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首页> 外文期刊>The Astrophysical Journal. Supplement Series >Single-pulse Detection Algorithms for Real-time Fast Radio Burst Searches Using GPUs
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Single-pulse Detection Algorithms for Real-time Fast Radio Burst Searches Using GPUs

机译:用于实时快速无线电突发搜索的单脉冲检测算法使用GPU

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The detection of non-repeating or irregular events in time-domain radio astronomy has gained importance over the last decade due to the discovery of fast radio bursts. Existing or upcoming radio telescopes are gathering more and more data, and consequently, the software, which is an important part of these telescopes, must process large data volumes at high data rates. Data has to be searched through to detect new and interesting events, often in real time. These requirements necessitate new and fast algorithms that must process data quickly and accurately. In this work, we present new algorithms for single-pulse detection using boxcar filters. We have quantified the signal loss introduced by single-pulse-detection algorithms, which use boxcar filters, and based on these results, we have designed two distinct "lossy" algorithms. Our lossy algorithms use an incomplete set of boxcar filters to accelerate detection at the expense of a small reduction in detected signal power. We present formulae for signal loss, descriptions of our algorithms and their parallel implementation on NVIDIA GPUs using CUDA. We also present tests of correctness, tests on artificial data, and the performance achieved. Our implementation can process SKA-MID-like data 266x faster than real time on an NVIDIA P100 GPU and 500x faster than real time on an NVIDIA Titan V GPU with a mean signal power loss of 7%. We conclude with prospects for single-pulse detection for beyond the SKA era, nanosecond time-resolution radio astronomy.
机译:由于发现快速无线电突发,在过去十年中,在时域射频天文学中的非重复或不规则事件的检测已经获得了重要性。现有或即将到来的无线电望远镜正在收集越来越多的数据,因此,该软件是这些望远镜的重要组成部分,必须以高数据速率处理大数据量。必须通过实时搜索数据来检测新的和有趣的事件。这些要求需要新的和快速算法,必须快速准确地处理数据。在这项工作中,我们使用BoxCar过滤器呈现用于单脉冲检测的新算法。我们已经量化了单脉冲检测算法引入的信号损失,该算法使用BoxCar滤波器,并基于这些结果,我们设计了两个不同的“损耗”算法。我们的损耗算法使用了一个不完整的Boxcar过滤器,以根据检测到的信号功率的牺牲减少来加速检测。我们使用CUDA呈现信号丢失,我们的算法描述及其对NVIDIA GPU的并行实现。我们还存在对人工数据的正确性,测试的测试,以及实现的性能。我们的实现可以在NVIDIA P100 GPU上的实时处理SKA-MID-MID数据266x,而不是比NVIDIA Titan V GPU上的实时时间更快,平均信号功率损耗为7%。我们的结论是以超越SKA时代,纳秒时间分辨率射线天文学的单脉冲检测前景。

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