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中国物理学会期刊

基于机器学习从单颗粒动力学中诊断尘埃等离子体全局性质信息

CSTR: 32037.14.aps.74.20251129

Diagnosing global properties of dusty plasma based on machine learning from single particle dynamics

CSTR: 32037.14.aps.74.20251129
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  • 利用机器学习技术开发了一种全新的实验诊断方法, 纯粹基于单颗粒的位置涨落信息, 实现了对二维尘埃等离子体屏蔽参数κ和耦合参数Γ等全局性质信息的准确诊断, 并通过模拟和实验数据有效验证. 为了训练、验证和测试神经网络模型, 针对二维尘埃等离子体系统, 本文实施了不同κΓ数值下数百组独立的朗之万动力学模拟, 以获取大量的单颗粒动力学数据. 为了验证该诊断方法的可行性, 设计了三种不同的卷积神经网络模型, 用于实现对该系统屏蔽参数κ的诊断. 分析结果显示, 这三种模型对κ诊断结果和设定值几乎一致, 均方根误差分别为0.081, 0.279和0.155, 表现达到预期. 而对实验数据, 诊断出的κ数值分布呈单峰分布, 且峰值位置与传统方法诊断出的κ数值高度一致. 在此基础上, 对该诊断方法进行了进一步的优化改进, 使其能同时确定二维尘埃等离子体系统的屏蔽参数κ和耦合参数Γ, 并通过模拟和实验数据确认其准确性. 本文设计的卷积神经网络, 其优异表现清楚地表明, 通过机器学习, 能够仅根据单颗粒动力学信息准确诊断尘埃等离子体系统的全局性质信息.

     

    Currently, it is a great challenge to accurately diagnose global properties of dusty plasmas from limited data. Based on machine learning, a novel diagnostic method for various global properties in dusty plasma experiments is developed from single particle dynamics. It is found that for both two-dimensional (2D) dusty plasma simulations and experiments, the global properties such as the screening parameters κ and the coupling parameter Γ can be accurately determined purely from the position fluctuations of individual particles. Hundreds of independent Langevin dynamical simulations are performed with various specified κ and Γ values, resulting in a great number of individual particle position fluctuation data, which can be used for training, validating, and testing various convolutional neural network (CNN) models. To confirm the feasibility of this diagnostic method, three different CNN models are designed to determin the κ value. For the simulation data, all these CNN models perform excellently in determining the κ value, with the averaged determined κ value almost equal to the specified κ value. For the experiment data, the distribution of the determined κ values always exhibits one prominent peak, which is very consistent with the κ value obtained from the widely accepted phonon spectra fitting method. Furthermore, this diagnostic method is extended to simulatneously determining both the κ and Γ values, achieving satisfactory results by using 2D dusty plasma data from both simulations and experiments. The excellent performance of the CNN models developed here clearly indicates that through machine learning, the global properties of 2D dusty plasmas can be fully characterized purely from single particle dynamics.

     

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