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近近红外光谱法对甲苯、丙酮和庚烷的快速分析 被引量:1
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作者 任玉林 张滨 +1 位作者 沈今明 郭晔 《分析科学学报》 CAS CSCD 1998年第1期87-87,共1页
近近红外光谱法对甲苯、丙酮和庚烷的快速分析任玉林张滨沈今明郭晔(吉林大学化学系长春130023)近近红外光谱位于760~1100nm区间,主要是C-H基团的三倍频带.大多数有机化合物在该区均有吸收,但吸收较弱,样品... 近近红外光谱法对甲苯、丙酮和庚烷的快速分析任玉林张滨沈今明郭晔(吉林大学化学系长春130023)近近红外光谱位于760~1100nm区间,主要是C-H基团的三倍频带.大多数有机化合物在该区均有吸收,但吸收较弱,样品不需稀释就能直接测定光谱.然而,样... 展开更多
关键词 甲苯 丙酮 庚烷 近近红外光谱
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A variable differential consensus method for improving the quantitative near-infrared spectroscopic analysis 被引量:1
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作者 DU GuoRong CAI WenSheng SHAO XueGuang 《Science China Chemistry》 SCIE EI CAS 2012年第9期1946-1952,共7页
Consensus methods have presented promising tools for improving the reliability of quantitative models in near-infrared(NIR) spectroscopic analysis.A strategy for improving the performance of consensus methods in multi... Consensus methods have presented promising tools for improving the reliability of quantitative models in near-infrared(NIR) spectroscopic analysis.A strategy for improving the performance of consensus methods in multivariate calibration of NIR spectra is proposed.In the approach,a subset of non-collinear variables is generated using successive projections algorithm(SPA) for each variable in the reduced spectra by uninformative variables elimination(UVE).Then sub-models are built using the variable subsets and the calibration subsets determined by Monte Carlo(MC) re-sampling,and the sub-model that produces minimal error in cross validation is selected as a member model.With repetition of the MC re-sampling,a series of member models are built and a consensus model is achieved by averaging all the member models.Since member models are built with the best variable subset and the randomly selected calibration subset,both the quality and the diversity of the member models are insured for the consensus model.Two NIR spectral datasets of tobacco lamina are used to investigate the proposed method.The superiority of the method in both accuracy and reliability is demonstrated. 展开更多
关键词 near infrared spectroscopy multivariate calibration consensus model variable selection uninformative variable elim-ination successive projections algorithm
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