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COURSE INFORMATION
Course CodeCourse TitleL+P HourSemesterECTS
CENG 511NEURAL NETWORKS AND ENGINEERING APPLICATIONS3 + 02nd Semester7,5

COURSE DESCRIPTION
Course Level Master's Degree
Course Type Elective
Course Objective Learning of Artificial Neural Network concept, improving some models via Artificial Neural Networks, providing ability for determining the optimal network model.
Course Content Biological neurons, artificial neuron models; Neural net architectures, fully connected, layered, feed forward and modular networks; Neural learning, correlation and feedback-based weight adaptation learning; Neural network usages, classification, clustering, vector quantization, pattern recognition, function approximation, forecasting, control applications, optimization; Preprocessing, scanned image input, image compression, edge detection, segmentation; Principal component neural networks, k-means; Various Remote Sensing Applications of Artificial Neural Networks.
Prerequisites No the prerequisite of lesson.
Corequisite No the corequisite of lesson.
Mode of Delivery Face to Face

COURSE LEARNING OUTCOMES
1Differentiates between suitable and unsuitable areas for using of Artificial Neural Networks
2Lists various of ANNs
3Represents different structures for ANNs
4Represents implementation of ANNs in Matlab
5Explains Matlab ANN toolbox

COURSE'S CONTRIBUTION TO PROGRAM
PO 01PO 02PO 03PO 04PO 05PO 06PO 07PO 08PO 09PO 10PO 11PO 12
LO 00152432       
LO 00252432       
LO 00352432       
LO 00452432       
LO 00552432       
Sub Total2510201510       
Contribution524320000000

ECTS ALLOCATED BASED ON STUDENT WORKLOAD BY THE COURSE DESCRIPTION
ActivitiesQuantityDuration (Hour)Total Work Load (Hour)
Course Duration (14 weeks/theoric+practical)15345
Hours for off-the-classroom study (Pre-study, practice)15460
Mid-terms11515
Final examination13030
Report / Project31545
Total Work Load

ECTS Credit of the Course






195

7,5
COURSE DETAILS
 Select Year   


 Course TermNoInstructors
Details 2013-2014 Fall1EMRE ÇOMAK
Details 2011-2012 Fall1EMRE ÇOMAK
Details 2010-2011 Fall1EMRE ÇOMAK
Details 2009-2010 Fall1EMRE ÇOMAK


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Course Details
Course Code Course Title L+P Hour Course Code Language Of Instruction Course Semester
CENG 511 NEURAL NETWORKS AND ENGINEERING APPLICATIONS 3 + 0 1 Turkish 2013-2014 Fall
Course Coordinator  E-Mail  Phone Number  Course Location Attendance
MUH A04125 %
Goals Learning of Artificial Neural Network concept, improving some models via Artificial Neural Networks, providing ability for determining the optimal network model.
Content Biological neurons, artificial neuron models; Neural net architectures, fully connected, layered, feed forward and modular networks; Neural learning, correlation and feedback-based weight adaptation learning; Neural network usages, classification, clustering, vector quantization, pattern recognition, function approximation, forecasting, control applications, optimization; Preprocessing, scanned image input, image compression, edge detection, segmentation; Principal component neural networks, k-means; Various Remote Sensing Applications of Artificial Neural Networks.
Topics
WeeksTopics
1 Real and Artificial Neurons
2 Concepts of Supervised and Unsupervised Learning
3 Perceptron and Multi Layer Perceptron
4 Radial Basis Neural Networks
5 Time Delay and Recurrent Neural Networks
6 Unsupervised Neural Networks
7 Neural Networks as Associative Memories
8 Variations of Neural Networks
9 Linear Neural Network in Matlab
10 Competetive Neural Networks in Matlab
11 Feed Forward Neural Networks in Matlab
12 Regression Neural Networks in Matlab
13 Discussion and Presentation of Homeworks
14 Discussion and Presentation of Homeworks
Materials
Materials are not specified.
Resources
Course Assessment
Assesment MethodsPercentage (%)Assesment Methods Title
Final Exam60Final Exam
Midterm Exam40Midterm Exam
L+P: Lecture and Practice
PQ: Program Learning Outcomes
LO: Course Learning Outcomes