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首页> 外文期刊>Plasma Science & Technology >Detection of K in soil using time-resolved laser-induced breakdown spectroscopy based on convolutional neural networks
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Detection of K in soil using time-resolved laser-induced breakdown spectroscopy based on convolutional neural networks

机译:基于卷积神经网络,使用时间分辨激光诱导击穿光谱检测土壤中的k

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摘要

One of the technical bottlenecks of traditional laser-induced breakdown spectroscopy (LIBS) is the difficulty in quantitative detection caused by the matrix effect. To troubleshoot this problem, this paper investigated a combination of time-resolved LIBS and convolutional neural networks (CNNs) to improve K determination in soil. The time-resolved LIBS contained the information of both wavelength and time dimension. The spectra of wavelength dimension showed the characteristic emission lines of elements, and those of time dimension presented the plasma decay trend. The one-dimensional data of LIBS intensity from the emission line at 766.49 nm were extracted and correlated with the K concentration, showing a poor correlation of R-c(2) = 0.0967, which is caused by the matrix effect of heterogeneous soil. For the wavelength dimension, the two-dimensional data of traditional integrated LIBS were extracted and analyzed by an artificial neural network (ANN), showing R-v(2) = 0.6318 and the root mean square error of validation (RMSEV) = 0.6234. For the time dimension, the two-dimensional data of time-decay LIBS were extracted and analyzed by ANN, showing R-v(2) = 0.7366 and RMSEV = 0.7855. These higher determination coefficients reveal that both the non-K emission lines of wavelength dimension and the spectral decay of time dimension could assist in quantitative detection of K. However, due to limited calibration samples, the two-dimensional models presented over-fitting. The three-dimensional data of time-resolved LIBS were analyzed by CNNs, which extracted and integrated the information of both the wavelength and time dimension, showing the R-v(2) = 0.9968 and RMSEV = 0.0785. CNN analysis of time-resolved LIBS is capable of improving the determination of K in soil.
机译:传统激光诱导的击穿光谱(LIBS)的技术瓶颈之一是由基质效应引起的定量检测的难题。为了解决这个问题,本文研究了时间分辨的Libs和卷积神经网络(CNN)的组合,以改善土壤中的k测定。时间分配的Libs包含波长和时间尺寸的信息。波长尺寸的光谱显示元件的特征发射线,并且时间尺寸呈现等离子体衰减趋势。从766.49nm处的Libs强度的一维数据与k浓度提取并与k浓度相关,显示R-C(2)= 0.0967的相关性差,这是由异质土壤的基质效应引起的。对于波长尺寸,通过人工神经网络(ANN)提取和分析传统集成LIB的二维数据,示出了R-V(2)= 0.6318和验证的根均方误差(RMSEV)= 0.6234。对于时间尺寸,通过ANN提取和分析时间衰减lib的二维数据,显示R-V(2)= 0.7366和RmSev = 0.7855。这些较高的确定系数揭示了波长尺寸的非K发射线和时间尺寸的光谱衰减可以有助于定量检测K.然而,由于校准样本有限,二维模型呈现过度拟合。通过CNN分析了时间分段Lib的三维数据,CNN分析,其提取并集成了波长和时间尺寸的信息,显示R-V(2)= 0.9968和RMSEV = 0.0785。时间分离的Libs的CNN分析能够改善土壤中k的测定。

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