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Automatic detection of L-H transition in KSTAR by support vector machine

机译:支持向量机自动检测KSTAR中的L-H跃迁

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摘要

Method for automatic detection of L-H transition using Support Vector Machine (SVM), a popular tool of supervised machine learning tools, has been evaluated in order to improve plasma density control in KSTAR. Through the SVM, a nonlinear classifier is trained to distinguish L-mode and H-mode using two kinds of diagnostic data measured in KSTAR. The trained classifier has been analyzed for possible usage on the real-time detection through the truncation of the training samples. Study on the optimization of the training samples, and corresponding accuracy change is made for evaluating feasibility for real-time implementations.
机译:为了改善KSTAR中的等离子体密度控制,已经评估了使用支持向量机(SVM)(一种受监督的机器学习工具的流行工具)自动检测L-H跃迁的方法。通过SVM,训练了非线性分类器,以使用在KSTAR中测量的两种诊断数据来区分L模式和H模式。已对经过训练的分类器进行了分析,以便通过截断训练样本来将其用于实时检测。研究了训练样本的优化以及相应的精度变化,以评估实时实施的可行性。

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