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一种低复杂度的近似最大似然MI~/IO检测算法
引用本文:陈雯柏,李 卫,张小频.一种低复杂度的近似最大似然MI~/IO检测算法[J].哈尔滨工业大学学报,2012,44(5):140-143.
作者姓名:陈雯柏  李 卫  张小频
作者单位:北京信息科技大学自动化学院,100192北京;中国电子工程设计院,100840北京;北京邮电大学信息光子学与光通信国家重点实验室,100876北京
基金项目:北京市属高校人才强教深化计划项目(PHR201008434; PHR201106131: PHR201107218
摘    要:为保证无线传感器网络协作式V-BLAST传输中,在较高的检测性能的前提下大大降低算法复杂 度,提出一种低复杂度的近似最大似然检测算法.将传统的V-BLAST算法性能最好一层解的邻域作为候选 判决集合,并以此邻域内每一个符号作为初始值进一步采用传统的V-BLAST算法反馈判决其他层的符号, 采用最大似然准则对候选向量进行判断.该方法有效减小了最大似然检测算法检测向量的数目,降低了算法 的复杂度.仿真结果表明该算法具有良好的综合性能

关 键 词:最大似然检测  排序连续干扰抵消  垂直分层空时码  多输入多输出  无线传感器网络

Complexity reduction ML detection algorithm for MIMO system
HEN Wen-bai,LI Wei and ZHANG Xiao-pin.Complexity reduction ML detection algorithm for MIMO system[J].Journal of Harbin Institute of Technology,2012,44(5):140-143.
Authors:HEN Wen-bai  LI Wei and ZHANG Xiao-pin
Affiliation:Automation School, Beijing Information Science and Technology University, 100192 Beijing, China;China Electronics Engineering Design Institute, 100840 Beijing,China;State Key Laboratory of Information Photonics and Optical Comruunications, Beijing University of Posts & Telecommunications, 100876 Beijing, China
Abstract:Aiming at reducing the computational complexity greatly and achieving high detection performance in cooperative MIMO-based WSN, a new complexity reduction ML detection algorithm is proposed. Using con- ventional V-BLAST algorithm, the best performance layer is found, and the neighborhood is considered to be candidate set. Regard the every symbol in the candidate set as initial value, we adopt V-BLAST algorithm a- gain to detect the symbol of other layers. At last, we use the maximum likelihood criterion to judge the candi- date vector. Because the number of constellation point in the maximum likelihood detection algorithm is re- duced effectively, the complexity of the algorithm decrease greatly. The simulation results show that the pro- posed scheme obtains good comprehensive performance
Keywords:maximum likelihood detection  OSIC  detection  V-BLAST  MIMO    Wireless Sensor Networks
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