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Glossary
Semester (Sem)
1First Semester
2Second Semester
AAnnual course
Educational activities
CSimilar or integrative activities
Language
Course completely offered in italian
Course completely offered in english
--Not available
Innovative teaching
The credits shown next to this symbol indicate the part of the course CFUs provided with Innovative teaching.
These CFUs include:
  • Subject taught jointly with companies or organizations
  • Blended Learning & Flipped Classroom
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Degree ProgrammesCambia LinguaCambia Lingua
Course Details

Context
Academic Year 2014/2015
School School of Industrial and Information Engineering
Name (Master of Science degree)(ord. 270) - MI (481) Computer Science and Engineering
Track T2A - COMPUTER SCIENCE AND ENGINEERING
Programme Year 1

Course Details
ID Code 089234
Course Title MODEL IDENTIFICATION AND DATA ANALYSIS
Course Type Integrated Course
Credits (CFU / ECTS) 10.0
Semester Second Semester
Course Description In the models used in Engineering and Science, one often encounters uncertain elements. The aim of this course is to present the methods which can be used to estimate uncertain parameters and predict un-measurable signals from experimental data. Both batch and recursive methods are introduced. More precisely, we present very powerful identification techniques for the estimation of dynamical models in input-output description (Least Squares, Maximum Likelihood, etc), and for the estimation of the matrices of state space models via the Hankel matrix. Furthermore, we discuss the Kalman filter, a virtual sensor enabling the tracking of unmeasurable signal, which plays a major role in contemporary engineering. Real time identification techniques are also extremely useful to work out self-tuning predictors and governors, and the issue of adaptive systems is also touched upon. The application of the id methods to simple prediction and control problem is discussed with the contribution of scholars from industry and research centers.
Scientific-Disciplinary Sector (SSD)
Educational activities SSD Code SSD Description CFU
C
ING-INF/04
SYSTEMS AND CONTROL ENGINEERING
10.0

Schedule, add and removeAlphabetical groupCodeModule DescriptionProfessorCFUSem.LanguageCourse details
From (included)To (excluded)
--AZZZZ089233MODEL IDENTIFICATION AND DATA ANALYSIS 2Garatti Simone5.02
089232MODEL IDENTIFICATION AND DATA ANALYSIS 1Bittanti Sergio5.02
23/04/2019 Area Servizi ICT v. 2.11.10 / 2.11.10