Low complexity MIMO detection algorithm by combining modified OSIC and ML detection

Saifullah Adnan, Zhang Linbo, Muhammad Ayoob Dars, Muhammad Irshad Zahoor
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引用次数: 4

Abstract

The Ordered Successive Interference Cancellation (OSIC) algorithm has the advantage of high capabilities. Moreover, as compared to Maximum Likelihood Detection it has poor performance but its error rate is expected. The OSIC algorithm complexity is based on matrix inversion. In this paper, an improved OSIC algorithm is proposed, that uses a parallel detection and an accurate detection value of combining programs while maintaining performance with the slight reduced computational complexity. Considering the error propagation of the traditional OSIC algorithm, modified OSIC and ML detection algorithm are merged, the use of exhaustive search ML method is to improve the overall performance. In order to avoid the computational complexity of ML algorithm, “k” symbols are selected to be detected by the modified OSIC. The remaining symbols are detected by ML detection. The simulations are performed in MATLAB and it shows that the performance of the proposed algorithm is better than the conventional OSIC algorithm.
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结合改进OSIC和ML检测的低复杂度MIMO检测算法
有序连续干扰消除(OSIC)算法具有性能高的优点。此外,与最大似然检测相比,它的性能较差,但其错误率在预期范围内。OSIC算法的复杂度基于矩阵反演。本文提出了一种改进的OSIC算法,该算法在保持性能的同时,使用并行检测和精确的组合程序检测值,同时略微降低了计算复杂度。考虑到传统OSIC算法的误差传播,将改进的OSIC和ML检测算法合并,采用穷举搜索ML方法是为了提高整体性能。为了避免ML算法的计算复杂度,选择“k”个符号进行改进后的OSIC检测。剩余的符号通过ML检测进行检测。在MATLAB中进行了仿真,结果表明该算法的性能优于传统的OSIC算法。
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