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Evolving Intelligent Systems Methodology and ications [Other digital carrier]

Edited by (Knowledge Engineering and Discovery Research Institute and School of Computer and Information Sciences at Auckland University ), Edited by (Ford Motor Company, AMTDC, Redford, Michigan), Edited by (Department of Communication Systems, Lancaster University)
  • Formaat: Other digital carrier, 464 pages
  • Ilmumisaeg: 14-Apr-2010
  • Kirjastus: Wiley-Blackwell
  • ISBN-10: 0470569964
  • ISBN-13: 9780470569962
Teised raamatud teemal:
Evolving Intelligent Systems  Methodology and ications
  • Formaat: Other digital carrier, 464 pages
  • Ilmumisaeg: 14-Apr-2010
  • Kirjastus: Wiley-Blackwell
  • ISBN-10: 0470569964
  • ISBN-13: 9780470569962
Teised raamatud teemal:

From theory to techniques, the first all-in-one resource for EIS

There is a clear demand in advanced process industries, defense, and Internet and communication (VoIP) applications for intelligent yet adaptive/evolving systems. Evolving Intelligent Systems is the first self- contained volume that covers this newly established concept in its entirety, from a systematic methodology to case studies to industrial applications. Featuring chapters written by leading world experts, it addresses the progress, trends, and major achievements in this emerging research field, with a strong emphasis on the balance between novel theoretical results and solutions and practical real-life applications.

  • Explains the following fundamental approaches for developing evolving intelligent systems (EIS):

    • the Hierarchical Prioritized Structure
    • the Participatory Learning Paradigm

    • the Evolving Takagi-Sugeno fuzzy systems (eTS+)

    • the evolving clustering algorithm that stems from the well-known Gustafson-Kessel offline clustering algorithm

  • Emphasizes the importance and increased interest in online processing of data streams

  • Outlines the general strategy of using the fuzzy dynamic clustering as a foundation for evolvable information granulation

  • Presents a methodology for developing robust and interpretable evolving fuzzy rule-based systems

  • Introduces an integrated approach to incremental (real-time) feature extraction and classification

  • Proposes a study on the stability of evolving neuro-fuzzy recurrent networks

  • Details methodologies for evolving clustering and classification

  • Reveals different applications of EIS to address real problems in areas of:

    • evolving inferential sensors in chemical and petrochemical industry

    • learning and recognition in robotics

  • Features downloadable software resources

Evolving Intelligent Systems is the one-stop reference guide for both theoretical and practical issues for computer scientists, engineers, researchers, applied mathematicians, machine learning and data mining experts, graduate students, and professionals.

From theory to techniques, the first all-in-one resource for EIS

There is a clear demand in advanced process industries, defense, and Internet and communication (VoIP) applications for intelligent yet adaptive/evolving systems. Evolving Intelligent Systems is the first self- contained volume that covers this newly established concept in its entirety, from a systematic methodology to case studies to industrial applications. Featuring chapters written by leading world experts, it addresses the progress, trends, and major achievements in this emerging research field, with a strong emphasis on the balance between novel theoretical results and solutions and practical real-life applications.

  • Explains the following fundamental approaches for developing evolving intelligent systems (EIS):

    • the Hierarchical Prioritized Structure
    • the Participatory Learning Paradigm

    • the Evolving Takagi-Sugeno fuzzy systems (eTS+)

    • the evolving clustering algorithm that stems from the well-known Gustafson-Kessel offline clustering algorithm

  • Emphasizes the importance and increased interest in online processing of data streams

  • Outlines the general strategy of using the fuzzy dynamic clustering as a foundation for evolvable information granulation

  • Presents a methodology for developing robust and interpretable evolving fuzzy rule-based systems

  • Introduces an integrated approach to incremental (real-time) feature extraction and classification

  • Proposes a study on the stability of evolving neuro-fuzzy recurrent networks

  • Details methodologies for evolving clustering and classification

  • Reveals different applications of EIS to address real problems in areas of:

    • evolving inferential sensors in chemical and petrochemical industry

    • learning and recognition in robotics

  • Features downloadable software resources

Evolving Intelligent Systems is the one-stop reference guide for both theoretical and practical issues for computer scientists, engineers, researchers, applied mathematicians, machine learning and data mining experts, graduate students, and professionals.

