Parallel Methods for Optimizing High Order Constellations on GPUs

Paolo Spallaccini, F. Kayhan, Stefano Chinnici, G. Montorsi
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Abstract

The increasing demand for fast mobile data has driven transmission systems to use high order signal constellations. Conventional modulation schemes such as QAM and APSK are sub-optimal, large gains may be obtained by properly optimizing the constellation signals set under given channel constraints. The constellation optimization problem is computationally intensive and the known methods become rapidly unfeasible as the constellation order increases. Very few attempts to optimize constellations in excess of 64 signals have been reported. In this paper, we apply a simulated annealing (SA) algorithm to maximize the Mutual Information (MI) and Pragmatic Mutual Information (PMI), given the channel constraints. We first propose a GPU accelerated method for calculating MI and PMI of a constellation. For AWGN channels the method grants one order of magnitude speedup over a CPU realization. We also propose a parallelization of the Gaussian-Hermite Quadrature to compute the Average Mutual Information (AMI) and the Pragmatic Average Mutual Information (PAMI) on GPUs. Considering the more complex problem of constellation optimization over phase noise channels, we obtain two orders of magnitude speedup over CPUs. In order to reach such performance, novel parallel algorithms have been devised. Using our method, constellations with thousands of signals can be optimized.
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gpu上高阶星座的并行优化方法
对快速移动数据日益增长的需求促使传输系统使用高阶信号星座。传统的QAM和APSK调制方案是次优的,在给定的信道约束下,适当优化星座信号集可以获得较大的增益。星座优化问题计算量大,随着星座阶数的增加,已知方法很快变得不可行。很少有人尝试优化超过64个信号的星座。在本文中,我们应用模拟退火(SA)算法来最大化互信息(MI)和实用互信息(PMI),给定信道约束。首先提出了一种计算星座MI和PMI的GPU加速方法。对于AWGN通道,该方法比CPU实现提供一个数量级的加速。我们还提出了一种并行化的高斯-埃尔米正交来计算gpu上的平均互信息(AMI)和实用平均互信息(PAMI)。考虑到更复杂的相位噪声信道星座优化问题,我们在cpu上获得了两个数量级的加速。为了达到这样的性能,新的并行算法被设计出来。使用我们的方法,可以优化具有数千个信号的星座。
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