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非线性最小二乘法在傅里叶变换红外光谱定量分析中的误差估计

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根据统计学的参数估计理论,提出在傅里叶变换红外光谱定量分析中使用非线性最小二乘法进行浓度反演的参数误差估计方法。实验中,通过光谱平均次数来控制噪声水平,以此来评估不同噪声水平下混合气体中各组分反演结果的估计误差。结果表明,对于自研抽取式傅里叶变换红外光谱仪,8次平均光谱即可满足反演误差小于3%的需求,64次平均光谱的反演结果配合估计误差可以实现对平均浓度的覆盖率达到100%。随着噪声水平的降低,仪器、环境等非噪声因素的扰动是估计误差的主要部分。该方法在优化光谱定量分析的参数配置和指导光谱仪器系统设计等诸多方面具有重要的应用前景。
Estimation of Error in Non-linear Least Square for Quantitative Analysis in Fourier Transform Infrared Spectrometry
The quantitative analysis of Fourier transform infrared spectrometry using non-linear least squares method has achieved a wide range of applications.At present,it is common practice to evaluate the fitting performance based on the magnitude of the residuals,which cannot quantify the inversion error of each parameter involved in the fitting.In this paper,the parameter error estimation method for inversion using the non-linear least squares method in quantitative analysis of infrared spectra is proposed based on the statistical theory of parameter estimation.The inversion errors for each fitting parameter are estimated through the Jacobian matrix of the parameters and the estimation of the variance of measurement errors,where the variance of measurement errors can be approximated using the variance of fitting residuals.Since the model adopts a series of idealized assumptions and the error estimation is an approximation at the optimal parameters,we conducted experimental validation for toxic and hazardous gases commonly found in ship's compartments to verify its applicability and stability for quantitative infrared spectroscopy.The materials used in the experiment are three gases,CBrF3,CH2Cl2,and CHCl3,which exhibit significant absorption peak overlap in the 725-795 cm-1 spectral range.We conducted a comparative analysis of the commonly used single-beam spectra and transmittance spectra in quantitative analysis,and controlled the noise level of the spectrum by its averaging number.The acquisition of transmittance spectra relies on single-beam spectra obtained with high-purity nitrogen gas as the background.The experimental results indicate that,the primary reasons for differences in the inversion results between single-beam spectra and transmittance spectra are spectral drift,baseline fitting errors,and systematic errors.For the self-developed extractive Fourier transform infrared spectrometer,an 8 averaged spectra is sufficient to meet the requirement of an inversion error of less than 3%.When using the inversion results from 64 averaged spectra in conjunction with error estimation,it is possible to achieve 100%coverage of the mean concentration.As the noise level decreases,disturbances from factors such as the instrument and the environment become the main contributors to estimation error.The differences in the convergence values of relative errors for various gas components are primarily caused by variations in the spectral accuracy of each component in the spectral database.In practical applications,the transmittance spectrum and single-beam spectrum can be reasonably selected for quantitative analysis according to the specific conditions of the monitoring scene.The estimation error of the inversion results can be obtained as reference indicators for the reliability and accuracy of the inversion results and can be used to balance the trade-off between measurement precision and time resolution.At the same time,this method has important application prospects in many aspects such as optimizing the parameter configuration of spectral analysis and guiding the design of spectral instrument systems.

Fourier transform infrared spectroscopyQuantitative analysisNon-linear least squaresMulti-componentError estimation

李新春、刘建国、徐亮、沈先春、徐寒杨、束胜全、王钰豪、金岭、邓亚颂、孙永丰

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中国科学技术大学 环境科学与光电技术学院,合肥 230026

中国科学院合肥物质科学研究院安徽光学精密机械研究所 中国科学院环境光学与技术重点实验室,合肥 230031

傅里叶变换红外光谱 定量分析 非线性最小二乘 多组分 误差估计

安徽省重点研发计划国家自然科学基金国家自然科学基金

2022m070200094194101152027804

2024

光子学报
中国光学学会 中国科学院西安光学精密机械研究所

光子学报

CSTPCD北大核心
影响因子:0.948
ISSN:1004-4213
年,卷(期):2024.53(4)
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