Nevşehir Hacı Bektaş Veli University Course Catalogue

Information Of Programmes

INSTITUTE OF SCIENCE / EEM-513 - ELECTRICAL AND ELECTRONICS ENGINEERING (MASTER)

Code: EEM-513 Course Title: ARTIFICAL NEURAL NETWORKS Theoretical+Practice: 3+0 ECTS: 6
Year/Semester of Study 1 / Fall Semester
Level of Course 2nd Cycle Degree Programme
Type of Course Optional
Department ELECTRICAL AND ELECTRONICS ENGINEERING (MASTER)
Pre-requisities and Co-requisites None
Mode of Delivery Face to Face
Teaching Period 14 Weeks
Name of Lecturer EBUBEKİR KAYA (ebubekir@nevsehir.edu.tr)
Name of Lecturer(s)
Language of Instruction Turkish
Work Placement(s) None
Objectives of the Course
Presenting basic theoretical information and techniques on how to use artificial neural networks in problem solving.

Learning Outcomes PO MME
The students who succeeded in this course:
LO-1 PO-1 Sufficient knowledge in mathematics, science and engineering related to their branches; the ability to apply theoretical and practical knowledge in these areas to model and solve engineering problems.
PO-2 The ability to identify, formulate, and solve complex engineering problems; selecting and applying appropriate analysis and modeling methods for this purpose.
PO-4 Ability to develop, select and use modern techniques and tools necessary for engineering applications; ability to use information technologies effectively.
PO-5 Ability to design experiments, conduct experiments, collect data, analyze and interpret results for examination of engineering problems.
PO-6 The ability to work effectively in disciplinary and multidisciplinary teams; individual work skill.
PO-8 Awareness of the need for lifelong learning; access to knowledge, ability to follow developments in science and technology, and constant self-renewal.
Examination
LO-2 PO-1 Sufficient knowledge in mathematics, science and engineering related to their branches; the ability to apply theoretical and practical knowledge in these areas to model and solve engineering problems.
PO-2 The ability to identify, formulate, and solve complex engineering problems; selecting and applying appropriate analysis and modeling methods for this purpose.
PO-4 Ability to develop, select and use modern techniques and tools necessary for engineering applications; ability to use information technologies effectively.
PO-5 Ability to design experiments, conduct experiments, collect data, analyze and interpret results for examination of engineering problems.
PO-6 The ability to work effectively in disciplinary and multidisciplinary teams; individual work skill.
PO-8 Awareness of the need for lifelong learning; access to knowledge, ability to follow developments in science and technology, and constant self-renewal.
Examination
LO-3 PO-1 Sufficient knowledge in mathematics, science and engineering related to their branches; the ability to apply theoretical and practical knowledge in these areas to model and solve engineering problems.
PO-2 The ability to identify, formulate, and solve complex engineering problems; selecting and applying appropriate analysis and modeling methods for this purpose.
PO-4 Ability to develop, select and use modern techniques and tools necessary for engineering applications; ability to use information technologies effectively.
PO-5 Ability to design experiments, conduct experiments, collect data, analyze and interpret results for examination of engineering problems.
PO-6 The ability to work effectively in disciplinary and multidisciplinary teams; individual work skill.
PO-8 Awareness of the need for lifelong learning; access to knowledge, ability to follow developments in science and technology, and constant self-renewal.
Examination
PO: Programme Outcomes
MME:Method of measurement & Evaluation

Course Contents
Definition and creation of artificial neural networks, perceptron, delta rule,feedforward and feedback network structures, back propagation network, delta bar delta, Hamming network, supervised and unsupervised learning methods.
Weekly Course Content
Week Subject Learning Activities and Teaching Methods
1 mid-term exam
2 final exam
Recommend Course Book / Supplementary Book/Reading
1 K. Gurney, An Introduction to Neural Networks, CRC Press, 1997.
2 Ç. Elmas, Yapay Sinir Ağları, Seçkin Yayınevi,.2003.
3 Ö. Efe, O. Kaynak, Yapay Sinir Ağları ve Uygulamaları, Boğaziçi Ünv., 2000.
4 Haykin, S., “Neural Networks- A Comprehensive Foundation”, Prentice Hall, (1999).
Required Course instruments and materials
Book, laptop

Assessment Methods
Type of Assessment Week Hours Weight(%)
mid-term exam 8 1 40
Other assessment methods
1.Oral Examination
2.Quiz
3.Laboratory exam
4.Presentation
5.Report
6.Workshop
7.Performance Project
8.Term Paper
9.Project
final exam 16 1 60

Student Work Load
Type of Work Weekly Hours Number of Weeks Work Load
Weekly Course Hours (Theoretical+Practice) 3 14 42
Outside Class
       a) Reading 3 10 30
       b) Search in internet/Library 3 10 30
       c) Performance Project 0
       d) Prepare a workshop/Presentation/Report 0
       e) Term paper/Project 0
Oral Examination 0
Quiz 0
Laboratory exam 0
Own study for mid-term exam 4 10 40
mid-term exam 1 1 1
Own study for final exam 4 10 40
final exam 1 1 1
0
0
Total work load; 184