Design of Adaptive Equaliser Structures in Neural Network Paradigm的封面
书籍主题:

Design of Adaptive Equaliser Structures in Neural Network Paradigm

Development based on both feedforward and recurrent neural topologies of reduced structural complexity

LAP LAMBERT Academic Publishing (2009-10-16 )

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ISBN-13:

978-3-8383-2104-2

ISBN-10:
3838321049
EAN:
9783838321042
书籍语言:
英文
作品简介:
Adaptive channel equalisers compensate the disruptive effects caused by band-limited channels, hence enabling higher data rate in digital communication. Designing efficient equalisers based on low structural complexity is an area of interest amongst communication system designers. This research has significantly contributed to the development of novel equaliser structures in the neural network paradigm on the framework of both the feedforward neural network and the recurrent neural network of low structural complexity. Various innovative techniques like hierarchical knowledge reinforcement, genetic evolutionary concept, transform domain approach, tuning of sigmoid slope of neuron using fuzzy logic concept have been incorporated into an FNN framework to design highly efficient equaliser structures. Subsequently, an hybrid concept of using cascaded modules of RNN and FNN in various configurations has also been proposed. Significant performance improvement over the conventional equalisers in terms of BER, faster adaptation rate and ease of implementation are the major advantages of the proposed neural network based equalisers.
出版社 :
LAP LAMBERT Academic Publishing
网址:
https://www.lap-publishing.com/
由(作者):
SUSMITA DAS
页码 :
216
发表日期:
2009-10-16
现货:
备有现货
类别:
电子学,电子-技术,通信技术
价格:
79.00 €
关键词:
Adaptive equaliser, FNN Equaliser, RNN Equaliser, Signal to Noise Ratio, Bit Error Rate, Hybrid structures, Cascaded equaliser

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