynamics of the <\/span><span dir=\"ltr\">underlying large-scale system, by enabling the reduction process to be implemented as computationally <\/span><span dir=\"ltr\">e<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">cient and fast. Today\u2019s computational and experimental paradigms feature complex models along with <\/span><span dir=\"ltr\">disparate and, frequently, enormous data sets. This has motivated the development of theoretical and <\/span><span dir=\"ltr\">computational strategies for the construction of e<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">cient and robust numerical algorithms that e<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">ectively <\/span><span dir=\"ltr\">resolve the important features and characteristics of these complex computational models, possibly in <\/span><span dir=\"ltr\">real time when needed by the application. Clearly resolving the underlying model is often application-<\/span><span dir=\"ltr\">specific and combines mathematical tasks like approximation, prediction, calibration, design, control and <\/span><span dir=\"ltr\">optimization. In fact running simulations that fully account for the variability of the complexities of <\/span><span dir=\"ltr\">modern scientific models can be a very di<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">cult task due to the curse of dimensionality, chaotic behaviour <\/span><span dir=\"ltr\">of dynamics, and\/or overwhelming streams of informative data.<\/span><\/p>\n<p><strong><span dir=\"ltr\">Focus and organization<\/span><\/strong><span dir=\"ltr\">The School will address the state of the art of reduced order methods for modeling and computational <\/span><span dir=\"ltr\">reduction of complex parametrized systems, governed by ordinary and\/or partial di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erential equations,<\/span><span dir=\"ltr\">with a special emphasis on real time computing techniques and applications in various fields. The <\/span><span dir=\"ltr\">lecturers of the school are internationally recognized experts in MOR and other related areas and will <\/span><span dir=\"ltr\">present several point of view and techniques to solve demanding problems of increasing complexity.<\/span><span dir=\"ltr\">The school will focus on theoretical investigation and applicative algorithm development for reduction in <\/span><span dir=\"ltr\">the complexity &#8211; the dimension, the degrees of freedom, the data &#8211; arising in these models.The four broad <\/span><span dir=\"ltr\">thrusts of the program are: (1) Mathematics of reduced order models, (2) Algorithms for approximation <\/span><span dir=\"ltr\">and complexity reduction, (3) Computational statistics and data-driven techniques, and (4) Application-<\/span><span dir=\"ltr\">specific design. The particular topics include classical strategies such as parametric sensitivity analysis <\/span><span dir=\"ltr\">and best approximations, as well as mature but active topics like principal component analysis and <\/span><span dir=\"ltr\">information-based complexity, and also rising promising topics such as layered neural networks and high-<\/span><span dir=\"ltr\">dimensional statistics.<\/span><\/p>\n<p><span dir=\"ltr\"><strong>Goals<\/strong><\/span><span dir=\"ltr\">We would like to attract researchers and PhD students working or willing to work on model order <\/span><span dir=\"ltr\">reduction, data-driven model calibration and simplification, computations and approximations in high <\/span><span dir=\"ltr\">dimensions, and data-based uncertainty quantification. Hopefully investigation and assimilation of com<\/span><span dir=\"ltr\">plementary approaches will create a productive cross-fertilization and serve as a stronger and more <\/span><span dir=\"ltr\">structured link for several diverse research communities.<\/span><\/p>\n<p>\u00a0<\/p>\n<h3><span dir=\"ltr\">Dates<\/span><\/h3>\n<p><span dir=\"ltr\">We plan to organize the school at Hotel S. Michele in Cetraro from June 29 to July 3.