BASICS OF SOFT COMPUTATION
Course content • Introduction to soft computing • Artificial neural networks (ANN), Supervised and unsupervised learning of ANN • Evolutionary algorithms • Fuzzy logic and fuzzy inference systems • Hybrid Systems
Introduction of Soft Computing • Concept of Computing • Characteristics of computing • Hard Computing • Hard Computing Vs Soft computing • Soft Computing • Basic Tools of Soft Computing • Characteristics of Soft Computing • Differences between Hard Computing and Soft Computing
Artificial neural networks (ANN), Supervised and unsupervised learning of ANN • Biological Neuron: Two types of neurons; Basic functions of a neuron; various parts of a neuron; • Analogy between Artificial Neuron and Biological Neuron • Artificial Neuron model • Activation function / Transfer functions • Advantages of ANN • Fundamental classes of ANN architectures and modelling • Training of Artificial Neural Networks; Types of Learning
Evolutionary algorithms • Optimization • Classical optimization methods • Difficulties of classical optimization methods • Different Evolutionary Algorithms • Genetic Algorithm
Fuzzy logic and fuzzy inference systems • Crisp set and Fuzzy Set • Membership Function (Fuzzy set) • Some Key properties of fuzzy sets/ MFDs • Fuzzy vs. Probability and Prediction vs. Forecasting • Types of Fuzzy Membership Function • Fuzzy Set Operators: Fuzzy intersection; Fuzzy union; Fuzzy complement Product; Sum and Differences; Equality; Power of a fuzzy set • Properties of Fuzzy Set • Fuzzy Relation • Fuzzy implication methods • Fuzzy aggregation • Fuzzy Logic Rule • Fuzzy Inferences and Fuzzy Inference System • Fuzzy model
Hybrid Systems • Advantage and disadvantage of hybrid systems in Soft Computing • Genetic-Fuzzy system

1_BASICS OF SOFT COMPUTATION OF KNOWLEDGE

  • 1.
    BASICS OF SOFTCOMPUTATION
  • 2.
    Course content • Introductionto soft computing • Artificial neural networks (ANN), Supervised and unsupervised learning of ANN • Evolutionary algorithms • Fuzzy logic and fuzzy inference systems • Hybrid Systems
  • 3.
    Introduction of SoftComputing • Concept of Computing • Characteristics of computing • Hard Computing • Hard Computing Vs Soft computing • Soft Computing • Basic Tools of Soft Computing • Characteristics of Soft Computing • Differences between Hard Computing and Soft Computing
  • 4.
    Artificial neural networks(ANN), Supervised and unsupervised learning of ANN • Biological Neuron: Two types of neurons; Basic functions of a neuron; various parts of a neuron; • Analogy between Artificial Neuron and Biological Neuron • Artificial Neuron model • Activation function / Transfer functions • Advantages of ANN • Fundamental classes of ANN architectures and modelling • Training of Artificial Neural Networks; Types of Learning
  • 5.
    Evolutionary algorithms • Optimization •Classical optimization methods • Difficulties of classical optimization methods • Different Evolutionary Algorithms • Genetic Algorithm
  • 6.
    Fuzzy logic andfuzzy inference systems • Crisp set and Fuzzy Set • Membership Function (Fuzzy set) • Some Key properties of fuzzy sets/ MFDs • Fuzzy vs. Probability and Prediction vs. Forecasting • Types of Fuzzy Membership Function • Fuzzy Set Operators: Fuzzy intersection; Fuzzy union; Fuzzy complement Product; Sum and Differences; Equality; Power of a fuzzy set • Properties of Fuzzy Set • Fuzzy Relation • Fuzzy implication methods • Fuzzy aggregation • Fuzzy Logic Rule • Fuzzy Inferences and Fuzzy Inference System • Fuzzy model
  • 7.
    Hybrid Systems • Advantageand disadvantage of hybrid systems in Soft Computing • Genetic-Fuzzy system