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DEGREE REGULATIONS & PROGRAMMES OF STUDY 2013/2014 -
- ARCHIVE as at 1 September 2013 for reference only
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DRPS : Course Catalogue : School of Engineering : Postgrad (School of Engineering)

Postgraduate Course: Discrete-Time Signal Analysis (PGEE11026)

Course Outline
SchoolSchool of Engineering CollegeCollege of Science and Engineering
Course typeStandard AvailabilityAvailable to all students
Credit level (Normal year taken)SCQF Level 11 (Postgraduate) Credits10
Home subject areaPostgrad (School of Engineering) Other subject areaNone
Course website None Taught in Gaelic?No
Course descriptionThe aim of this course is to impart a knowledge and understanding of statistical analysis of signals and systems when considered in the time and frequency domains, and to enable the student to formally analyse systems through the use of spectral analysis and correlations. The student will also be able to take account of the effects of sampling in the time and frequency domain and understand how these affect the practical analysis procedures. The students will be design a finite impulse response digital. An appreciation of simple sample rate changes and their effect on the filter design process would also be expected. At the end of the course the student will develop skills to use matched and Wiener filters for practical problems.
Entry Requirements (not applicable to Visiting Students)
Pre-requisites Co-requisites
Prohibited Combinations Students MUST NOT also be taking Digital Signal Analysis 4 (ELEE10010)
Other requirements Course(s) covering Fourier transforms, linear systems and probability
Additional Costs None
Information for Visiting Students
Pre-requisitesNone
Displayed in Visiting Students Prospectus?Yes
Course Delivery Information
Delivery period: 2013/14 Semester 1, Available to all students (SV1) Learn enabled:  Yes Quota:  None
Web Timetable Web Timetable
Class Delivery Information 2 lectures and 1 tutorial per week
Course Start Date 16/09/2013
Breakdown of Learning and Teaching activities (Further Info) Total Hours: 100 ( Lecture Hours 20, Seminar/Tutorial Hours 10, Programme Level Learning and Teaching Hours 2, Directed Learning and Independent Learning Hours 68 )
Additional Notes
Breakdown of Assessment Methods (Further Info) Written Exam 100 %, Coursework 0 %, Practical Exam 0 %
Exam Information
Exam Diet Paper Name Hours:Minutes
Main Exam Diet S1 (December)Discrete-Time Signal Analysis2:00
Summary of Intended Learning Outcomes
After successful completion of this course a student should be able to:

- explain the relationships between and be able to manipulate time domain and frequency domain representations of signals;

- apply correlation techniques to an analytic or numerical problem, and relate the outcome to the statistical properties of the signal source(s);

- correctly define probability density functions and cumulative distribution functions, and be able to manipulate them to find moments of random variables and their sums;

- define the distinctions between wide-sense stationary, stationary, and ergodic processes, and be able to reason to which category a random process belongs;

- derive the power spectrum of a signal;

- define techniques for calculating moments in spectral and temporal domains;

- explain the importance of linear phase filter design and apply window techniques to design a FIR filter;

- evaluate power spectral density at the output of a linear filter given the PSD at the input and perform a spectral factorisation on the output of a simple linear filter;

- recall how the discrete Fourier transform arises and recognise the effect of resolution and windowing functions upon the discrete Fourier transform;

- analyse the effects of downsampling and upsampling on a signal and recognise the importance of decimation and interpolation filtering;

- explain the basis of matched filtering and be able to determine an appropriate filter for a given problem;

- apply a Wiener filter to the detection of a signal corrupted by additive noise, and for signal prediction.
Assessment Information
100% closed-book formal written examination
Special Arrangements
None
Additional Information
Academic description Not entered
Syllabus LECTURES

L1 Frequency Analysis of Discrete-Time Signals (4.2.1-4.2.3, 4.2.5)
Fourier Series for Discrete-Time Signals, Energy and Power Density Spectra

L2 Properties of the Fourier Transform (4.4)
Properties and Theorems

L3 Discrete Fourier transform (7.1.1-7.1.2, 7.2.1, 7.4)
Frequency-Domain sampling, DFT, Properties of the DFT, Frequency Analysis of Signals using DFT

L4 Correlation of Discrete-Time Signals (2.6.1-2.6.2)
Crosscorrelation and Autocorrelation, Properties

L5 Correlation of Discrete-Time Signals (2.6.3-2.6.4)
Correlation of Periodic Signals, Input-Output Correlation Sequences

L6 Linear Time-Invariant Systems (5.2, 5.3.1)
Frequency Response of a System, Input-Output Correlation Functions and Spectra

L7 Random Signals, Correlation Functions and Power Spectra (12.1.1-12.1.3, 12.1.5)
Random Processes, Stationary Random Processes, Ensemble Averages, Power Density Spectrum

L8 Discrete-Time Random Signals and Ergodicity (12.1.6-12.1.8)
Discrete-Time Random Signals, Time averages, Mean-Ergodic Process

L9 Design of FIR filters (I) (10.2.1-10.2.2)
Symmetric FIR filters, Design of Linear-Phase FIR filter using Windows

L10 Design of FIR Filters (II) (10.2.3-10.2.4)
Design using the Frequency-Sampling method, Optimum Equiripple FIRfilters

L11 Power spectrum estimation (I) (14.1, 14.2.1-14.2.3)
Computation of Energy Density Spectrum, Periodogram, Use of DFT, Bartlett, Welch, Blackman & Tukey

L12 Power spectrum estimation (II) (14.2.4-14.2.5, 14.4)
Comparison of non-parametric techniques, filterbank realisation of periodogram, Minimum Variance Spectral Estimates

L13 Multirate Signal Processing (11.1-11.4)
Decimation, Interpolation, Sample rate conversion

L14 Analogue to digital converter (6.3.1-6.3.3, 6.6.1)
Analogue-to-Digital converters, quantization and coding, analysis of quantization errors, oversampling sigma-delta converter

L15 Matched filters
Definition and purpose

L16 Matched filter examples
Examples

L17 Wiener filters (12.7)
Definition and purpose

L18 Wiener filter examples
Examples

In addition, a formative class test is run in week 4, and a revision lecture in week 8. Numbers in brackets refer to sections of the course textbook.
Transferable skills Not entered
Reading list Digital Signal Processing: Principles, Algorithms and Applications, New International Edition, Proakis & Manolakis
Study Abroad Not entered
Study Pattern Not entered
Keywordssignals, time and frequency domain, correlation, fast Fourier transform
Contacts
Course organiserDr David Laurenson
Tel: (0131 6)50 5579
Email: Dave.Laurenson@ed.ac.uk
Course secretaryMrs Sharon Potter
Tel: (0131 6)51 7079
Email: Sharon.Potter@ed.ac.uk
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