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Model Enhanced Learning Based Detectors (Me-LeaD) for Wideband Multi-User 1-bit mmWave Communications
Shijian Gao
, Xiang Cheng
, Luoyang Fang
, Liuqing Yang
Electrical and Computer Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
9
Scopus citations
Overview
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Dive into the research topics of 'Model Enhanced Learning Based Detectors (Me-LeaD) for Wideband Multi-User 1-bit mmWave Communications'. Together they form a unique fingerprint.
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Keyphrases
1-bit
100%
Angular Domain
14%
Block-based
28%
Channel Delay
14%
Cost Efficiency
14%
Detection Mechanism
14%
Enhanced Learning
100%
Learning-based
100%
MmWave Communications
100%
MmWave Systems
14%
Model Information
14%
Multi-user
100%
Multi-user Setting
28%
Multipath Effect
14%
Narrowband Channel
14%
Nonlinear Distortion
14%
Single-bit
14%
System Learning
14%
Traditional Models
14%
Transparent Communication
14%
Transparent Systems
14%
Wideband
100%
Engineering
Bit System
75%
Cost Efficiency
25%
Data Rate
25%
Domain Information
50%
Enhanced Model
100%
Learning System
25%
Multipath Effect
25%
Multiuser
100%
Nonlinear Distortion
25%
Single Bit
25%