论文标题

使用机器学习加快并改善热量计的研发

Using Machine Learning to Speed Up and Improve Calorimeter R&D

论文作者

Ratnikov, Fedor

论文摘要

新实验的设计以及正在进行的实验的升级是实验性高能物理学的连续过程。由于最佳解决方案是不同种类限制之间的权衡,因此需要快速翻转以评估不同配置中不同技术的物理性能。两个典型的问题减慢了对量热计探测器技术和配置的特定方法的物理性能评估的速度: - 模拟特定的检测器特性,包括原始检测器响应以及信号处理链,以充分模拟不同信号和背景条件的热量计响应。这包括将从一般Geant模拟获得的检测特性与从不同种类的基准和电子原型的梁测试获得的特性相结合。 - 构建一种适当的重建算法,用于对检测器响应的物理重建,该算法经过合理调整以提取给定检测器配置提供的大部分性能。 从第一原则开始,这两个问题都需要重大的发展努力。幸运的是,可以通过使用现代机器学习方法来解决这两个问题,从而使探测器技术的可用详细信息结合在一起,以半自动化的方式与相应的更高级别的物理性能。在本文中,我们讨论了使用先进的机器学习技术来加快探测器开发和优化周期的精度,并着重于通过将这种方法应用于LHC升级LHCB检测器的一部分来缩放电磁热量计设计,从而强调了获得的经验和实际结果。

Design of new experiments, as well as upgrade of ongoing ones, is a continuous process in the experimental high energy physics. Since the best solution is a trade-off between different kinds of limitations, a quick turn over is necessary to evaluate physics performance for different techniques in different configurations. Two typical problems which slow down evaluation of physics performance for particular approaches to calorimeter detector technologies and configurations are: - Emulating particular detector properties including raw detector response together with a signal processing chain to adequately simulate a calorimeter response for different signal and background conditions. This includes combining detector properties obtained from the general Geant simulation with properties obtained from different kinds of bench and beam tests of detector and electronics prototypes. - Building an adequate reconstruction algorithm for physics reconstruction of the detector response which is reasonably tuned to extract the most of the performance provided by the given detector configuration. Being approached from the first principles, both problems require significant development efforts. Fortunately, both problems may be addressed by using modern machine learning approaches, that allow a combination of available details of the detector techniques into corresponding higher level physics performance in a semi-automated way. In this paper, we discuss the use of advanced machine learning techniques to speed up and improve the precision of the detector development and optimisation cycle, with an emphasis on the experience and practical results obtained by applying this approach to epitomising the electromagnetic calorimeter design as a part of the upgrade project for the LHCb detector at LHC.

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