Maximum likelihood detection for decode and forward cooperation with interference

Y. Aditya, G. V. S. S. P. Varma, G. Sharma
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Abstract

In this paper, we obtain the maximum likelihood (ML) decision for a decode and forward (DF) cooperative system in Nakagami-m fading in the presence of co-channel interference at the relay as well as the destination. Through simulation results, we first show that conventional ML designed for interference free systems fails to combat the deleterious effect of interference. An optimum ML decision for combating interference is then derived for integer m. This receiver is shown to be superior to conventional ML through bit error rate (BER) performance simulations. Further, our results also indicate that optimum ML preserves relay diversity in the presence of interference.
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最大似然检测解码和向前合作与干扰
在本文中,我们得到了一个解码和转发(DF)合作系统在中继和目的地存在共信道干扰的情况下在Nakagami-m衰落下的最大似然决策。通过仿真结果,我们首先表明,为无干扰系统设计的传统机器学习无法对抗干扰的有害影响。然后推导了整数m的最佳ML决策,以对抗干扰。通过误码率(BER)性能模拟,表明该接收器优于传统ML。此外,我们的结果还表明,在存在干扰的情况下,最佳ML保留了中继分集。
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