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首页> 外文期刊>Journal of Analytical Atomic Spectrometry >Assessment of the performance of quantitative feature-based transfer learning LIBS analysis of chromium in high temperature alloy steel samples
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Assessment of the performance of quantitative feature-based transfer learning LIBS analysis of chromium in high temperature alloy steel samples

机译:高温合金钢样品中铬的定量特征转移学习宿率分析评价

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摘要

It is a challenge task to enhance the analysis accuracy of laser-induced breakdown spectroscopy (LIBS) in high temperature applications when certified standard samples used for building calibration curves at high temperature are limited or not available. A novel LIBS quantitative analysis method for alloy steel at high temperature via feature-based transfer learning (FTL) is proposed. The spectral data of calibration samples at room temperature and the spectral data of uncalibrated samples at high temperature are together transferred into a high-dimensional feature space using kernel function mapping where an LIBS regression model is trained and established. For testing samples, the measured spectra at high temperature are mapped into the high-dimensional feature space with the same kernel parameters used in the training process, and then the concentration results can be obtained by the regression model. Experiments on certified alloy steel standard samples were conducted, in which 12 samples with both the concentration information and the measured spectra at room temperature and 8 samples only with the spectra measured at high temperature were used to train the analysis model. The 8 samples at high temperature were used for testing. The experimental results of the Cr concentration showed that with feature-based transfer learning, the mean relative error decreased from 32.31% to 6.08%. The proposed method does not need the element concentration for samples at high temperature to build the regression model, which provides a feasible and effective approach for LIBS analysis of samples at high temperature, such as fast industrial measurements in iron and steel smelting production processes.
机译:当用于在高温下建造校准曲线的经过认证的标准样本受限时,提高高温应用中激光诱导的击穿光谱(LIBS)的分析准确性是一种挑战任务。提出了一种新颖的LIBS通过基于特征的转移学习(FTL)在高温下的合金钢定量分析方法。在室温下校准样本的频谱数据和高温下未校准样本的光谱数据使用内核函数映射在高维特征空间中一起传递到高维特征空间中,其中训练并建立了Libs回归模型。对于测试样品,高温下的测量光谱映射到高维特征空间,在训练过程中使用的相同内核参数,然后可以通过回归模型获得浓度结果。进行了认证合金钢标准样品的实验,其中,在室温下具有浓度信息和测量光谱的12个样品,仅使用高温测量的光谱在高温下测量的8个样品进行分析模型。高温下的8个样品用于测试。 CR浓度的实验结果表明,随着基于特征的转移学习,平均相对误差从32.31%降至6.08%。所提出的方法不需要在高温下进行样品的元素浓度,以构建回归模型,这为高温下的样品分析提供了可行有效的方法,例如钢铁冶炼生产过程中的快速工业测量。

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  • 来源
    《Journal of Analytical Atomic Spectrometry》 |2020年第11期|2639-2648|共10页
  • 作者单位

    School of Mechanical Engineering University of Science and Technology Beijing Beijing 100083 China;

    Basic Experimental Center of Natural Science University of Science and Technology Beijing Beijing 100083 China;

    School of Mechanical Engineering University of Science and Technology Beijing Beijing 100083 China;

    School of Mechanical Engineering University of Science and Technology Beijing Beijing 100083 China Key Laboratory of Fluid Interaction with Material Ministry of Education Beijing 100083 China;

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