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Stopping Rule-Based Iterative Tree Search for Low-Complexity Detection in MIMO Systems

机译:停止基于规则的迭代树搜索以进行MIMO系统中的低复杂度检测

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Breadth first tree search (BFTS) algorithms are known to provide a close to maximum likelihood (quasi-ML) solution at a low-complexity if the received sequence is detected in the right sequence order. However, finding the right sequence order has an exponential overhead. In view of this, we propose to repeatedly apply a BFTS algorithm to all sequence orders. Since it will test all the orders, it is expected to achieve quasi-ML performance. However, this will increase the complexity because of redundant iterations. The complexity can be reduced if we can stop the iterations as soon as a quasi-ML solution is achieved. For this, we propose two stopping rules, one relies on a constellation based heuristic and the other one uses the distribution of ML cost. It is found that their complexity curves have a cross-over point. Thus, a combination of the two rules provides a quasi-ML error performance at a low-complexity for uncoded as well as coded systems. We further show that the proposed stopping rule can reduce the complexity of depth first tree search algorithms also. Last, for large MIMO systems, compared with existing algorithms, it is found to be exceptionally better in terms of both error performance and complexity.
机译:如果以正确的序列顺序检测到接收到的序列,广度优先树搜索(BFTS)算法将以低复杂度提供接近最大似然(准ML)的解决方案。但是,找到正确的序列顺序会产生指数开销。有鉴于此,我们建议对所有序列顺序重复应用BFTS算法。由于它将测试所有订单,因此有望实现准ML性能。然而,由于冗余迭代,这将增加复杂度。如果我们能够在实现准ML解决方案后立即停止迭代,则可以降低复杂性。为此,我们提出了两种停止规则,一种基于基于星座的启发式算法,另一种使用ML成本的分布。发现它们的复杂度曲线具有交叉点。因此,两个规则的组合为未编码和已编码系统提供了低复杂度的准ML错误性能。我们进一步表明,提出的停止规则还可以降低深度优先树搜索算法的复杂度。最后,对于大型MIMO系统,与现有算法相比,发现在错误性能和复杂性方面都特别好。

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