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Dynamic Data Driven SAR Reconstruction on Hybrid Multicore systems

机译:混合多核系统的动态数据驱动SAR重建

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The reconstruction of nxn-pixel Synthetic Aperture Radar imagery using a Backprojection algorithm is compute intensive and incurs O(n2 · m) cost, where m is the number of pulses. As part of this research, we develop dynamic data driven multiresolution algorithms that speed up SAR backprojection on GPUs, hybrid multicore and many-core processors. Further, we performed experiments to observe improvements on a variety of architectures. The challenges in improving performance of this spatially variant reconstruction process on any architecture is load balancing, which circumvents asymmetric work assignment. On GPUs, fine tuned algorithms were developed as part of our research for improving execution time. Further, communication between processors was overlapped with computation to reduce overall execution time. We also developed parallel algorithms and software for constructing multi-resolution SAR images on hybrid multicore processors (HMPs). In particular, several load balancing algorithms were developed for optimizing performance and energy consumption on HMPs. We also developed a systematic approach for deriving the performance-energy trade-offs on HMPs while exploiting dynamic voltage and frequency scaling (DVFS) features of CPU cores and GPUs. This approach helps the user to select the right system configuration, that is, the number of processing elements of each type (cores/GPUs/etc.) and the respective clock frequencies, depending on whether performance or energy optimization is critical to the user. We evaluated performance and energy consumption of our algorithms on an Intel Knights Landing (KNL) processor as a representative of a many-core architecture. We also compared performance and energy consumption of KNL, Ivy Bridge and Tesla K40m.
机译:使用反扩展算法的NXN - 像素合成孔径雷达图像的重建是计算密集型和引起的o(n 2 ·m)成本,其中m是脉冲的数量。作为本研究的一部分,我们开发了动态数据驱动的多分辨率算法,加速了GPU,混合多核和许多核心处理器的SAR背面。此外,我们进行了实验以观察各种架构的改进。提高该空间变体重建过程性能对任何架构的性能的挑战是负载平衡,避免不对称的工作分配。在GPU上,作为我们改进执行时间的研究的一部分,开发了微调算法。此外,处理器之间的通信与计算重叠以减少总执行时间。我们还开发了用于在混合多核处理器(HMPS)上构建多分辨率SAR图像的并行算法和软件。特别地,开发了几种负载平衡算法,用于优化HMPS上的性能和能耗。我们还开发了一种系统的方法,可以在利用CPU内核和GPU的动态电压和频率缩放(DVFS)特征时导出HMP上的性能 - 能源权衡。该方法有助于用户选择右系统配置,即每种类型(核/ GPU / etc。)和各个时钟频率的处理元件的数量,具体取决于性能或能量优化对用户是关键的。我们在英特尔骑士登陆(KNL)处理器上评估了我们算法的性能和能耗作为许多核心架构的代表。我们还比较了KNL,IVY桥和TESLA K40M的性能和能耗。

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