Diversity Analysis of MIMO Decode-and-Forward Relay Network by Using Near-ML Decoder
スポンサーリンク
概要
- 論文の詳細を見る
The probability of making mistakes on the decoded signals at the relay has been used for the maximum-likelihood (ML) decision at the receiver in the decode-and-forward (DF) relay network. It is well known that deriving the probability is relatively easy for the uncoded single-antenna transmission with M-pulse amplitude modulation (PAM). However, in the multiplexing multiple-input multiple-output (MIMO) transmission, the multi-dimensional decision region is getting too complicated to derive the probability. In this paper, a high-performance near-ML decoder is devised by applying a well-known pairwise error probability (PEP) of two paired-signals at the relay in the MIMO DF relay network. It also proves that the near-ML decoder can achieve the maximum diversity of MSMD+MR min(MS,MD), where MS, MR, andMD are the number of antennas at the source, relay, and destination, respectively. The simulation results show that 1) the near-ML decoder achieves the diversity we derived and 2) the bit error probability of the near-ML decoder is almost the same as that of the ML decoder.
論文 | ランダム
- P-42 PLEを用いた不斉合成素子の開発とその応用(ポスター発表の部)
- いかにNon occlusive mesenteric ischemia (NOMI)の診断し,治療するか
- 日本語学習者の日本人イメージにみられる特徴とその形成要因 -韓国の大学における学習者と非学習者の比較-
- 教授の旬・日記
- 重度心身障害者に対する腹腔鏡下胆嚢摘出術