光谱学与光谱分析
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高压Ar气对激光诱导土壤等离子体辐射的增强效应
史金超,陈金忠* ,魏艳红,郭庆林,怀素芳
河北大学物理科学与技术学院,河北 保定 071002
Enhancement Effect of Argon Atmosphere at High Pressure on Radiation Intensity of Laser-Induced Soil Plasmas
SHI Jin-chao, CHEN Jin-zhong* , WEI Yan-hong, GUO Qing-lin, HUI Su-fang
College of Physics Science and Technolopy, Hebei University, Baoding 071002, China
摘要 : 使用高能量钕玻璃脉冲激光器(~30J, 0.7 ms)烧蚀土壤样品获得等离子体,通过对等离子体图像和光谱的采集,以及对烧蚀质量的测量,分析了高气压(0.2~1.1 MPa)Ar气环境对等离子体辐射强度的影响。结果表明,随着Ar气气压的升高等离子体的体积被压缩,温度升高,亮度明显增强。在实验条件下,等离子体发射光谱强度随着环境气压上升而不断提高,但是激光对样品的烧蚀质量却逐渐下降。结合实验过程对测量结果进行了适当的讨论。
关键词 :激光诱导等离子体;辐射强度;土壤;环境气体压力
Abstract :In the present paper, the effects of argon atmosphere at high pressure(0.2-1.1 MPa) on the radiation intensity of the plasma induced by a high energy neodymium glass laser (energy ~30 J, pulse width 0.7 ms) were studied by recording the photograph and spectra of the plasma as well as measuring the ablated mass. The experimental results show that the volume of the plasma was compressed, the temperature increased, and the lightness enhanced significantly when pressure was raised. Under our experimental condition, the radiation intensities of the plasmas were enhanced with the increase in the gas pressure; but the ablated mass of the sample decreased. The measured results are discussed, combined with the process of the experiment.
Key words :Laser-induced plasma;Radiation intensity;Soil;Pressure of ambient gas
收稿日期: 2005-05-08
修订日期: 2005-08-18
通讯作者:
陈金忠
引用本文:
史金超,陈金忠* ,魏艳红,郭庆林,怀素芳 . 高压Ar气对激光诱导土壤等离子体辐射的增强效应[J]. 光谱学与光谱分析, 2006, 26(05): 798-801.
SHI Jin-chao, CHEN Jin-zhong* , WEI Yan-hong, GUO Qing-lin, HUI Su-fang. Enhancement Effect of Argon Atmosphere at High Pressure on Radiation Intensity of Laser-Induced Soil Plasmas . SPECTROSCOPY AND SPECTRAL ANALYSIS, 2006, 26(05): 798-801.
链接本文:
https://www.gpxygpfx.com/CN/Y2006/V26/I05/798
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