Course syllabus - Design of Autonomous Systems
Scope
7.5 credits
Course code
DVA485
Valid from
Autumn semester 2020
Education level
Second cycle
Progressive Specialisation
A1F (Second cycle, has second-cycle course/s as entry requirements).
Main area(s)
Computer Science
School
School of Innovation, Design and Engineering
Ratified
2020-01-24
Literature lists
Course literature is preliminary up to 8 weeks before course start. Course literature can be valid over several semesters.
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Books
Probabilistic robotics
Cambridge, Mass. : MIT Press, cop. 2005 - xx, 647 s.
ISBN: 0262201623 LIBRIS-ID: 10196274
Articles
AutoRIO: An Indoor Testbed for Developing Autonomous Vehicles
International Japan-Africa Conference on Electronics, Communications and Computations (JAC-ECC),
Web Addresses
Objectives
The aim with the course is to give the students ability to control dependability for autonomous systems built with essential building blocks such as data fusion, computer vision, and artificial intelligence for perception and decision making.
Learning outcomes
After completing the course, the student shall be able to:
1. explain guidance strategies for autonomous vehicles
2. summarize the theory behind and the implementation of sensing and perception of autonomous vehicles
3. exemplify how data fusion of different sensor data can be applied
4. compare possible architectures for autonomous systems with long response times
5. program heterogeneous embedded systems for autonomous applications, and
6. discuss methods for analysis and verification of autonomous systems
Course content
Data fusion and computer vision, Artificial intelligence for perception and decision making, Redundancy techniques for reliability and fail-safe designs for autonomous systems, Heterogeneous sensing and computing systems, and energy management.
Tuition
Lectures, project and laboratory work.
Specific requirements
At least 160 credits of which at least 30 credits computer science, and/or 30 credits in electronics, and Autonomous vehicles 5 credits or equivalent.
In addition, Swedish course B/Swedish course 3 and English course A/English course 6 are required. For courses given entirely in English, exemption is made from the requirement in Swedish course B/Swedish course 3.
Examination
Laboratory work (LAB1), 3 credits, examines the learning objectives 2, 3, 4 and 5, marks Fail (U) or Pass (G)
Project (PRO1), 3 credits, examines the learning objectives 1-6, marks Fail (U), 3, 4 or 5
Written assignment (INL1), 1,5 credits, examines the learning objectives 1 and 6, marks Fail (U), 3, 4 or 5
A student who has a certificate from MDU regarding a disability has the opportunity to submit a request for supportive measures during written examinations or other forms of examination, in accordance with the Rules and Regulations for Examinations at First-cycle and Second-cycle Level at Mälardalen University (2020/1655). It is the examiner who takes decisions on any supportive measures, based on what kind of certificate is issued, and in that case which measures are to be applied.
Suspicions of attempting to deceive in examinations (cheating) are reported to the Vice-Chancellor, in accordance with the Higher Education Ordinance, and are examined by the University’s Disciplinary Board. If the Disciplinary Board considers the student to be guilty of a disciplinary offence, the Board will take a decision on disciplinary action, which will be a warning or suspension.
Grade
Pass with distinction, Pass with credit, Pass, Fail
Interim Regulations and Other Regulations
The course completely overlaps with DVA472 Design of autonomous systems.
The course can be included in the technology field for dependable systems.