论文标题

像素数据实时处理是HL-LHC升级及以后的下一步

Pixel data real time processing as a next step for HL-LHC upgrades and beyond

论文作者

Kim, Junho, Lee, Jongho, Moon, Chang-Seong, Savoy-Navarro, Aurore, Yang, Un-Ki

论文摘要

LHC的实验正在实施高光度LHC的新颖且具有挑战性的探测器升级,其中包括跟踪系统。本文使用简化的像素跟踪器报告了通过电子触发器说明的性能研究。为了实现实时触发(例如,在40 MHz处理HL-LHC碰撞事件),开发了简单的算法,用于重建基于像素的轨道和轨道隔离,并利用基于像素探测器信息的查找表。当包括像素探测器信息时,可以看到电子触发性能的显着增长。特别是,在该检测器的整个$η$覆盖率上,信号选择效率超过95 \%,降低速率最高为20倍。此外,它在梁轴(z)方向上重建了P-P碰撞点,高精度在非常中央地区的20 $μ$ m分辨率($ |最<0.8 $),并且在正向区域中最高为380 $μ$ m(2.7 $ <|η| <$ 3.0)。这项研究以及结果很容易适应MUON案例以及LHC和HL-LHC以外的其他机器的不同跟踪系统。像素信息的这种实时处理的可行性主要受实验的级别触发潜伏期的限制。前端ASIC设计,新的处理器和嵌入式人工智能算法也可以克服这一点。

The experiments at LHC are implementing novel and challenging detector upgrades for the High Luminosity LHC, among which the tracking systems. This paper reports on performance studies, illustrated by an electron trigger, using a simplified pixel tracker. To achieve a real-time trigger (e.g. processing HL-LHC collision events at 40 MHz), simple algorithms are developed for reconstructing pixel-based tracks and track isolation, utilizing look-up tables based on pixel detector information. Significant gains in electron trigger performance are seen when pixel detector information is included. In particular, a rate reduction up to a factor of 20 is obtained with a signal selection efficiency of more than 95\% over the whole $η$ coverage of this detector. Furthermore, it reconstructs p-p collision points in the beam axis (z) direction, with a high precision of 20 $μ$m resolution in the very central region ($|η| < 0.8$), and, up to 380 $μ$m in the forward region (2.7 $< |η| <$ 3.0). This study as well as the results can easily be adapted to the muon case and to the different tracking systems at LHC and other machines beyond the HL-LHC. The feasibility of such real-time processing of the pixel information is mainly constrained by the Level-1 trigger latency of the experiment. How this might be overcome by the Front-End ASIC design, new processors, and embedded Artificial Intelligence algorithms is briefly tackled as well.

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