Convolutional neural networks (CNNs) have seen extensive applications in scientific data analysis, including in neutrino telescopes. However, the data from these experiments present numerous challenges to CNNs, such as non-regular geometry, sparsity, and high dimensionality. Consequently, CNNs are highly inefficient on neutrino telescope data, and require significant pre-processing that results in information loss. We propose sparse submanifold convolutions (SSCNNs) as a solution to these issues and show that the SSCNN event reconstruction performance is comparable to or better than traditional and machine learning algorithms. Additionally, our SSCNN runs approximately 16 times faster than a traditional CNN on a GPU. As a result of this speedup, it is expected to be capable of handling the trigger-level event rate of IceCube-scale neutrino telescopes. These networks could be used to improve the first estimation of the neutrino energy and direction to seed more advanced reconstructions, or to provide this information to an alert-sending system to quickly follow-up interesting events.
翻译:进化神经网络(CNNs)在科学数据分析(包括中子望远镜)中应用了广泛的科学数据分析应用,但是,这些实验的数据对CNN提出了许多挑战,例如非常规几何、宽度和高维度。因此,CNN在中子望远镜数据上效率极低,需要大量的预处理,从而导致信息损失。我们提议稀疏次神经网络(SSCNNs)作为这些问题的解决办法,并表明SSCNN事件重建表现与传统和机器学习算法相比或更好。此外,我们的SSCNN事件重建表现比传统的CNN系统运行速度快约16倍,比GPU上的传统CNN快16倍。由于这种速度加快,预计它能够处理IceCube规模中微子望远镜的触发级事件率。这些网络可以用来改进对中子能量的首次估计,并引导更先进的重建,或者向一个警报发送系统提供这一信息,以便快速跟踪有趣的事件。</s>