基于奇异值分解和多通道变分模态分解时频分析的Golem Mirnov线圈磁流体动力模态识别

IF 1.9 4区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY
Jayakumar Chandrasekaran, Sangeetha Jayaraman
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引用次数: 1

摘要

本文研究了多通道变分模态分解(MVMD)和奇异值分解(SVD)相结合的等离子体托卡马克非平稳信号特性研究方法。我们将该技术直接应用于托卡马克等离子体旋转磁场产生的磁波动分析,而无需任何信号预处理技术。多通道Mirnov线圈信号的主轴(PA)和主分量(PC)的提取是通过奇异值分解技术实现的。多通道变分模态分解技术提供了一个PC矩阵来识别主导谐波为k模。最后,利用希尔伯特变换(Hilbert Transform, HT)进行时频分析。提出的技术处理多通道米尔诺夫线圈信号并行频率识别,也了解极性结构在电流扰动。人工模拟数据和来自Golem托卡马克的米尔诺夫线圈信号有助于测试所提出的技术。在当前上升阶段的Golem数据中,从m = 4、极向结构到m = 3和m = 2的电流扰动发生转变。模拟数据和Golem托卡马克数据生成了所提出模型的结果。本文还将该方法与其他现有的信号分解技术进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Magnetohydrodynamic Mode Identification for Golem Mirnov Coil Signals Using Singular Value Decomposition and Multichannel Variational Mode Decomposition Method for Analyzing Time–Frequency

Magnetohydrodynamic Mode Identification for Golem Mirnov Coil Signals Using Singular Value Decomposition and Multichannel Variational Mode Decomposition Method for Analyzing Time–Frequency

In this paper, we have investigated the method to study non-stationary signal characteristics in plasma tokamak using the combination of Multichannel Variational Mode Decomposition (MVMD) and Singular Value Decomposition (SVD). We have applied this technique directly without any signal preprocessing techniques over the Mirnov coil signals to analyze the magnetic fluctuations produced by the rotating magnetic fields of the plasma in tokamaks. Extraction of Principal axes (PA) and Principal Components (PC) of multichannel Mirnov coil signals are through the singular value decomposition technique. The Multichannel variational mode decomposition technique is provided with a PC matrix to identify the dominant harmonics as K-modes. Finally, the Time–frequency analysis is carried out using Hilbert Transform (HT). The proposed technique handles multichannel Mirnov coil signals in parallel to frequency identification, and also to understand the poloidal structure during current perturbation. Artificially simulated data and Mirnov coil signals from Golem Tokamak aided in testing the proposed technique. In Golem data during the present rise phase, transition happens in the current perturbation from m = 4, poloidal structures to m = 3, and m = 2. The simulated data and Golem tokamak data generated the results of the proposed model. The article also compared this with other existing signal decomposition techniques.

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来源期刊
Journal of Fusion Energy
Journal of Fusion Energy 工程技术-核科学技术
CiteScore
2.20
自引率
0.00%
发文量
24
审稿时长
2.3 months
期刊介绍: The Journal of Fusion Energy features original research contributions and review papers examining and the development and enhancing the knowledge base of thermonuclear fusion as a potential power source. It is designed to serve as a journal of record for the publication of original research results in fundamental and applied physics, applied science and technological development. The journal publishes qualified papers based on peer reviews. This journal also provides a forum for discussing broader policies and strategies that have played, and will continue to play, a crucial role in fusion programs. In keeping with this theme, readers will find articles covering an array of important matters concerning strategy and program direction.
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