大气压等离子体射流输出成分的数据驱动预测

Li Lin, Sophia Gershman, Yevgeny Raitses, Michael Keidar
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引用次数: 0

摘要

露天冷大气等离子体(CAP)承载了大量化学物质,参与了数千种化学反应。其化学成分的综合诊断在从活性氧和氮起关键作用的医学到表面改性的各个领域都很重要。在实际应用中,厘米级的氦-空气射流工作几分钟,具有微米级的流线和数百GHz范围内的大气压引起的碰撞频率。为了解决这个复杂的多尺度问题,我们引入了一种机器学习方法:使用物理信息神经网络(PINN)来解决预测由氦气和空气混合提供的CAP射流的物种浓度、气体温度和电子温度的完整列表所固有的多尺度复杂性。对等离子体射流下游的o3、n2o和no2浓度的实验测量,结合基本物理定律、质量和电荷守恒定律,约束了PINN,使其能够预测实验中无法获得的所有物质的浓度,以及气体和电子温度。因此,结果符合我们提供的所有物理定律,并且与测量的浓度具有化学平衡。这种方法有望用有限的实验数据集描述和潜在地调节复杂的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven prediction of the output composition of an atmospheric pressure plasma jet
Abstract Cold atmospheric plasma (CAP) in open air hosts numerous chemical species engaged in thousands of chemical reactions. Comprehensive diagnosis of its chemical composition is important across various fields from medicine, where reactive oxygen and nitrogen play key roles, to surface modification. In applications, a centimeter-scale helium–air jet operates for minutes, featuring micrometer-sized streamers and an atmospheric pressure-induced collision frequency in the hundreds of GHz range. To address this intricate multi-scale issue, we introduce a machine learning approach: using a physics-informed neural network (PINN) to tackle the multi-scale complexities inherent in predicting the complete list of species concentrations, gas temperature, and electron temperature of a CAP jet supplied with a mixture of helium and air. Experimental measurements of O 3 , N 2 O, and NO 2 concentrations downstream of the plasma jet, combined with fundamental physics laws, the conservation of mass and charge, constrain the PINN, enabling it to predict the concentrations of all species that are not available from the experiment, along with gas and electron temperatures. The results, therefore, obey all the physical laws we provided and can have a chemical balance with the measured concentrations. This methodology holds promise for describing and potentially regulating complex systems with limited experimental datasets.
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