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FSG3130 Uncertainty Analysis 5.0 credits

About course offering

For course offering

Autumn 2023 Start 30 Oct 2023 programme students

Target group

No information inserted

Part of programme

No information inserted

Periods

P2 (5.0 hp)

Duration

30 Oct 2023
15 Jan 2024

Pace of study

25%

Form of study

Normal Daytime

Language of instruction

English

Course location

KTH Campus

Number of places

Places are not limited

Planned modular schedule

Application

For course offering

Autumn 2023 Start 30 Oct 2023 programme students

Application code

51100

Contact

For course offering

Autumn 2023 Start 30 Oct 2023 programme students

Examiner

No information inserted

Course coordinator

No information inserted

Teachers

No information inserted
Headings with content from the Course syllabus FSG3130 (Spring 2019–) are denoted with an asterisk ( )

Content and learning outcomes

Course disposition

  1. Introduction: Errors, uncertainty, and UQ. Different viewpoints.

  2. Basic statistical tools: Errors and uncertainties in a measured variable

  3. UQ forward problem: Uncertainty propagation from multiple variables

  4. Sensitivity analysis

  5. UQ inverse problem: Data analysis and regression

  6. Verification and validation of simulations

Course contents

  1. Experimentation, Errors and Uncertainty
  2. Errors and Uncertainties in a Measured Variable
  3. Uncertainty in a Result Determined from Multiple Variables
  4. General Uncertainty Analysis. Planning an Experiment and Application in validation
  5. Detailed Uncertainty Analysis: Designing, Debugging, and Executing an Experiment
  6. Validation of Simulations
  7. Data Analysis, Regression, and Reporting of Results

Intended learning outcomes

The student will be able to discuss general issues regarding mainly experimental uncertainties relevant for measurements with special focus to fluid dynamic systems, the difference between systematic and random errors (bias and uncertainty), confidence intervals, calibration errors, error propagation in data reduction equations, regression analysis etc. There will also be a discussion about how to determine the uncertainty propagation by using Monte Carlo analysis. The uncertainty analysis will be exemplified through discussion of various real-life experiments (and to some extent simulations). Although many of the examples are taking from the fluid dynamics field, the discussion of the uncertainty analysis is general and can be applied to many other scientific fields. After completing this course the student should be able to:

  • distinguish between random and systematic (uncertainty and bias) error.
  • understand basic statistical concepts and the meaning of confidence intervals.
  • calculate uncertainty in a measured variable based on the Taylor series method.
  • perform a Monte-Carlo based uncertainty analysis.
  • evaluate how long time a variable need to be sampled in order to obtain a certain accuracy in the measured/simulated statistics.
  • handle outliers in a reliable and systematic way.
  • design, debug and execute an experiment.
  • understand the difference between validation and verification of simulations, and how validation can be performed.
  • do an accurate regression analysis.

Literature and preparations

Specific prerequisites

A master degree in a mechanics related area is recommended.

Recommended prerequisites

A master degree in a mechanics related area.

Equipment

No information inserted

Literature

A. Segalini & H. Alfredsson, Uncertainty Analysis, Lecture notes, 2018

H.W. Coleman & W. Glenn Steele: Experimentation, validation, and Uncertainty Analysis for Engineers, (3rd Edition), Wiley, 2018

Rabinovich: Evaluating Measurement Accuracy, third edition, Springer, 2018

Examination and completion

If the course is discontinued, students may request to be examined during the following two academic years.

Grading scale

P, F

Examination

  • DEL1 - Participation, 1.0 credits, grading scale: P, F
  • INL1 - Assignment, 4.0 credits, grading scale: P, F

Based on recommendation from KTH’s coordinator for disabilities, the examiner will decide how to adapt an examination for students with documented disability.

The examiner may apply another examination format when re-examining individual students.

DEL1 Participating 1,0 hp (P, F)

INL1 Assignment 4,0 hp (P, F)

Other requirements for final grade

The following items have to be approved in order to obtain a pass on the course:

  • Compulsory and active attendance during at least 80% of the lecture time
  • Successful completion of homework assignment within given time frame

Opportunity to complete the requirements via supplementary examination

not possible

Opportunity to raise an approved grade via renewed examination

Renewed examination is possible

Examiner

Ethical approach

  • All members of a group are responsible for the group's work.
  • In any assessment, every student shall honestly disclose any help received and sources used.
  • In an oral assessment, every student shall be able to present and answer questions about the entire assignment and solution.

Further information

Course room in Canvas

Registered students find further information about the implementation of the course in the course room in Canvas. A link to the course room can be found under the tab Studies in the Personal menu at the start of the course.

Offered by

Main field of study

This course does not belong to any Main field of study.

Education cycle

Third cycle

Add-on studies

No information inserted

Supplementary information

The lecture part of the course is given during one week (approximately 20h) in P2. More information will be posted on Canvas:

https://canvas.kth.se/courses/38459

Postgraduate course

Postgraduate courses at SCI/Mechanics