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THIRD CYCLE - DOCTORATE DEGREE
THE GRADUATE SCHOOL OF NATURAL AND APPLIED SCIENCES
ELECTRICAL AND ELECTRONICS ENGINEERING DEPARTMENT
1183 Electrical and Electronics Engineering(Without Thesis)
Course Information
Course Learning Outcomes
Course's Contribution To Program
ECTS Workload
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COURSE INFORMATION
Course Code
Course Title
L+P Hour
Semester
ECTS
ELK 521
OPTIMIZATION TECHNIQUES
3 + 0
1st Semester
7,5
COURSE DESCRIPTION
Course Level
Doctorate Degree
Course Type
Elective
Course Objective
To teach Fundamentals related to optimization techniques and to gain graduate students the ability of using these techniques in solving real world problems.
Course Content
One-dimensional nonlinear numerical optimization / Multi-dimensional nonlinear numerical optimization / Mathematical background / Analytical conditions for optimality / First-order methods / Second-order methods / Second-order approximate methods / Applications
Prerequisites
No the prerequisite of lesson.
Corequisite
No the corequisite of lesson.
Mode of Delivery
Face to Face
COURSE LEARNING OUTCOMES
1
Knows the fundamental concepts of numerical optimization
2
Knows gradient-based unconstrained numerical optimization methods
3
Can solve related real-world problems by optimization methods
4
Can do modeling and prediction by Artificial Neural Networks
COURSE'S CONTRIBUTION TO PROGRAM
Data not found.
ECTS ALLOCATED BASED ON STUDENT WORKLOAD BY THE COURSE DESCRIPTION
Activities
Quantity
Duration (Hour)
Total Work Load (Hour)
Course Duration (14 weeks/theoric+practical)
14
3
42
Hours for off-the-classroom study (Pre-study, practice)
14
2
28
Assignments
5
12
60
Mid-terms
1
35
35
Final examination
1
30
30
Total Work Load
ECTS Credit of the Course
195
7,5
COURSE DETAILS
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L+P:
Lecture and Practice
PQ:
Program Learning Outcomes
LO:
Course Learning Outcomes
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Home Page
About University
Name And Address
Acedemic Authorities
General Discription
Academic Calendar
General Admission Requirements
Recognition of Prior Learning
General Registration Procedures
ECTS Credit Allocation
Academic Guidance
Information For Students
Cost Of Living
Accommodation
Meals
Medical Facilities
Facilities for Special Needs Students
Insurance
Financial Support for Students
Student Affairs
Learning Facilities
International Programs
Language Courses
Internships
Sports Facilities and Leisure Activities
Student Associations
Practical Information for Mobile Students
Degree Programmes