Studying at the University of Verona
Here you can find information on the organisational aspects of the Programme, lecture timetables, learning activities and useful contact details for your time at the University, from enrolment to graduation.
Study Plan
The Study Plan includes all modules, teaching and learning activities that each student will need to undertake during their time at the University.
Please select your Study Plan based on your enrollment year.
1° Year
Modules | Credits | TAF | SSD |
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Compulsory activities for Smart Systems & Data Analytics
Compulsory activities for Embedded & Iot Systems
2° Year activated in the A.Y. 2024/2025
Modules | Credits | TAF | SSD |
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Compulsory activities for Embedded & Iot Systems
Compulsory activities for Robotics Systems
Compulsory activities for Smart Systems & Data Analytics
Modules | Credits | TAF | SSD |
---|
Compulsory activities for Smart Systems & Data Analytics
Compulsory activities for Embedded & Iot Systems
Modules | Credits | TAF | SSD |
---|
Compulsory activities for Embedded & Iot Systems
Compulsory activities for Robotics Systems
Compulsory activities for Smart Systems & Data Analytics
Modules | Credits | TAF | SSD |
---|
3 modules among the following (Computer vision and Human computer interaction 1st year only; Advanced computer architectures 2nd year only; the other courses both 1st and 2nd year. A.A. 2024/2025: Data visualization, Systems design laboratory and Electronic devices and sensors are not activated)
Legend | Type of training activity (TTA)
TAF (Type of Educational Activity) All courses and activities are classified into different types of educational activities, indicated by a letter.
Process monitoring (2023/2024)
Teaching code
4S009011
Credits
6
Language
English
Scientific Disciplinary Sector (SSD)
ING-INF/05 - INFORMATION PROCESSING SYSTEMS
Courses Single
Authorized
The teaching is organized as follows:
Teoria
Laboratorio
Learning objectives
The course aims to provide students with skills in: i) analyzing data using univariate, multivariate and high-dimensional statistics methods; ii) identification of anomalous situations; iii) analysis of heterogeneous data; iv) analysis of dynamic and non-stationary processes; v) time series prediction. At the end of the course the student will have to demonstrate that he is able to manage the monitoring of an industrial process. In particular, he will have to demonstrate that he is able to: i) identify potential failure modes; ii) design a data acquisition system on the production line; iii) identify anomalies in the process; iv) optimize the process parameters according to predefined objectives (rejection rate, time reduction, etc.); v) analyze the causes of unexpected failures (root cause analysis); vi) manage the maintenance of the system with predictive techniques.
Prerequisites and basic notions
The student should have basic skills in math, physics, linear algebra, probability and statistics.
Program
Measurement and sensors:
- Foundamentals of industrial metrology: basic definitions, international system of units, measurement system model, errors, static and dynamic calibration
- Displacement measurement: resistive potentiometers, linear variable differential transformers, eddy current transducers, triangulation photodiodes, encoders, strain gauges
- Vibration measurement: vibrometers and accelerometers
- Flow measurement: pitot tube, hot-wire anemometer, pressure drop flowmeters, drag force flowmeter, ultrasonic flowmeter
- Thermal measurement: bimetallic thermometers, thermocouples, resistance temperature detectors, thermistors, bolometers and thermal imaging
Data analysis:
- Monitoring charts: Shewhart, cumulative sum, moving average, exponentially weighted moving average, Western Electric rules
- Univariate monitoring schemes: hypothesis testing, generalized likelihood ratio, Kullback-Leibler divergence, Hellinger distance, ordinary least square, ridge regression, principal component analysis and regression
- Multivariate monitoring schemes: multivariate monitoring charts, dynamic latent variable regression
- Unsupervised data analysis: hierarchical clustering, mean shift, k-Nearest neighbours, k-means, one-class SVM, support vector data description
- Fault isolation techniques
Bibliography
Didactic methods
Lectures, laboratory experiences, exercises.
Learning assessment procedures
The exam involves the discussion of a project proposing a solution to an industrial problem.
The student will present his/her work in about 15 minutes (with or without the use of support material such as slides, written report, demo, etc.), followed by a Q&A session.
Evaluation criteria
For the generation of the mark it will be taken into account:
- performance of the developed system (with different metrics depending on the problem);
- theoretical motivation behind the student's design choices;
- ability to clearly and concisely present the key points of the project;
- ability to support a discussion on possible alternative solutions and potential causes of failure of the solution developed.
The student must also demonstrate mastery of all the topics in the program (even those not addressed during the project).
Criteria for the composition of the final grade
The mark will be based on the discussion of an individual project focusing on the topics presented in the course.
Exam language
Inglese/English