<\/span>\u00a0<b>Venue: <a href=\"https:\/\/www.grandhotelsanmichele.it\/\">Hotel S. Michele<\/a>, Cetraro (CS)<\/b><\/p>\n<p>\u00a0<\/p>\n<h3><span dir=\"ltr\">School Directors<\/span><\/h3>\n<p><span dir=\"ltr\">Prof. Maurizio Falcone<\/span><span dir=\"ltr\">Dipartimento di Matematica <\/span><span dir=\"ltr\">Universit\u00e0 di Roma \u201dLa Sapienza\u201d <\/span><span dir=\"ltr\"><strong>email<\/strong>: <\/span><span dir=\"ltr\">falcone@mat.uniroma1.it<\/span><span dir=\"ltr\"><strong>WEB<\/strong>: <\/span><a href=\"http:\/\/www1.mat.uniroma1.it\/people\/falcone\/home.html\"><span dir=\"ltr\">http:\/\/www1.mat.uniroma1.it\/people\/falcone\/home.html<\/span><\/a><\/p>\n<p><span dir=\"ltr\">Prof. Gianluigi Rozza Dipartimento di Matematica, <\/span><span dir=\"ltr\">SISSA<\/span><span dir=\"ltr\"><strong>email<\/strong>:<\/span><span dir=\"ltr\">gianluigi.rozza@sissa.it<\/span><span dir=\"ltr\"><strong>WEB<\/strong>:<\/span><a href=\"https:\/\/people.sissa.it\/grozza\/\"><span dir=\"ltr\"> https:\/\/people.sissa.it\/grozza\/<\/span><\/a><strong><\/strong><\/p>\n<p>\u00a0<\/p>\n<h3 class=\"gmail_default\">Sponsors<\/h3>\n<div class=\"gmail_default\">\u00a0<\/div>\n<div class=\"gmail_default\"><strong>CIME<\/strong>, Firenze<\/div>\n<div class=\"gmail_default\">\n<p class=\"gmail-p1\"><b><a href=\"https:\/\/www.iac.cnr.it\/~PRIN2017Russo\/index.html\">PRIN 2017<\/a>: <\/b>Innovative Numerical Methods for Evolutionary Partial Differential Equations and Applications,\u00a0Project code: 2017KKJP4X<\/p>\n<p class=\"gmail-p1\"><a href=\"https:\/\/www.mat.uniroma1.it\/\"><strong>Dipartimento di Matematica<\/strong><\/a>, Sapienza Universit\u00e0 di Roma<\/p>\n<p class=\"gmail-p1\"><a href=\"https:\/\/www.sissa.it\/\"><strong>SISSA<\/strong><\/a>, Trieste<\/p>\n<p>\u00a0<\/p>\n<\/div>\n<h3><span dir=\"ltr\">Teachers and courses<\/span><\/h3>\n<p>\u00a0<\/p>\n<p><span dir=\"ltr\">T<\/span><span dir=\"ltr\">he school program will include five<\/span><span dir=\"ltr\"> courses<\/span><span dir=\"ltr\">. All the confirmed speakers have agreed to write the lecture <\/span><span dir=\"ltr\">notes of their courses. The first course is an introduction to the subject. The four remaining courses will be <\/span><span dir=\"ltr\">focused on specific techniques and\/or applications and are scheduled on 4.5 hours, i.e. 3 blocks of 1.5<\/span><span dir=\"ltr\">hours. The final time table is shown below.<\/span><span dir=\"ltr\">The school will integrate in its courses several tools coming from mathematical analysis, statistical <\/span><span dir=\"ltr\">sciences, numerical analysis, data and computer science. To allow prospective students to be prepared <\/span><span dir=\"ltr\">for the courses, a list of<\/span><span dir=\"ltr\"> suggested readings <\/span><span dir=\"ltr\">will be announced on the WEB page of the school several<\/span><span dir=\"ltr\"> months in advance. Many lectures will also be held in-class, but, d<\/span><span dir=\"ltr\">ue to the pandemia restrictions, all the courses will be delivered <\/span><span dir=\"ltr\">on-line using the ZOOM platform in order to allow the participants to follow the school by distance.<\/span><\/p>\n<table style=\"border-collapse: collapse; width: 100%; height: 144px;\">\n<tbody>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">Hours<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Mon, 28 Jun<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Tue, 29 Jun<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Wed, 30 Jun<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Thu, 1 Jul<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Fri, 2 Jul<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Sat, 3 Jul<\/td>\n<\/tr>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">9.00-10.30<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 