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CNN-BASED REAL-TIME VIDEO DETECTION OF PLASMA INSTABILITY IN NUCLEAR FUSION APPLICATIONS

机译:基于CNN的核融合应用等离子不稳定的实时视频检测

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In this paper a real-time detection of plasma instabilities, called MARFEs, is performed through a real-time image processing on plasma video sequences. These sequences are recorded by a vision system based on a CCD camera installed at Frascati Tokamak Upgrade (FTU). The strategy used to perform the. task is based on a new family of nonlinear analog processors, digitally programmable, implemented into the so-called Cellular Neural Network Universal Machine (CNN-UM). The detection system allows to carry out safer nuclear fusion experiments, preventing the plant from excessive mechanical and thermal stress which occurs during plasma instability phenomena (i.e. disruptions). Experimental results, obtained on the FTU machine, are fully satisfactory.
机译:在本文中,通过对等离子体视频序列的实时图像处理来执行称为MARFES的等离子体稳定性的实时检测。这些序列由基于安装在Frascati Tokamak升级(FTU)的CCD摄像机的视觉系统记录。用于执行的策略。任务是基于新的非线性模拟处理器系列,数字可编程,实现到所谓的蜂窝神经网络通用机器(CNN-UM)中。检测系统允许进行更安全的核聚变实验,防止植物过量的机械和热应力发生在血浆不稳定性现象(即中断)期间发生。在FTU机器上获得的实验结果完全令人满意。

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