先进的信号处理算法在多处理器架构上的有效映射

Bhavana B. Manjunath, Aaron S. Williams, C. Chakrabarti, A. Papandreou-Suppappola
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引用次数: 7

摘要

现代微处理器技术正在从简单地提高单个处理器的时钟速度向在每一代芯片上放置多个处理器以提高吞吐量和功率性能的转变。为了利用这样一个系统的潜力,信号处理算法必须有效地并行化,以便负载可以在多个处理单元之间均匀分布。本文研究了几种先进的确定性和随机信号处理算法及其多处理单元的计算。具体来说,我们考虑了两种常用的时频信号表示,短时傅里叶变换和维格纳分布,并演示了它们在低通信开销下的并行化。我们还考虑了序列蒙特卡罗估计技术,如粒子滤波,并证明了其多处理器实现需要大量数据交换,因此通信开销很高。我们提出了一种改进的映射方案,以牺牲精度为代价减少了这种开销,并从精度和可伸缩性方面评估了该方案在状态估计问题上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient mapping of advanced signal processing algorithms on multi-processor architectures
Modern microprocessor technology is migrating from simply increasing clock speeds on a single processor to placing multiple processors on a die to increase throughput and power performance in every generation. To utilize the potential of such a system, signal processing algorithms have to be efficiently parallelized so that the load can be distributed evenly among the multiple processing units. In this paper, we study several advanced deterministic and stochastic signal processing algorithms and their computation using multiple processing units. Specifically, we consider two commonly used time-frequency signal representations, the short-time Fourier transform and the Wigner distribution, and we demonstrate their parallelization with low communication overhead. We also consider sequential Monte Carlo estimation techniques such as particle filtering, and we demonstrate that its multiple processor implementation requires large data exchanges and thus a high communication overhead. We propose a modified mapping scheme that reduces this overhead at the expense of a slight loss in accuracy, and we evaluate the performance of the scheme for a state estimation problem with respect to accuracy and scalability.
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