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Weighted majority rule ensemble classifier for sensor fault classification for plasma position control in Tokamaks

机译:用于托卡马克斯的等离子体位置控制的传感器故障分类加权多数规则集分类

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摘要

Tokamaks are the most promising devices which employ magnetic confinement of Deuterium and Tritium plasma to achieve nuclear fusion for power generation. Magnetic flux sensors are employed to measure the position of the plasma column inside the device. Faults occurring in these sensors may cause the failure of control of the plasma position, thereby terminating the fusion process. In this paper, we present a comparison of different Machine Learning (ML) algorithms to detect and classify the sensors' faults. We applied four different ML algorithms; namely, Logistic Regression based Multi-layer Perceptron Classifier (MLP), Support Vector Classifier (SVC), K-Nearest Neighbor (KNN), and Decision Tree (DT) as the individual ML classifiers for the task of sensor fault classification. We propose an ensemble classifier (ECF) using the classifiers, as mentioned earlier. We provide a comparative assessment of the classification accuracy of different classifiers, namely, MLP, SVC, KNN, DT, and ECF. The ECF utilized a weighted majority voting method to combine the decision of individual faults classifiers. Overall, robustness to the miss-classification of new data by the individual sensor fault classifiers by applying the ECF is reported.
机译:Tokamak是最有前途的装置,采用氘和氚等等离子体磁控隔离,以实现发电的核融合。采用磁通传感器测量装置内等离子体柱的位置。在这些传感器中发生的故障可能导致控制等离子体位置的控制失败,从而终止融合过程。在本文中,我们展示了不同机器学习(ML)算法的比较来检测和分类传感器的故障。我们应用了四种不同的ML算法;即,基于逻辑回归的多层Perceptron分类器(MLP),支持向量分类器(SVC),K最近邻居(KNN)和决策树(DT)作为传感器故障分类任务任务的单个ML分类器。我们提出了一个使用分类器的集合分类器(ECF),如前所述。我们提供不同分类器的分类准确性的比较评估,即MLP,SVC,KNN,DT和ECF。 ECF利用加权多数投票方法来结合各个故障分类器的决定。总的来说,通过应用ECF,单独的传感器故障分类器对错过的新数据进行错失分类的鲁棒性。

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