2<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 3<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 5<\/td>\n<\/tr>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">11.00-12.30<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 2<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 3<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 5<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 3<\/td>\n<\/tr>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">12.30-15.30<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Lunch<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Lunch<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Lunch<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Lunch<\/td>\n<\/tr>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">15.30-17.00<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 1<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0Course 1<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 2<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Seminars<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 5<\/td>\n<\/tr>\n<tr style=\"height: 24px;\">\n<td style=\"width: 14.2857%; height: 24px;\">17.30-19.00<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 1<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 4<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 4<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">Course 4<\/td>\n<td style=\"width: 14.2857%; height: 24px;\">\u00a0<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>\u00a0<\/h3>\n<p><strong><span dir=\"ltr\">Course 1 (4.5 hours, 3 blocks)<\/span><span dir=\"ltr\">Systems-theoretic Optimal Model Reduction of Dynamical Systems<\/span><\/strong><span dir=\"ltr\">Prof. <strong>Serkan Gugercin<\/strong> (Virginia Tech)<\/span><span dir=\"ltr\"><strong>email<\/strong>:<\/span><span dir=\"ltr\">gugercin@vt.edu<\/span><span dir=\"ltr\"><strong>WEB<\/strong>: <\/span><span dir=\"ltr\"><a href=\"http:\/\/www.math.vt.edu\/people\/gugercin\/\">http:\/\/www.math.vt.edu\/people\/gugercin\/<\/a><\/span><span dir=\"ltr\"><strong>Abstract<\/strong>:<\/span><span dir=\"ltr\">In this set of lectures, we will focus on optimal model reduction dynamical systems using <\/span><span dir=\"ltr\">tools from systems and control theory and rational approximation. We will discuss how to construct <\/span><span dir=\"ltr\">input-independent optimal reduced models that are guaranteed to provide high-fidelity approximation s<\/span><span dir=\"ltr\">to underlying original dynamics. Both linear and nonlinear dynamics will be studied.<\/span><\/p>\n<p>\u00a0<\/p>\n<p><strong><span dir=\"ltr\">Course 2 (4.5 hours, 3 blocks)<\/span><span dir=\"ltr\">MOR for optimal control problems<\/span><\/strong><span dir=\"ltr\">Prof. Dr. Michael Hinze (University of Koblez-Landau)<\/span><span dir=\"ltr\"><strong>e-mail<\/strong>:<\/span><span dir=\"ltr\">hinze@uni-koblenz.de<\/span><span dir=\"ltr\"><strong>WEB<\/strong>: <\/span><a href=\"https:\/\/www.uni-koblenz-landau.de\/de\/koblenz\/fb3\/mathe\/ueber-uns\/mitglieder\/professoren\/hinze\"><span dir=\"ltr\">https:\/\/www.uni-koblenz-landau.de\/de\/koblenz\/fb3\/mathe\/ueber-uns\/mitglieder\/professoren\/hinze<\/span><\/a><\/p>\n<p><span dir=\"ltr\"><strong>Abstract:<\/strong><\/span>Lecture 1: We will cover the construction of MOR reduced order models for nonlinear PDE systems. The approximation of the nonlinearities is performed with (D)EIM and\/or QDEIM. Emphasis will be taken on the choice of the inner product for the basis construction and the treatment of spatially adaptively generated snapshots, and also on reduced basis approximations. Furthermore, error analysis will be sketched. Lecture 2: This lecture deals with the use of MOR models in optimization with PDE constraints. Emphasis is put on the variational discretization of the controls, which is perfectly tailored to the use of MOR models for the state approximation. In addition we introduce a novel snapshot location procedure for MOR in optimal control. A priori and a posteriori error analysis will be sketched. Lecture 3: This lecture deals with certification of MOR models in parametrized optimal control, where the emphasis is taken on reliability and also effectivity of the MOR approximation. Concepts from a posteriori finite element analysis are adapted for the construction of a sharp (up to a constant) error bound for the variables involved in the optimization process. Moreover, we sketch convergence of the approach.