Computational Intelligence Systems and Applications Neuro-Fuzzy and Fuzzy Neural Synergisms /

This book presents new concepts and implementations of Computational Intelligence (CI) systems (based on neuro-fuzzy and fuzzy neural synergisms) and a broad comparative analysis with the best-known existing neuro-fuzzy systems as well as with systems representing other knowledge-discovery technique...

Πλήρης περιγραφή

Λεπτομέρειες βιβλιογραφικής εγγραφής
Κύριος συγγραφέας: Gorzalczany, Marian B. (Συγγραφέας, http://id.loc.gov/vocabulary/relators/aut)
Συγγραφή απο Οργανισμό/Αρχή: SpringerLink (Online service)
Μορφή: Ηλεκτρονική πηγή Ηλ. βιβλίο
Γλώσσα:English
Έκδοση: Heidelberg : Physica-Verlag HD : Imprint: Physica, 2002.
Έκδοση:1st ed. 2002.
Σειρά:Studies in Fuzziness and Soft Computing, 86
Θέματα:
Διαθέσιμο Online:Full Text via HEAL-Link
Πίνακας περιεχομένων:
  • 1 Introduction
  • 1.1 A general concept of computational intelligence
  • 1.2 The building blocks of computational intelligence systems
  • 1.3 Objectives and scope of this book
  • 2 Elements of the theory of fuzzy sets
  • 2.1 Basic notions, operations on fuzzy sets, and fuzzy relations
  • 2.2 Fuzzy inference systems
  • 3 Essentials of artificial neural networks
  • 3.1 Processing elements and multilayer perceptrons
  • 3.2 Radial basis function networks
  • 4 Brief introduction to genetic algorithms
  • 4.1 Basic components of genetic algorithms
  • 4.2 Theoretical introduction to genetic computing
  • 5 Main directions of combining artificial neural networks, fuzzy sets and evolutionary computations in designing computational intelligence systems
  • 5.1 Artificial intelligence versus computational intelligence
  • 5.2 Designing computational intelligence systems
  • 5.3 Selected neuro-fuzzy systems
  • 6 Neuro-fuzzy(-genetic) system for synthesizing rule-based knowledge from data
  • 6.1 Synthesizing rule-based knowledge from data - statement of the problem
  • 6.2 Neuro-fuzzy system in learning mode - problem of knowledge acquisition
  • 6.3 Neuro-fuzzy system in inference mode - approximate inference engine
  • 6.4 Learning techniques
  • 6.5 A numerical example of synthesizing rule-based knowledge from data - modelling the Mackey-Glass chaotic time series
  • 6.6 Synthesizing rule-based knowledge from "fish data"
  • 7 Rule-based neuro-fuzzy modelling of dynamic systems and designing of controllers
  • 7.1 System identification - statement of the problem and its general solution in the framework of neuro-fuzzy methodology
  • 7.2 Rule-based neuro-fuzzy modelling of an industrial gas furnace system
  • 7.3 Designing the neuro-fuzzy controller for a simulated backing up of a truck
  • 8 Neuro-fuzzy(-genetic) rule-based classifier designed from data for intelligent decision support
  • 8.1 Designing the classifier from data - statement of the problem
  • 8.2 Learning mode of neuro-fuzzy classifier
  • 8.3 Inference (decision making) mode of neuro-fuzzy classifier
  • 8.4 Neuro-fuzzy decision support system for diagnosing breast cancer
  • 8.5 Neuro-fuzzy-genetic decision support system for the glass identification problem (forensic science)
  • 8.6 Neuro-fuzzy-genetic decision support system for determining the age of abalone (marine biology)
  • 9 Fuzzy neural network for system modelling and control
  • 9.1 Learning mode of the network
  • 9.2 Inference mode of the network
  • 9.3 Fuzzy neural modelling of dynamic systems (an industrial gas furnace system)
  • 9.4 Fuzzy neural controller
  • 10 Fuzzy neural classifier
  • 10.1 Learning and inference modes of the classifier
  • 10.2 Fuzzy neural classifier for diagnosis of surgical cases in the domain of equine colic
  • A Appendices
  • A.1.1 Inputs
  • A.1.2 Output
  • A.2.1 Inputs
  • A.2.2 Outputs - set of two class labels
  • A.3.1 Inputs
  • A.3.2 Outputs - set of two class labels
  • A.4.1 Inputs
  • A.4.2 Outputs - set of three class labels
  • A.5.1 Inputs
  • A.5.2 Outputs - three sets of class labels
  • References.