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THIRD CYCLE - DOCTORATE DEGREE
THE GRADUATE SCHOOL OF NATURAL AND APPLIED SCIENCES
CIVIL ENGINEERING DEPARTMENT
1133 Civil Engineering(Without Thesis)
Course Information
Course Learning Outcomes
Course's Contribution To Program
ECTS Workload
Course Details
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COURSE INFORMATION
Course Code
Course Title
L+P Hour
Semester
ECTS
INS 536
FUZZY LOGIC MODELLING IN CIVIL ENGINEERING
3 + 0
2nd Semester
6
COURSE DESCRIPTION
Course Level
Doctorate Degree
Course Type
Elective
Course Objective
To introduce main principles of Fuzzy Logic Approach and Modelling Steps.
Course Content
Uncertainty Concepts; Classical Sets and Characteristic Values; Fuzzy Sets and Membership Degreees; Membership Functions; Fuzzification; Fuzzy Set Operations, Anding, Oring and Noting; Fuzzy Relationships; Fuzzy Mathematics, Addition, Subtraction, Multiplication and Division; Fuzzy Logic Propositions, Predicates, Consequents and Decisions; Defuzzification, Fuzzy Rules and Systems, Applications.Use of MATLAB Fuzzy Logic Toolbox in Fuzzy Modelling. Fuzzy-Neural Modelling Algorithms. Fuzzy Clustering Approach in Modelling. Type-2 Fuzzy Sets in Fuzzy Modelling. Use of Fuzzy Logic Approach in Civil Engineering Problems. Applications on Transportation, Hydraulics, Structure and Geotechnical Engineering. .
Prerequisites
No the prerequisite of lesson.
Corequisite
No the corequisite of lesson.
Mode of Delivery
Face to Face
COURSE LEARNING OUTCOMES
1
Will be able to have information about main principles of fuzzy logic approach.
2
Will be able to have information about uncertainty phenomenon and modelling.
3
Will be able to have information about fuzzification-inference and defuzzification mechanisms.
4
Will be able to make a model by fuzzy logic.
COURSE'S CONTRIBUTION TO PROGRAM
PO 01
PO 02
PO 03
PO 04
PO 05
PO 06
PO 07
PO 08
PO 09
PO 10
PO 11
LO 001
4
LO 002
5
LO 003
5
3
LO 004
5
Sub Total
4
5
5
3
5
Contribution
1
1
1
1
1
0
0
0
0
0
0
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
2
28
Hours for off-the-classroom study (Pre-study, practice)
14
4
56
Mid-terms
1
30
30
Final examination
1
42
42
Total Work Load
ECTS Credit of the Course
156
6
COURSE DETAILS
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L+P:
Lecture and Practice
PQ:
Program Learning Outcomes
LO:
Course Learning Outcomes
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##LOC[OK]##
{1}
##LOC[OK]##
##LOC[Cancel]##
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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