<\/p>\n<p><strong><span dir=\"ltr\">Course 3 (4.5 hours, 3 blocks)<\/span><\/strong><span dir=\"ltr\"><strong>Reduced modeling and learning for state estimation<\/strong><\/span><span dir=\"ltr\">Dr. Olga Mula (CEREMADE, Paris Dauphine)<\/span><span dir=\"ltr\"><strong>email<\/strong>: <\/span><span dir=\"ltr\">mula@ceremade.dauphine.fr<\/span><span dir=\"ltr\"><strong>WEB<\/strong>: <\/span><a href=\"https:\/\/www.ceremade.dauphine.fr\/ mula\/index.html\" data-wplink-url-error=\"true\"><span dir=\"ltr\">https:\/\/www.ceremade.dauphine.fr\/ mula\/index.html<\/span><\/a><span dir=\"ltr\"><strong>Abstract<\/strong>:<\/span><span dir=\"ltr\">This course is devoted to inverse <\/span><span dir=\"ltr\">state estimation <\/span><span dir=\"ltr\">problems where the goal is to compute <\/span><span dir=\"ltr\">a fast reconstruction of the state of a physical system from available measurement observations and the <\/span><span dir=\"ltr\">knowledge of a physical PDE model. Due to their ill-posedness, these problems are often addressed with<\/span><span dir=\"ltr\">Bayesian approaches that consist in searching for the most plausible solution using sampling strategies of<\/span><span dir=\"ltr\">the posterior density. In view of their high numerical cost, especially in a high dimensional framework, <\/span><span dir=\"ltr\">reduced models have recently been proposed as a vehicle to reduce complexity and achieve near real<\/span><span dir=\"ltr\">time in the reconstructions. The course will give an overview of optimal linear and nonlinear strategies <\/span><span dir=\"ltr\">combining<\/span><span dir=\"ltr\"> reduced modeling <\/span><span dir=\"ltr\">and <\/span><span dir=\"ltr\">statistical learning algorithms<\/span><\/p>\n<p>\u00a0<\/p>\n<p><strong><span dir=\"ltr\">Course 4 (4.5 hours, 3 blocks)<\/span><\/strong><span dir=\"ltr\"><strong>Machine learning methods for reduced order modeling<\/strong><\/span><span dir=\"ltr\">Prof. <strong>J. Nathan Kutz<\/strong> (University of Washington)<strong>email<\/strong>:<\/span><span dir=\"ltr\">kutz@uw.edu<\/span><span dir=\"ltr\"><strong>WEB<\/strong>:<\/span><a href=\"https:\/\/amath.washington.edu\/people\/j-nathan-kutz\"><span dir=\"ltr\">https:\/\/amath.washington.edu\/people\/j-nathan-kutz<\/span><\/a><span dir=\"ltr\"><strong>Abstract<\/strong>:<\/span><span dir=\"ltr\">A major challenge in the study of complex systems is that of producing reduced order<\/span><span dir=\"ltr\">models (ROMs) capable of capturing the salient features of the high fidelity model. Emerging methods<\/span><span dir=\"ltr\">from machine learning allow us to turn data into models that are not just predictive, but provide insight<\/span><span dir=\"ltr\">into the nature of the underlying dynamical system that generated the data and characterize the high-<\/span><span dir=\"ltr\">dimensional dynamics. This problem is made more di<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">cult by the fact that many systems of interest<\/span><span dir=\"ltr\">exhibit parametric dependencies and diverse behaviors across multiple time scales. We introduce a number<\/span><span dir=\"ltr\">of data-driven strategies for discovering ROMs and their coordinate embeddings from data. We consider <\/span><span dir=\"ltr\">two canonical cases: (i) systems for which we have full measurements of the governing variables, and (ii)<\/span><span dir=\"ltr\">systems