Channel Estimation for Physical Layer Network Coding Systems Channel Estimation for Physical Layer Network Coding Systems
SpringerBriefs in Computer Science

Channel Estimation for Physical Layer Network Coding Systems

Feifei Gao und andere
    • 42,99 €
    • 42,99 €

Beschreibung des Verlags

This SpringerBrief presents channel estimation strategies for the physical later network coding (PLNC) systems. Along with a review of PLNC architectures, this brief examines new challenges brought by the special structure of bi-directional two-hop transmissions that are different from the traditional point-to-point systems and unidirectional relay systems. The authors discuss the channel estimation strategies over typical fading scenarios, including frequency flat fading, frequency selective fading and time selective fading, as well as future research directions. Chapters explore the performance of the channel estimation strategy and optimal structure of training sequences for each scenario. Besides the analysis of channel estimation strategies, the book also points out the necessity of revisiting other signal processing issues for the PLNC system. Channel Estimation of Physical Layer Network Coding Systems is a valuable resource for researchers and professionals working in wireless communications and networks. Advanced-level students studying computer science and electrical engineering will also find the content helpful.

GENRE
Computer und Internet
ERSCHIENEN
2014
15. Oktober
SPRACHE
EN
Englisch
UMFANG
89
Seiten
VERLAG
Springer International Publishing
GRÖSSE
2,2
 MB

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