论文标题

用人工智能在电子离子对撞机上设计探测器

Design of Detectors at the Electron Ion Collider with Artificial Intelligence

论文作者

Fanelli, Cristiano

论文摘要

设计的人工智能(AI)是许多学科的相对较新但活跃的研究领域。令人惊讶的是,当涉及使用AI的探测器时,这是其起步阶段的区域。电子离子对撞机是研究强力的终极机器。 EIC是一个大规模的实验,其集成检测器的延伸约$ \ pm $ 35米,包括中央,远方和远处的区域。中央检测器的设计由多个子检测器进行,每个探测器原则上都以多维设计空间和多个设计标准为特征。使用Geant4的仿真通常是计算密集的,检测器设计的优化可能包括非差异术语以及嘈杂的目标。在这种情况下,AI可以提供最有效的解决方案,以有效地解决复杂的组合问题。特别是,在检测器提案中探索了一种原始代理,ECCE探讨了使用多目标优化设计EIC检测器的跟踪系统的可能性。本文档概述了这些技术和在EIC探测器提案期间取得的最新进展。未来的高能核物理实验可以利用基于AI的策略来设计更有效的探测器,通过优化物理标准驱动的性能并最​​大程度地减少其实现成本。

Artificial Intelligence (AI) for design is a relatively new but active area of research across many disciplines. Surprisingly when it comes to designing detectors with AI this is an area at its infancy. The Electron Ion Collider is the ultimate machine to study the strong force. The EIC is a large-scale experiment with an integrated detector that extends for about $\pm$35 meters to include the central, far-forward, and far-backward regions. The design of the central detector is made by multiple sub-detectors, each in principle characterized by a multidimensional design space and multiple design criteria also called objectives. Simulations with Geant4 are typically compute intensive, and the optimization of the detector design may include non-differentiable terms as well as noisy objectives. In this context, AI can offer state of the art solutions to solve complex combinatorial problems in an efficient way. In particular, one of the proto-collaborations, ECCE, has explored during the detector proposal the possibility of using multi-objective optimization to design the tracking system of the EIC detector. This document provides an overview of these techniques and recent progress made during the EIC detector proposal. Future high energy nuclear physics experiments can leverage AI-based strategies to design more efficient detectors by optimizing their performance driven by physics criteria and minimizing costs for their realization.

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