for which we have incomplete measurements. For systems with full state measurements, we show<\/span><span dir=\"ltr\">that the recent sparse identification of nonlinear dynamical systems (SINDy) method can discover ROM <\/span><span dir=\"ltr\">models with relatively little data and introduce a sampling method that allows SINDy to scale e<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">ciently<\/span><span dir=\"ltr\">to problems with multiple time scales and parametric dependencies. Specifically, we can discover distinct<\/span><span dir=\"ltr\">governing equations at slow and fast scales. For systems with incomplete observations, we show that<\/span><span dir=\"ltr\">using time-delay embedding coordinates can be used to obtain a linear models, such as dynamic mode<\/span><span dir=\"ltr\">decomposition, and Koopman invariant measurement system that captures the dynamics of nonlinear<\/span><span dir=\"ltr\">systems. Together, our approaches provide a suite of mathematical strategies for leveraging and reducing <\/span><span dir=\"ltr\">the data required to discover and model nonlinear systems with ROM architectures.<\/span><\/p>\n<p>\u00a0<\/p>\n<p><strong><span dir=\"ltr\">Course 5 (4.5 hours, 3 blocks)<\/span><span dir=\"ltr\">Model Order Reduction: limits and perspectives<\/span><\/strong><span dir=\"ltr\">Prof.<strong> K. Urban<\/strong> (University of Ulm)<\/span><span dir=\"ltr\"><strong>email<\/strong>:<\/span><span dir=\"ltr\">karsten.urban@uni-ulm.de<\/span><span dir=\"ltr\"><strong>WEB<\/strong>:<\/span><span dir=\"ltr\">https:\/\/www.uni-ulm.de\/en\/mawi\/mawi-numerik\/institut\/mitarbeiter\/prof-dr-karsten-urban\/<\/span><span dir=\"ltr\"><strong>Abstract<\/strong>:<\/span><span dir=\"ltr\">Classical MOR methods rely on projection, namely a possibly high-dimension model is<\/span><span dir=\"ltr\">projected onto a hopefully small dimensional reduced space. In such a setting, the MOR method is <\/span><span dir=\"ltr\">usually linear. In order to get an e<\/span><span dir=\"ltr\">ffi<\/span><span dir=\"ltr\">cient MOR, the relation of the dimension <\/span><span dir=\"ltr\">N <\/span><span dir=\"ltr\">of the reduced space <\/span><span dir=\"ltr\">and the achievable error is of great importance. In particular, one would want that the error decays fast<\/span><span dir=\"ltr\">as N grows. The best possible error in such a framework is the Kolmogorov N-width. Its decay as N grows <\/span><span dir=\"ltr\">sets an upper bound for the performance of a linear MOR method. It is well-known that elliptic problems <\/span><span dir=\"ltr\">with nice parameter dependence allow for an exponential decay of the Kolmogorov<\/span><span dir=\"ltr\">N<\/span><span dir=\"ltr\">-width and that<\/span><span dir=\"ltr\">e.g. Greedy-based MOR in fact allow for the same rate of convergence, i.e., they are optimal. But what<\/span><span dir=\"ltr\">happens for non-elliptic problems? We will start by considering time-dependent problems and show that <\/span><span dir=\"ltr\">and how the optimality for MOR methods can be preserved. The situation is di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erent e.g. for transport-<\/span><span dir=\"ltr\">dominated and wave-type problems. There, lower bounds for the Kolmogorov N-width are known, i.e.,<\/span><span dir=\"ltr\">linear model reduction cannot work in general, which can also be seen in numerical investigations. Hence,<\/span><span dir=\"ltr\">nonlinear methods are required. We will introduce some approaches in that direction and also link to<\/span><span dir=\"ltr\">dynamical systems (Course 1), optimal control (Course 2) and learning methods (Courses 3 and 4).