| 
 Postgraduate Course: Adaptive Signal Processing (PGEE11019)
Course Outline
| School | School of Engineering | College | College of Science and Engineering |  
| Credit level (Normal year taken) | SCQF Level 11 (Postgraduate) | Availability | Available to all students |  
| SCQF Credits | 10 | ECTS Credits | 5 |  
 
| Summary | This course deals with adaptive filters and related linear estimation techniques such as the Wiener infinite impulse response filter and Kalman filters. The concepts of training and convergence are introduced and the trade-off between performance and complexity is considered. The application of these techniques to problems in equalization, coding, spectral analysis and detection is examined. |  
| Course description | References are to sections of course text and additional notes: 
 1. Random signals (7.1-7.3)
 
 2. Cross correlation & Spectral factorization (7.4 & 7.5)
 
 3. Filter noise calculations. + derivation (7.6) - Chapter 7 problems
 
 4. The Wiener FIR filter & principle of statistical orthogonality (8.1 & 8.2)
 
 5. The Wiener IIR filter. 1 - chapter 8a
 
 6. The Wiener IIR filter 2
 
 7. The Kalman Filter 1 - chapter 8b
 
 8. The Kalman Filter 2
 
 9. Adaptive Filters: Least squares and recursive least squares, (8.3 & example 8.3)
 
 10. The least mean squares algorithm (8.3.2 & example 8.2) (Problems 8.3-8.5 plus extra)
 
 11. Comparison of Algorithms
 
 12. Applications in equalisation and echo cancellation plus (WMF case study)
 
 13. Applications in equalisation and echo cancellation - contd
 
 14. Classical spectral analysis
 
 15. Autoregressive spectral analysis
 
 16. Spatially variant apodization - chapter 9a
 
 17. Amplitude & Phase Estimation (APES) - chapter 9a
 
 18. Recent Advances in Adaptive Filtering - chapter 9b
 |  
Entry Requirements (not applicable to Visiting Students)
| Pre-requisites | It is RECOMMENDED that students have passed    
Statistical Signal Processing (PGEE11027) AND   
Discrete-Time Signal Analysis (PGEE11026) 
 | Co-requisites |  |  
| Prohibited Combinations |  | Other requirements | None |  
| Additional Costs | Compulsory book purchase (from £39.75): B. Mulgrew, P.M. Grant, and J.S. Thompson, Digital Signal Processing: Concepts and Applications (2nd Ed), Palgrave, 2003 |  
Information for Visiting Students 
| Pre-requisites | None |  
		| High Demand Course? | Yes |  
Course Delivery Information
|  |  
| Academic year 2017/18, Available to all students (SV1) | Quota:  None |  | Course Start | Semester 2 |  Timetable | Timetable | 
| Learning and Teaching activities (Further Info) | Total Hours:
100
(
 Lecture Hours 22,
 Seminar/Tutorial Hours 11,
 Formative Assessment Hours 1,
 Summative Assessment Hours 2,
 Programme Level Learning and Teaching Hours 2,
Directed Learning and Independent Learning Hours
62 ) |  
| Assessment (Further Info) | Written Exam
100 %,
Coursework
0 %,
Practical Exam
0 % |  
 
| Additional Information (Assessment) | 100% closed-book formal written examination |  
| Feedback | Not entered |  
| Exam Information |  
    | Exam Diet | Paper Name | Hours & Minutes |  |  
| Main Exam Diet S2 (April/May) |  | 2:00 |  |  
 
Learning Outcomes 
| On completion of this course, the student will be able to: 
        perform simple spectral factorization tasks and calculate noise component at output of discrete time filters.- derive and apply the principle of statistical orthogonality  and design Wiener infinite impulse response (IIR) filters- derive the scalar Kalman filter and apply the vector Kalman filter  - - derive the least mean squares (LMS) and recursive least squares (RLS) adaptive filter algorithms and apply them to problems in system identification, linear predication and equalizationderive and apply the spatially variant apodization (SVA). |  
Additional Information
| Graduate Attributes and Skills | Not entered |  
| Additional Class Delivery Information | 2 lectures and 1 tutorial per week |  
| Keywords | spectral analysis,spectral estimation,signal detection,adaptive filters,least squares methods |  
Contacts 
| Course organiser | Prof Bernie Mulgrew Tel: (0131 6)50 5580
 Email:
 | Course secretary | Miss Megan Inch Tel: (0131 6)51 7079
 Email:
 |   |  © Copyright 2017 The University of Edinburgh -  6 February 2017 8:55 pm |