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2022/23 Taught Postgraduate Module Catalogue

JALJ0006 Random Phenomena

10 creditsClass Size: 20

Module manager: Professor Edvard Govekar
Email: .

Taught: Semester 2 (Jan to Jun) View Timetable

Year running 2022/23

Pre-requisite qualifications

Min 2(i) Engineering or Physical Sciences

This module is not approved as an Elective

Objectives

On completion of this module, students should be able to

introduce the concepts of variability, description, characterisation and interpretation of random data
acquaint the students with the concept of probability and the basic statistical methods for the description and characterisation of random data
equip the students with the basic knowledge for the analysis, description, characterisation and interpretation of experimental data
use the Matlab environment

Learning outcomes

Knowledge and understanding
The students obtain the knowledge about:
the fundamentals of probability and statistical description,
of random phenomena,
the fundamentals of time series/sensor signal analysis,
using the statistical methods of description, deduction and interpretation of data variability in the characterisation and design of products, systems and processes.
The students will understand:
the concepts of variability, randomness, probability, probability distribution of random variables,
the assumptions and principles of statistical analysis and deduction,
the assumptions of stationariness and the ergodicity principles in the analysis of random processes.

Usage
for the empirical description, analysis and characterisation of experimental measurement data,
for finding empirical laws,
for analyses and empirical characterisation of existing products and for designing new products, systems and processes.

Reflection
The presented concepts and methods will be used to attain new knowledge and solve scientific and industrial problems.

Transferrable skills related to more than one course
Using domestic and foreign literature. Problem identification and problem solving methodology in different fields.

Skills outcomes
Competences:
the ability to analyse, characterise and interpret variable random data
the ability to conduct linear analysis and characterise sensor signals
using the methods of technical statistics for the description, analysis, characterisation, design and planning of products, technical systems and processes


Syllabus

- Introduction: examples of random phenomena and the problem of variability in the engineering, experiments and randomness of experiment outcomes, events.
- Probability: relations and event probabilities; random variables and probability distributions, functions of random variables; means and moments of random variables.
- Technical statistics: important statistics, properties and probability distributions of statistics; point estimates; methods for determining estimates; interval estimates; statistical hypotheses, tests and deduction; errors of deduction; goodness-of-fit tests, tests for dependence and homogeneity; analysis of variance; function estimates: parametric and non-parametric regression.
Random processes: examples of random processes; moments and characteristics; stationariness and ergodicity; linear transforms of random processes, autocorrelation function, spectral density, coherence function, examples of random process characterisation.

Teaching methods

Delivery typeNumberLength hoursStudent hours
Lecture301.0030.00
Tutorial301.0030.00
Private study hours60.00
Total Contact hours60.00
Total hours (100hr per 10 credits)120.00

Methods of assessment


Coursework
Assessment typeNotes% of formal assessment
Tutorial Performance.50.00
Total percentage (Assessment Coursework)50.00

Normally resits will be assessed by the same methodology as the first attempt, unless otherwise stated


Exams
Exam typeExam duration% of formal assessment
Standard exam (closed essays, MCQs etc)1 hr 50.00
Total percentage (Assessment Exams)50.00

Normally resits will be assessed by the same methodology as the first attempt, unless otherwise stated

Reading list

There is no reading list for this module

Last updated: 29/04/2022 15:31:27

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