<\/span>Further information at <a href=\"http:\/\/web.math.unifi.it\/users\/cime\/frame_2.php\" target=\"_blank\" rel=\"noopener noreferrer\">http:\/\/web.math.unifi.it\/users\/cime\/frame_2.php<\/a><\/p>\n<h3><b><span dir=\"ltr\">Courses material<\/span><\/b><\/h3>\n<p>Prof. Gugercin: <a href=\"https:\/\/drive.google.com\/file\/d\/1p1wVfcBSp18RTAJ9Shki8jomxYyyHen1\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides<\/a>Prof. Hinze: <a href=\"https:\/\/drive.google.com\/file\/d\/1QynPWDrZOYu2LB_ttgvK4140Sd9h68fF\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides<\/a>Dr. Mula: <a href=\"https:\/\/drive.google.com\/file\/d\/1FXzTSAx7thK31zlq9frNxccvDdrWD6Zs\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides<\/a>Prof. Kutz: <a href=\"https:\/\/drive.google.com\/file\/d\/1NBSUVh77PyDPRrJR1hzCElDGo2kk4T7Y\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides<\/a>Prof Urban: <a href=\"https:\/\/drive.google.com\/file\/d\/1869Q0fid2WGHd-bLhrOw97Np9auy6nm4\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides1<\/a>, <a href=\"https:\/\/drive.google.com\/file\/d\/1a82HyGU8xWzbZUD4DVoI0qdnq2hAPFoE\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides2<\/a>, <a href=\"https:\/\/drive.google.com\/file\/d\/1YRVKI07RSnbZB1URNHiqMdaMAorZSybx\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">slides3<\/a>Seminars: <a href=\"https:\/\/drive.google.com\/file\/d\/1Hj6QdCpLwFUorXatLbr1vt1e7XAEeD0Q\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">N. Beranek, A. Reinhold<\/a>, <a href=\"https:\/\/drive.google.com\/file\/d\/1Rx93rVgQLJknOfFEwAyBbn0EkPELC5fd\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">M. Feuerle, N. Reich<\/a>, <a href=\"https:\/\/drive.google.com\/file\/d\/1AfItNAaXXiqcqr6IFkM3IRiniCxuzw1b\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">G. Kirsten<\/a>, <a href=\"https:\/\/drive.google.com\/file\/d\/1_05FUG1-7v745PhW21SLEJUoxsJ6vuVq\/view?usp=sharing\" target=\"_blank\" rel=\"noopener noreferrer\">F. Pichi<\/a><\/p>\n<h3>\u00a0<\/h3>\n<h3>Access to the ZOOM recordings:<\/h3>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/D2nRTqarB6l7b4EKmmb5pmzGqm--y78ZfAzkFaytBvz4sOrToJSgWh-0naPt0o25.MPEU5H6FYwWik-D4?startTime=1624980651000\">June 29, 2021<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/IOoyv_5-70olCPL-8F_p-uvAcu4DRhbTxVKy4MyBVx35GRjMVARJlo1Bh1Xm45T3.Pi8wedNq3hJGKfSw?startTime=1625044240000\">June 30, 2021 &#8211; Morning<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/QsbOq_zcZYcT_Yojz-qSrHAWuXq2HcKmsmILkNHk8uh-ieOl1KrZGWcO-uzqHWwq.ee-sI46vLZCxprEJ?startTime=1625063245000\">June 30, 2021 &#8211;\u00a0 Afternoon (part 1)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/QsbOq_zcZYcT_Yojz-qSrHAWuXq2HcKmsmILkNHk8uh-ieOl1KrZGWcO-uzqHWwq.ee-sI46vLZCxprEJ?startTime=1625069578000\">June 30, 2021 &#8211;\u00a0 Afternoon (part 2)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/6gMTeGf50pcjVDVkDikFnmgmrumaX8NYZsQDDNDalw1jjHeQ0uAq9d2LkBp2lko5.xLe199GgrYkopfQy?startTime=1625129667000\">July 1, 2021 &#8211; Morning<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/9LUWK_j8TU5-KLYnxyx-czwKzdZf285rZYD84eK9wAWBs7r2DF9HAQMJwDXwEk2-.VfL69uSEHh2FzfQh?startTime=1625148270000\">July 1, 2021 &#8211; Afternoon (part 1)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/6gMTeGf50pcjVDVkDikFnmgmrumaX8NYZsQDDNDalw1jjHeQ0uAq9d2LkBp2lko5.xLe199GgrYkopfQy?startTime=1625129667000\">July 1, 2021 &#8211;\u00a0<\/a><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/9LUWK_j8TU5-KLYnxyx-czwKzdZf285rZYD84eK9wAWBs7r2DF9HAQMJwDXwEk2-.VfL69uSEHh2FzfQh?startTime=1625155479000\"> Afternoon (part 2)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/VknnXLvl8Ly5hAQJhZgu6PPg5ifjIt6GxmkjgO0X0cJJo-7aZnb-PgRWshIQckqW.uSFNTqh3M3R_uIMm?startTime=1625209293000\">July 2, 2021 &#8211; Morning (part 1)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/VknnXLvl8Ly5hAQJhZgu6PPg5ifjIt6GxmkjgO0X0cJJo-7aZnb-PgRWshIQckqW.uSFNTqh3M3R_uIMm?startTime=1625216799000\">July 2, 2021 &#8211; Morning (part2)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/wrqZW9bn0UOwpksvxbht0WIM38F3M9d-DCKgfCTigsqYt6Irtvup28GjpbeEbSl6.K-F9SmKMbUXvU7Ar?startTime=1625234774000\">July 2, 2021 &#8211; Afternoon (part 