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Identifying JET instabilities with neural networks

机译:用神经网络识别JET不稳定性

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The identification of plasma instabilities occurring during experimental pulses is of particular relevance for avoiding dangerous events in high performance discharges. In order to predict the onset of plasma instabilities, an identification method, based on the use of artificial neural networks (ANNs), has been applied. The potential of the networks to identify the dynamics of edge-localized mode (ELM) and sawtooth instabilities has been first tested using synthetic data obtained through a suitable mathematical model. The networks have then been applied to experimental measurement from JET pulses. An appropriate selection of the networks topology allows identifying quite well the time evolution of the edge temperature and of magnetic fields, considered the best indicators of the ELMs. A quite limited number of periodic oscillations are used to train the networks, which then manage to follow quite well the dynamics of the instabilities. Furthermore, a careful analysis of the various terms appearing in the rule identified by the ANNs gives clear indications about the nature of these instabilities and their dynamical behavior.
机译:识别在实验脉冲期间发生的等离子体不稳定性与避免高性能放电中的危险事件特别相关。为了预测血浆不稳定性的发作,已经应用了基于人工神经网络(ANN)的识别方法。首先,使用通过合适的数学模型获得的合成数据来测试网络识别边缘定位模式(ELM)和锯齿不稳定性动力学的潜力。然后将网络应用于JET脉冲的实验测量。对网络拓扑的适当选择可以很好地识别边缘温度和磁场的时间演变,这被认为是ELM的最佳指标。数量有限的周期性振荡用于训练网络,然后设法很好地遵循不稳定性的动态变化。此外,对神经网络识别的规则中出现的各种术语的仔细分析,可以清楚地表明这些不稳定性的性质及其动态行为。

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