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Design of GPU-based parallel computation architecture of Thomson scattering diagnostic in KSTAR

机译:基于GPU的KSTAR散射诊断的基于GPU的并行计算架构的设计

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The Thomson scattering (TS) System is a diagnostic system to measure electron temperature and density profiles of tokamak plasma. The TS system requires measurement of many input signals, and the amount of raw data has significantly increased since the TS data acquisition (DAQ) system was upgraded to a fast digitizer. Research has been done on applying artificial neural network (ANN) to TS data analysis for reducing calculation time. In this paper, we propose a design of computation architecture to effectively process the increased amount of data caused by the fast digitizer and to maximize the computation performance of the ANN. In the design, the intensity values of each input signal and the ANNs can be computed in parallel by utilizing a graphical processing unit (GPU). Furthermore, we integrate the data analysis task into the TS DAQ program for real time operation. Considering stability of the integration, we separate tasks of the data acquisition and the data analysis into each thread operation, and make tasks of each digitizer board to be conducted in parallel. In the feasibility test of the design, the calculation time is shown to be appropriate for real time operation.
机译:汤姆森散射(TS)系统是一种测量托卡马克等离子体的电子温度和密度轮廓的诊断系统。 TS系统需要测量许多输入信号,并且由于TS数据采集(DAQ)系统升级到快速数字转换器,原始数据量显着增加。在将人工神经网络(ANN)应用于降低计算时间的TS数据分析上进行了研究。在本文中,我们提出了一种计算架构的设计,以有效地处理由快速数字转换器引起的增加的数据量,并最大化ANN的计算性能。在设计中,可以通过利用图形处理单元(GPU)来并行计算每个输入信号和ANN的强度值。此外,我们将数据分析任务集成到TS DAQ程序中以进行实时操作。考虑到集成的稳定性,我们将数据采集和数据分析的任务分开到每个线程操作中,并使每个数字转换板的任务进行并行进行。在设计的可行性测试中,计算时间显示适当的实时操作。

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