1)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/wrqZW9bn0UOwpksvxbht0WIM38F3M9d-DCKgfCTigsqYt6Irtvup28GjpbeEbSl6.K-F9SmKMbUXvU7Ar?startTime=1625240927000\">July 2, 2021 &#8211; Afternoon (part 2)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/0DPS5NFYICEocBNgCKcLYGhPBaR0bYUDVTl8GG42AwpnaBSlLEpWgnmCOCnoINyy._uZ23UgWOnRCTaKC?startTime=1625295924000\">July 3, 2021 &#8211; Morning (part 1)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/0DPS5NFYICEocBNgCKcLYGhPBaR0bYUDVTl8GG42AwpnaBSlLEpWgnmCOCnoINyy._uZ23UgWOnRCTaKC?startTime=1625303302000\">July 3, 2021 &#8211; Morning (part 2)<\/a><\/p>\n<p><a href=\"https:\/\/uniroma1.zoom.us\/rec\/share\/U3T-f3MJLQ2Q4IWLW8fYwJohirQxMZFbJMtrWZvb6dv066x1UyTQo5IZqY26Gm6P.LnHIlTqt3W5h1R3r?startTime=1625328623000\">July 3, 2021 &#8211; Afternoon (part 1)<\/a><\/p>\n<h3>\u00a0<\/h3>\n<h3><b><span dir=\"ltr\">Bibliography<\/span><\/b><\/h3>\n<p><span dir=\"ltr\">A very short list of the main references on model order reduction is:<\/span><\/p>\n<p><span dir=\"ltr\">1. A. C. Antoulas, Approximation of Large-Scale Dynamical Systems, Adv. Des. Control 6, SIAM,<\/span><span dir=\"ltr\">Philadelphia, PA, 2005.<\/span><span dir=\"ltr\">2. P. Benner, V. Mehrmann, and D. C. Sorensen, Dimension Reduction of Large-Scale Systems, Lect.<\/span><span dir=\"ltr\">Notes Comput. Sci. Eng. 45, Springer-Verlag, Berlin, Heidelberg, 2005.<\/span><span dir=\"ltr\">3. J. Hesthaven, G. Rozza, and B. Stamm, Certified Reduced Basis Methods for Parametrized Partial<\/span><span dir=\"ltr\">Di<\/span><span dir=\"ltr\">ff<\/span><span dir=\"ltr\">erential Equations, SpringerBriefs in Mathematics, Springer International Publishing, Cham,<\/span><span dir=\"ltr\">Switzerland, 2016.<\/span><span dir=\"ltr\">4. Qu, Zu-Qing, Model Order Reduction Techniques with Applications in Finite Element Analysis,<\/span><span dir=\"ltr\">Springer, 2004<\/span><span dir=\"ltr\">5. Quarteroni, Alfio, Rozza, Gianluigi (Eds.) , Reduced Order Methods for Modeling and Computa-<\/span><span dir=\"ltr\">tional Reduction, Springer, 2014<\/span><span dir=\"ltr\">6. Benner, P., Ohlberger, M., Patera, A., Rozza, G., Urban, K. (Eds.), Model Reduction of Parametrized<\/span><span dir=\"ltr\">Systems, Springer MS and A, Vol. 17, 2017.<\/span><span dir=\"ltr\">7. W. H. A. Schilders, H. A. van der Vorst, and J. Rommes, Model Order Reduction: Theory, Research<\/span><span dir=\"ltr\">Aspects and Applications, Springer-Verlag, Berlin, Heidelberg, 2008.<\/span>\u00a0<\/p>\n<p>\u00a0<\/p>\n<h3>Financial Support for Young Researchers:<\/h3>\n<p>Funding opportunities for the local expenses will be offered to young participants\u00a0(PhD students, postdocs).<\/p>\n<p>Candidates should apply writing <b>before March 31 v<\/b><b>ia CIME WEB page\u00a0<\/b><\/p>\n<p><b><span style=\"color: #555555; font-family: Helvetica Neue, Helvetica, Arial, sans-serif;\"><a href=\"http:\/\/php.math.unifi.it\/users\/cime\/Courses\/2021\/course.php?codice=20215\" target=\"_blank\" rel=\"noopener noreferrer\">http:\/\/php.math.unifi.it\/users\/cime\/Courses\/2021\/course.php?codice=20215<\/a><\/span><\/b><\/p>\n<p>A\u00a0\u00a0motivation from the candidate is required and a\u00a0recommendation letter from the advisor of the candidates to the directors of the school will be appreciated.<\/p>\n<p>\u00a0<\/p>\n<h3>Cetraro<\/h3>\n<p>\u00a0<\/p>\n<div id=\"attachment_2668\" style=\"width: 452px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" aria-describedby=\"caption-attachment-2668\" class=\"wp-image-2668\" src=\"http:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/cetraro-300x194.jpg\" alt=\"\" width=\"442\" height=\"286\" srcset=\"https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/cetraro-300x194.jpg 300w, https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/cetraro-620x401.jpg 620w, https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/cetraro-768x497.jpg 768w, https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/cetraro.jpg 867w\" sizes=\"auto, (max-width: 442px) 100vw, 442px\" \/><p id=\"caption-attachment-2668\" class=\"wp-caption-text\">From: https:\/\/www.eccellenzecalabresi.it\/<\/p><\/div>\n<p>\u00a0<\/p>\n<p>Cetraro is a beatiful location on the Tirrenian coast of Calabria.