基于人工神经网络的码分多址多用户检测误码率计算方法

Ramanpreet Kaur, Simrandeep Singh
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引用次数: 10

摘要

多用户检测是当前检测理论研究的热点。它们被用来减少多径衰落的影响。本文将最大熵法(MEM)与人工神经网络(ANN)相结合,对CDMA系统的各种参数进行优化。考虑了CDMA系统接收信号中的多径衰落和噪声问题。在CDMA系统中使用的所有基本检测方案中,由于其精确的误码率,SIC(连续干扰消除)被认为是最好的检测器,但随着研究的深入,人们发现SIC的一些局限性尚未得到解决。在本文中,我们提出了一种优化技术,该技术将MEM的最终输出与神经网络进行比较。最后的结果分别与现有MEM进行了比较。仿真结果表明,该方法降低了误码率,精度达到85%。
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An artificial neural network based approach to calculate BER in CDMA for multiuser detection using MEM
Multi user detection is an ongoing research in detection theory. They are used to reduce the effect of Multipath fading. In this paper, MEM (Maximum entropy method has been combined with ANN (Artificial neural network) in order to optimize various parameters of CDMA system. We consider the problem of multipath fading and noise in signals being received in CDMA systems. Among all basic detection schemes being used in CDMA systems, SIC(Successive interference cancellation)is considered as best detector due to its exact BER but with more advanced research it has been observed that some limitations of SIC has not been addressed yet. In this paper, we propose an optimization technique in which final output of MEM is compared with neural network. Final results have been compared with existing MEM respectively. Based on simulations, it has been concluded that Bit error rate has been reduced and accuracy has been achieved up to 85%.
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