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Deep learning based track reconstruction on CEPC luminometer

机译:基于深度学习的CEPC光度计上的轨迹重建

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摘要

We study the track reconstruction algorithms of the CEPC luminometer. Depend on the current geometry design, the conventional track reconstruction method is applied, but it suffers the energy leakage problem when tracks falling into the tile gaps regions. To solve this problem, a novel reconstruction method based on deep neural networks has been investigated, and the reconstruction efficiency has been improved significantly, as well as the energy and direction resolutions. This new reconstruction method is proposed to replace the conventional one for the CEPC luminometer.
机译:我们研究了CEPC光度计的轨迹重建算法。取决于当前的几何设计,应用了常规的轨道重构方法,但是当轨道落入瓷砖间隙区域时,它会遇到能量泄漏的问题。为了解决这个问题,人们研究了一种基于深度神经网络的新颖的重建方法,极大地提高了重建效率以及能量和方向分辨率。提出了这种新的重建方法来代替CEPC发光计的常规方法。

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