Blind Equalization in Neural Networks
eBook - ePub

Blind Equalization in Neural Networks

Liyi Zhang, Tsinghua University Press

  1. 268 páginas
  2. English
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eBook - ePub

Blind Equalization in Neural Networks

Liyi Zhang, Tsinghua University Press

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Información del libro

The book begins with an introduction of blind equalization theory and its application in neural networks, then discusses the algorithms in recurrent networks, fuzzy networks and other frequently-studied neural networks. Each algorithm is accompanied by derivation, modeling and simulation, making the book an essential reference for electrical engineers, computer intelligence researchers and neural scientists.

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Información

Editorial
De Gruyter
Año
2017
ISBN
9783110449679
Edición
1
Categoría
Neural Networks

1Introduction

Abstract: In this chapter, the research significance and the application field of blind equalization (BE) are analyzed. The classification and research status of the neural network BE algorithm are summarized. The research background and the main work of this book are pointed out.

1.1The research significance of the BE technology

The concept of BE (called as the self-recovering equalization at that time) was proposed by the Japanese scholar professor Y. Sato [1] first in 1975. It has gradually become a key technology of digital communication, and also a frontier and hot research topic of communication and signals processing, because it can overcome the inter-symbol interference (ISI) effectively, reduce the bit error rate (BER), and improve reception and the quality of communication.
BE is set up on the basis of overcoming the defects of the adaptive equalization. BE only uses the prior information of received sequence itself to equalize channel characteristics, instead of sending the training sequence. As a result, the output sequence of the equalizer approximates the transmitted sequence as far as possible.
Before data transmission, a training sequence known by the receiver needs to be transmitted in the adaptive equalization. Then, the changes or errors of the sequence passing through the channel are measured by the receiver. According to the error information, parameters of equalizer are adjusted. Eventually, the channel characteristic is compensated by the equalizer. As a result, the almost undistorted signals are obtained from the sequence of equalizer output, and the reliable data transmission is guaranteed. The process is called as automatic equalization. At this time, the equalizer is in training mode. When the training process is over, the adjustment of equalizer parameter gets convergence, the reliability of decision signals is higher, and the error rate is less.
After the training process, the data begin to transmit. At that time, the transmitted signals are unknown. In order to track possible changes of channel characteristics dynamically, the receiver takes output decision signals of the equalizer as the reference signals. These reference signals are used to measure the errors produced by channel changes and to adjust the equalizer’s output signals continuously. At this time, the above-mentioned process is called as decision-directed equalization. According to the theory of adaptive filter, the condition for the equalizer to work properly under decision-directed mode is that the eye pattern opens to a certain extent in advance. The above condition can ensure equalizer-reliable convergence. If the condition is not satisfied, a training sequence known by the receiver will be sent by the sending end to train the equalizer again, and make it get convergence. Thus, the training process is also called as the learning process of the equalizer. For the general communication system, the training process is indispensable.
The development and application of the equalization technology improve the performance of communication system greatly. Just as R.D. Gitlin et al. [2] said, the revolution of the data communications can be traced back to the discovery of automatic and adaptive equalization technology in the late 1960s. However, with the development of digital communication technology to wide band, high speed, and large capacity, the shortcomings and defects of the adaptive equalization technology are increasingly exposed, mainly in the following [3]:
(1)The training sequence does not transmit useful information, so the information transmission rate of the communicati...

Índice

  1. Cover
  2. Title Page
  3. Copyright Page
  4. Preface
  5. Contents
  6. 1 Introduction
  7. 2 The Fundamental Theory of Neural Network Blind Equalization Algorithm
  8. 3 Research of Blind Equalization Algorithms Based on FFNN
  9. 4 Research of Blind Equalization Algorithms Based on the FBNN
  10. 5 Research of Blind Equalization Algorithms Based on FNN
  11. 6 Blind Equalization Algorithm Based on Evolutionary Neural Network
  12. 7 Blind equalization Algorithm Based on Wavelet Neural Network
  13. 8 Application of Neural Network Blind Equalization Algorithm in Medical Image Processing
  14. Appendix A: Derivation of the Hidden Layer Weight Iterative Formula in the Blind Equalization Algorithm Based on the Complex Three-Layer FFNN
  15. Appendix B: Iterative Formulas Derivation of Complex Blind Equalization Algorithm Based on BRNN
  16. Appendix C: Types of Fuzzy Membership Function
  17. Appendix D: Iterative Formula Derivation of Blind Equalization Algorithm Based on DRFNN
  18. References
  19. Index
Estilos de citas para Blind Equalization in Neural Networks

APA 6 Citation

Zhang, L. (2017). Blind Equalization in Neural Networks (1st ed.). De Gruyter. Retrieved from https://www.perlego.com/book/725973/blind-equalization-in-neural-networks-pdf (Original work published 2017)

Chicago Citation

Zhang, Liyi. (2017) 2017. Blind Equalization in Neural Networks. 1st ed. De Gruyter. https://www.perlego.com/book/725973/blind-equalization-in-neural-networks-pdf.

Harvard Citation

Zhang, L. (2017) Blind Equalization in Neural Networks. 1st edn. De Gruyter. Available at: https://www.perlego.com/book/725973/blind-equalization-in-neural-networks-pdf (Accessed: 14 October 2022).

MLA 7 Citation

Zhang, Liyi. Blind Equalization in Neural Networks. 1st ed. De Gruyter, 2017. Web. 14 Oct. 2022.