<\/p>\n<p>To reach Cetraro, you can use the following ways:<\/p>\n<p><b> By train: <\/b> The nearest train station is that of <b>Cetraro<\/b>, on the line Roma-Salerno-Reggio Calabria where do stop only local trains.<\/p>\n<p>Fast trains (eurostars and intercities) stop in Paola, Complete informations on the train schedules can be found (in italian and english) on the web pages of Trenitalia (Italian Railways), at: <a href=\"http:\/\/www.trenitalia.it\" target=\"_blank\" rel=\"noopener noreferrer\"> http:\/\/www.trenitalia.it<\/a>.<\/p>\n<p>If informed in time, the hotel will send a car to pick you up at the Paola station. The shuttle service is not free of charge. The payment and the reservation of this service have to be arranged DIRECTLY with the hotel.<\/p>\n<p><b>By air: <\/b><\/p>\n<p>The nearest Airport is Lamezia Terme. If informed in time, the hotel will send a car to pick you up at the Lamezia airport. The shuttle service is not free of charge. The payment and the reservation of this service have to be arranged DIRECTLY with the hotel.<\/p>\n<p><b>By car:<\/b><\/p>\n<p>take the freeway Roma-Napoli-Reggio Calabria and exit in <b>Lagonegro Nord<\/b>, then road N18 (coastal road) southway or exit in <b>Spezzano Terme<\/b> and follow N283 road to Cetraro. Grand Hotel San Michele is located at GPS N39,32.349 E15,54.196. Participants are lodged at the <a href=\"http:\/\/www.sanmichele.it\">Grand Hotel S. Michele<\/a>; it is a nice Hotel, with a well kept garden and a large swimming pool.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\" wp-image-2671 aligncenter\" src=\"http:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/carteCetraro-300x208.png\" alt=\"\" width=\"399\" height=\"276\" srcset=\"https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/carteCetraro-300x208.png 300w, https:\/\/people.sissa.it\/~grozza\/wp-content\/uploads\/2020\/12\/carteCetraro.png 550w\" sizes=\"auto, (max-width: 399px) 100vw, 399px\" \/><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Model order reduction and applications \u00a0 Aims of the school MotivationThe behaviour of processes in several fields like mechanical engineering, geophysics, seismic modeling,climate\/weather prediction is usually modeled by dynamical systems. Such models often involve systems of nonlinear partial differential equations. Their approximation by classical discretization techniques like finite difference and finite element methods, leads to<a href=\"https:\/\/people.sissa.it\/~grozza\/cime-summerschool\/\" > &#8230;<\/a><\/p>\n","protected":false},"author":6,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":"","_links_to":"","_links_to_target":""},"categories":[1],"tags":[],"class_list":["post-2610","post","type-post","status-publish","format-standard","hentry","category-uncategorized","item clearfix","grid-single","has-ribbon ribbon-none"],"_links":{"self":[{"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/posts\/2610","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/users\/6"}],"replies":[{"embeddable":true,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/comments?post=2610"}],"version-history":[{"count":114,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/posts\/2610\/revisions"}],"predecessor-version":[{"id":2911,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/posts\/2610\/revisions\/2911"}],"wp:attachment":[{"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/media?parent=2610"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/categories?post=2610"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/people.sissa.it\/~grozza\/wp-json\/wp\/v2\/tags?post=2610"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}