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Evolution patterns and parameter regimes in edge localized modes on the National Spherical Torus Experiment

机译:国家球形圆环实验中边缘局部化模式的演化模式和参数体制

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摘要

We implement unsupervised machine learning techniques to identify characteristic evolution patterns and associated parameter regimes in edge localized mode (ELM) events observed on the National Spherical Torus Experiment. Multi-channel, localized measurements spanning the pedestal region capture the complex evolution patterns of ELM events on Alfven timescales. Some ELM events are active for less than 100 mu s, but others persist for up to 1 ms. Also, some ELM events exhibit a single dominant perturbation, but others are oscillatory. Clustering calculations with time-series similarity metrics indicate the ELM database contains at least two and possibly three groups of ELMs with similar evolution patterns. The identified ELM groups trigger similar stored energy loss, but the groups occupy distinct parameter regimes for ELM-relevant quantities like plasma current, triangularity, and pedestal height. Notably, the pedestal electron pressure gradient is not an effective parameter for distinguishing the ELM groups, but the ELM groups segregate in terms of electron density gradient and electron temperature gradient. The ELM evolution patterns and corresponding parameter regimes can shape the formulation or validation of nonlinear ELM models. Finally, the techniques and results demonstrate an application of unsupervised machine learning at a data-rich fusion facility.
机译:我们实施无监督的机器学习技术,以识别在国家球形圆环实验中观察到的边缘局部模式(ELM)事件中的特征演化模式和相关参数体制。跨越基座区域的多通道局部测量可捕获Alfven时标上ELM事件的复杂演化模式。一些ELM事件的活动时间少于100毫秒,但其他事件持续的时间长达1 ms。同样,某些ELM事件表现出单一的显性扰动,但其他事件具有振荡性。具有时间序列相似性度量的聚类计算表明,ELM数据库包含至少两组甚至可能三组具有相似演变模式的ELM。识别出的ELM组触发了类似的存储能量损失,但是这些组针对ELM相关量(例如等离子电流,三角形和基座高度)占据不同的参数范围。值得注意的是,基座电子压力梯度不是区分ELM基团的有效参数,但是ELM基团在电子密度梯度和电子温度梯度方面是分离的。 ELM演化模式和相应的参数范围可以塑造非线性ELM模型的形成或验证。最后,这些技术和结果证明了无监督机器学习在数据丰富的融合设施中的应用。

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