基于深度学习辅助微波等离子体相互作用的等离子体密度估计技术

Pratik Ghosh, Bhaskar Chaudhury, Shishir Purohit, Vishv Joshi, Ashray Kothari, Devdeep Shetranjiwala
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引用次数: 0

摘要

摘要电子密度是表征任何等离子体的关键参数。低温等离子体领域的大部分等离子体应用和研究都是基于对等离子体密度和温度的准确估计。传统的电子密度测量方法为任何给定的线性LTP器件提供轴向和径向分布。这些方法的主要缺点是操作范围(不是很广)、仪器笨重和数据分析过程复杂。本文提出了一种基于深度学习(DL)辅助的微波等离子体相互作用的非侵入性策略,可以作为一种新的替代方法来解决与现有等离子体密度测量技术相关的一些挑战。利用等离子体微波散射引起的电场图来估计密度分布。概念验证在一个模拟训练数据集上进行了测试,该数据集包括一个低温、非磁化、碰撞等离子体。在我们的研究中考虑了不同类型的对称(高斯形)和不对称密度分布,范围为10 16 -10 19 m−3,解决了一系列的实验配置。在准备合成训练数据集时,考虑了现实生活中的实验问题,如噪声的存在和测量数据的数量(密集与稀疏)。基于dl的技术具有确定等离子体内电子密度分布的能力。采用结构相似性指数、均方根对数误差和平均绝对百分比误差这三个指标对基于dl的方法的性能进行了评估。所得结果在估计给定线性等离子体器件密度的二维径向分布方面表现出良好的性能,并肯定了所提出的基于机器学习的等离子体诊断方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning assisted microwave-plasma interaction based technique for plasma density estimation
Abstract The electron density is a key parameter to characterize any plasma. Most of the plasma applications and research in the area of low-temperature plasmas (LTPs) are based on the accurate estimations of plasma density and plasma temperature. The conventional methods for electron density measurements offer axial and radial profiles for any given linear LTP device. These methods have major disadvantages of operational range (not very wide), cumbersome instrumentation, and complicated data analysis procedures. The article proposes a deep learning (DL) assisted microwave-plasma interaction-based non-invasive strategy, which can be used as a new alternative approach to address some of the challenges associated with existing plasma density measurement techniques. The electric field pattern due to microwave scattering from plasma is utilized to estimate the density profile. The proof of concept is tested for a simulated training data set comprising a low-temperature, unmagnetized, collisional plasma. Different types of symmetric (Gaussian-shaped) and asymmetrical density profiles, in the range 10 16 –10 19 m −3 , addressing a range of experimental configurations have been considered in our study. Real-life experimental issues such as the presence of noise and the amount of measured data (dense vs sparse) have been taken into consideration while preparing the synthetic training data-sets. The DL-based technique has the capability to determine the electron density profile within the plasma. The performance of the proposed DL-based approach has been evaluated using three metrics- structural similarity index, root mean square logarithmic error, and mean absolute percentage error. The obtained results show promising performance in estimating the 2D radial profile of the density for the given linear plasma device and affirms the potential of the proposed machine learning-based approach in plasma diagnostics.
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