Course detail
Neural Networks and Evolution Methods
FSI-VSCAcad. year: 2018/2019
The course introduces basic approaches to Soft Computing and classical methods used in the field. Practical use of the methods is demonstrated on solving simple engineering problems.
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Number of ECTS credits
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Learning outcomes of the course unit
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Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Course curriculum
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Aims
Specification of controlled education, way of implementation and compensation for absences
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Basic literature
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Classification of course in study plans
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Lecture
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Syllabus
2. Architectures and classification of neural networks. Perceptron, ADALINE.
3. Feed-forward neural networks, single- and multilayer perceptron. Learning: error back-propagation as iterative minimisation of the mean quadratic error.
4. Cluster analysis, dimensionality reduction, Principal component analysis.
5. RBF and RCE neural networks. Topologic organized neural network (competetive learning, Kohonen maps).
6. Neural networks as associative memories (Hopfield networks, BAM), behaviour, state diagram, attractors, learning.
7. LVQ neural networks, ART neural networks
8. Fuzzy sets, fuzzy logic and fuzzy numbers, Fuzzy inference. ANFIS
9. Evolutionary algorithms (genetic algorithms, evolutionary strategy, grammatical evolution, genetic programming).
10. Selected metaheuristics for optimization (HC12, Simulated anealing).
11. Swarm intelligence (PSO, ACO, DE, SOMA)
12. Deterministic chaos.
13. Hybrid approaches and aplications (neural networks, fuzzy logic, genetic algorithms sets).
Computer-assisted exercise
Teacher / Lecturer
Syllabus