A Study on Optimum Covariance Matrix of Eigen Vector in Correlation

نویسندگان

  • Liqiang Hu
  • Fuquan Zhang
  • Mengmeng Shi
  • Xubing Yang
  • Xinyi Tan
  • Xiao Ling
  • Demin Gao
  • Do-Hyung Kim
  • Hyun-Woo Cho
  • Myung-Hoon Cha
  • Sang-Min Lee
  • Jeong-Hwa Song
  • Jinwoo Jeong
  • Youngkyun Jeon
  • Kwan Hyeong Lee
  • Kwang-sik Cho
  • Jong-Il Moon
  • Yoon-sik Kwak
  • Yoonsik Kwak
  • Joomi Kim
  • Yusun Jung
  • Joong-Ho Lee
  • Eun Joo Kim
  • Soonhyun Kwon
  • Hyunjoong Kang
  • Seung-Ho Lim
  • SooHyun Cho
  • Yongtae Shin
چکیده

This paper study to estimate a desired signals with linear array antenna in correlation system. This study is to estimate for desired direction of arrival among incidental signals on receive antenna system. We use an eigen vector and eigen value in order to correctly desired signals in correlation. We study optimum covariance matrix with eigen matrix. Through simulation, we show that compare the proposed method with general algorithm. We show that the proposed method in this paper appear good superior more resolution than general algorithm.

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تاریخ انتشار 2016