The last couple of years have seen an emergence of physics-inspired computing for maximum likelihood MIMO detection. These methods involve transforming the MIMO detection problem into an Ising minimization problem, which can then be solved on an Ising Machine. Recent works have shown promising projections for MIMO wireless detection using Quantum Annealing optimizers and Coherent Ising Machines. While these methods perform very well for BPSK and 4-QAM, they struggle to provide good BER for 16-QAM and higher modulations. In this paper, we explore an enhanced CIM model, and propose a novel Ising formulation, which together are shown to be the first Ising solver that provides significant gains in the BER performance of large and massive MIMO systems, like $16\times16$ and $16\times32$, and sustain its performance gain even at 256-QAM modulation. We further perform a spectral efficiency analysis and show that, for a $16\times16$ MIMO with Adaptive Modulation and Coding, our method can provide substantial throughput gains over MMSE, achieving $2\times$ throughput for SNR $\leq25$ dB, and up to $1.5\times$ throughput for SNR $\geq 30$ dB.
翻译:近些年来,出现了物理学启发型计算,以最大限度地探测MIMO。这些方法包括将MIMO检测问题转化为最小化问题,然后可以在Ising机器上解决。最近的工作显示,对IMIMO使用Qantum Annaaling优化剂和 Cotherent Ising Ising 机器进行无线检测的有希望的预测。这些方法对BPSK和4QAM来说效果很好,但对于BPSK和4QAM来说,它们却在努力为16-QAM和更高调控提供良好的BER。在本文中,我们探索了一个强化的CIM模型,并提出了一个新的Ising配方,这些配方被证明是第一个在大型和大型MIMO系统BAR性能上带来巨大收益的Ising解答器,例如1616美元和16美元,332美元,甚至保持其性能收益在25-QAM调控中。我们进一步进行了光谱效率分析,并表明,对于一个16\16美元的MIMO 16美元与调控和调控,我们的方法可以为MMS $ $25和Sqtududume $15美元提供大量的负收益。