论文标题

使用卷积神经网络的时间投影室中的事件选择和背景拒绝,并在熟练的伽马射线偏光仪任务中进行特定应用

Event Selection and Background Rejection in Time Projection Chambers Using Convolutional Neural Networks and a Specific Application to the AdEPT Gamma-ray Polarimeter Mission

论文作者

Garnett, Richard L., Byun, Soo Hyun, Hanu, Andrei R., Hunter, Stanley D.

论文摘要

先进的能量对望远镜伽马射线偏振仪使用时间投影室来测量对生产事件,并有望产生原始仪器数据速率的四个数量级,而不是典型的卫星数据通信。卷积神经网络Gammanet建议通过在板载和背景事件的板载分类来解决此问题,将数据速率降低到可以通过典型的卫星通信系统可以适应的水平。为了训练gammanet,使用Geant4 Monte Carlo Code模拟了一组1.1x10^6对生产事件和10^6背景事件。模拟了另外一组10^3对的生产和10^5个背景事件,以测试Gammanet的背景歧视能力。通过优化,Gammanet已达到了银河宇宙射线质子事件的建议背景排斥要求。考虑到下行链路速度的最佳案例假设,对成对产生的信号灵敏度在5和5和250 MEV ID ID gamma射线的1.1 +/- 0.5%至69 +/- 2%之间。对于最坏的下行链路速度情况,该范围为0.1 +/- 0.1%至17 +/- 2%。特征可视化算法在Gammanet上的应用表明,对电子噪声和事件的响应减少了,并进入了框架,并增加了对接近近距离的平行轨道的响应。 Gammanet已成功实施并显示出令人鼓舞的结果。

The Advanced Energetic Pair Telescope gamma-ray polarimeter uses a time projection chamber for measuring pair production events and is expected to generate a raw instrument data rate four orders of magnitude greater than is transmittable with typical satellite data communications. GammaNet, a convolutional neural network, proposes to solve this problem by performing event classification on-board for pair production and background events, reducing the data rate to a level that can be accommodated by typical satellite communication systems. In order to train GammaNet, a set of 1.1x10^6 pair production events and 10^6 background events were simulated for the Advanced Energetic Pair Telescope using the Geant4 Monte Carlo code. An additional set of 10^3 pair production and 10^5 background events were simulated to test GammaNet's capability for background discrimination. With optimization, GammaNet has achieved the proposed background rejection requirements for Galactic Cosmic Ray proton events. Given the best case assumption for downlink speeds, signal sensitivity for pair production ranged between 1.1 +/- 0.5% to 69 +/- 2% for 5 and 250 MeV incident gamma rays. This range became 0.1 +/- 0.1% to 17 +/- 2% for the worst case scenario of downlink speeds. The application of a feature visualization algorithm to GammaNet demonstrated decreased response to electronic noise and events exiting or entering the frame and increased response to parallel tracks that are close in proximity. GammaNet has been successfully implemented and shows promising results.

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