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Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC

机译:校准Alice TPC的空间电荷失真波动的深度神经网络技术

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The Time Projection Chamber (TPC) of the ALICE experiment at the CERN LHC was upgraded for Run 3 and Run 4. Readout chambers based on Gas Electron Multiplier (GEM) technology and a new readout scheme allow continuous data taking at the highest interaction rates expected in Pb-Pb collisions. Due to the absence of a gating grid system, a significant amount of ions created in the multiplication region is expected to enter the TPC drift volume and distort the uniform electric field that guides the electrons to the readout pads. Analytical calculations were considered to correct for space-charge distortion fluctuations but they proved to be too slow for the calibration and reconstruction workflow in Run 3. In this paper, we discuss a novel strategy developed by the ALICE Collaboration to perform distortion-fluctuation corrections with machine learning and convolutional neural network techniques. The results of preliminary studies are shown and the prospects for further development and optimization are also discussed.
机译:CERN LHC的Alice实验的时间投影室(TPC)升级为RUN 3和RUN 4.基于气体电子乘法器(GEM)技术的读出室,新的读出方案允许以最高的相互作用率呈现连续数据在PB-PB碰撞中。由于不存在选网栅格系统,预期在乘法区域中产生的大量离子进入TPC漂移体积并扭曲引导电子向读出垫的均匀电场。分析计算被认为是纠正空间电荷的失真波动,但他们证明在运行中的校准和重建工作流程太慢。在本文中,我们讨论了Alice协作开发的新策略,以执行失真波动校正机器学习与卷积神经网络技术。显示了初步研究的结果,还讨论了进一步发展和优化的前景。

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