PREFACE. Evolving Intelligent Systems. The Editors. PART I:
METHODOLOGY. Evolving Fuzzy Systems.
1. Learning Methods for Evolving
Intelligent Systems ( R. Yager ).
2. Evolving Takagi-Sugeno Fuzzy Systems
from Data Streams (eTS+) ( P. Angelov ).
3. Fuzzy Models of Evolvable
Granularity ( W. Pedrycz ).
4. Evolving Fuzzy Modeling Using Participatory
Learning ( E. Lima, M. Hell, R. Ballini, and F. Gomide ).
5. Towards Robust
and Transparent Evolving Fuzzy Systems ( E. Lughofer ).
6. The building of
fuzzy systems in real-time: towards interpretable fuzzy rules ( A. Dourado,
C. Pereira, and V. Ramos ). Evolving Neuro-Fuzzy Systems.
7. On-line
Feature Selection for Evolving Intelligent Systems ( S. Ozawa, S. Pang, and
N. Kasabov ).
8. Stability Analysis of an On-Line Evolving Neuro-Fuzzy
Network ( J. de J. Rubio Avila ).
9. On-line Identification of
Self-organizing Fuzzy Neural Networks for Modelling Time-varying Complex
Systems ( G. Prasad, T. M. McGinnity, and G. Leng ).
10. Data Fusion via
Fission for the Analysis of Brain Death ( L. Li, Y. Saito, D. Looney, T.
Tanaka, J. Cao, and D. Mandic ). Evolving Fuzzy Clustering and
Classification.
11. Similarity Analysis and Knowledge Acquisition by Use of
Evolving Neural Models and Fuzzy Decision ( G. Vachkov ).
12. An Extended
version of Gustafson-Kessel Clustering Algorithm for Evolving Data Stream
Clustering ( D. Filev, and O. Georgieva ).
13. Evolving Fuzzy Classification
of Non-Stationary Time Series (Y. Bodyanskiy, Y. Gorshkov, I. Kokshenev, and
V. Kolodyazhniy). PART II: APPLICATIONS OF EIS.
14. Evolving Intelligent
Sensors in Chemical Industry ( A. Kordon et al. ).
15. Recognition of Human
Grasps by Fuzzy Modeling (R Palm, B Kadmiry, and B Iliev).
16. Evolutionary
Architecture for Lifelong Learning and Real-time Operation in Autonomous
Robots ( R. J. Duro, F. Bellas and J.A. Becerra )
17. Applications of
Evolving Intelligent Systems to Oil and Gas Industry ( J. J. Macias Hernandez
et al. ). Conclusion.
PLAMEN ANGELOV, PhD, is with the Department of Communication Systems, Lancaster University. He is a member of the Fuzzy Systems Technical Committee, the founding Chair of the Adaptive Fuzzy Systems Task Force to the Computational Intelligence Society, and a Senior Member of IEEE. DIMITAR P. FILEV, PhD, is a Senior Technical Leader, Intelligent Control & Information Systems, with Ford Research & Advanced Engineering and a Fellow of IEEE. He is a Vice President for Cybernetics of the IEEE Systems, Man, and Cybernetics Society and?past president of the North American Fuzzy Information Processing Society (NAFIPS). Nikola Kasabov is the Director of the Knowledge Engineering and Discovery Research Institute (KEDRI). He holds a Chair of Knowledge Engineering at the School of Computer and Information Sciences at Auckland University of Technology. He is a Fellow of IEEE, Fellow of the Royal Society of New Zealand, Fellow of the New Zealand Computer Society, and the President of the International Neural Network Society (INNS).