光谱学与光谱分析
光譜學與光譜分析
광보학여광보분석
SPECTROSCOPY AND SPECTRAL ANALYSIS
2014年
10期
2696-2700
,共5页
李冰宁%武彦文%汪雨%祖文川%陈舜琮
李冰寧%武彥文%汪雨%祖文川%陳舜琮
리빙저%무언문%왕우%조문천%진순종
大豆原油%掺伪%拉曼光谱%模式识别%支持向量机
大豆原油%摻偽%拉曼光譜%模式識彆%支持嚮量機
대두원유%참위%랍만광보%모식식별%지지향량궤
Crude soybean oil (CSO)%Adulteration%Raman spectroscopy%Pattern recognition%SVM
大豆原油是我国的战略储备物资,然而目前储油市场上频繁出现大豆原油掺混的现象严重影响了食用油储备安全。基于此,通过大豆原油与部分植物精炼油拉曼谱图的特征差异,并结合主成分分析-支持向量机(PCA-SVM)模式识别建立了大豆原油是否掺伪的快速判别方法。以28个大豆原油、46个精炼油、110个掺伪油的拉曼谱图为模型样本;选择位于780~1800cm-1波段的谱图,预处理方法同时采用Y轴强度校正、基线校正和谱图归一化法;在此基础上应用PCA法提取特征变量,即以贡献率最高前7个主成分为变量进行SVM分析。SVM校正模型的建立是以随机选取的20个大豆原油和75个掺伪油样组成校正集,以8个大豆原油和35个掺伪油样组成验证集,分别运用并比较四种核函数算法建立的大豆原油SVM分类模型,并采用网格搜索法(grid-search)优化模型的参数,以四种模型的分类性能作为评判标准。结果表明:应用线性核函数算法构建的SVM分类模型可以很好地完成掺伪大豆原油的判别,校正集识别准确率达到100%,预测结果的误判率为0,判别下限为2.5%。结果表明应用拉曼光谱结合化学计量学能够用于大豆原油掺伪的快速鉴别。拉曼光谱简便、快速、无损、几乎没有试剂消耗,适合现场检测,从而为大豆原油的掺伪分析提供了一种新的备选方法。
大豆原油是我國的戰略儲備物資,然而目前儲油市場上頻繁齣現大豆原油摻混的現象嚴重影響瞭食用油儲備安全。基于此,通過大豆原油與部分植物精煉油拉曼譜圖的特徵差異,併結閤主成分分析-支持嚮量機(PCA-SVM)模式識彆建立瞭大豆原油是否摻偽的快速判彆方法。以28箇大豆原油、46箇精煉油、110箇摻偽油的拉曼譜圖為模型樣本;選擇位于780~1800cm-1波段的譜圖,預處理方法同時採用Y軸彊度校正、基線校正和譜圖歸一化法;在此基礎上應用PCA法提取特徵變量,即以貢獻率最高前7箇主成分為變量進行SVM分析。SVM校正模型的建立是以隨機選取的20箇大豆原油和75箇摻偽油樣組成校正集,以8箇大豆原油和35箇摻偽油樣組成驗證集,分彆運用併比較四種覈函數算法建立的大豆原油SVM分類模型,併採用網格搜索法(grid-search)優化模型的參數,以四種模型的分類性能作為評判標準。結果錶明:應用線性覈函數算法構建的SVM分類模型可以很好地完成摻偽大豆原油的判彆,校正集識彆準確率達到100%,預測結果的誤判率為0,判彆下限為2.5%。結果錶明應用拉曼光譜結閤化學計量學能夠用于大豆原油摻偽的快速鑒彆。拉曼光譜簡便、快速、無損、幾乎沒有試劑消耗,適閤現場檢測,從而為大豆原油的摻偽分析提供瞭一種新的備選方法。
대두원유시아국적전략저비물자,연이목전저유시장상빈번출현대두원유참혼적현상엄중영향료식용유저비안전。기우차,통과대두원유여부분식물정련유랍만보도적특정차이,병결합주성분분석-지지향량궤(PCA-SVM)모식식별건립료대두원유시부참위적쾌속판별방법。이28개대두원유、46개정련유、110개참위유적랍만보도위모형양본;선택위우780~1800cm-1파단적보도,예처리방법동시채용Y축강도교정、기선교정화보도귀일화법;재차기출상응용PCA법제취특정변량,즉이공헌솔최고전7개주성분위변량진행SVM분석。SVM교정모형적건립시이수궤선취적20개대두원유화75개참위유양조성교정집,이8개대두원유화35개참위유양조성험증집,분별운용병비교사충핵함수산법건립적대두원유SVM분류모형,병채용망격수색법(grid-search)우화모형적삼수,이사충모형적분류성능작위평판표준。결과표명:응용선성핵함수산법구건적SVM분류모형가이흔호지완성참위대두원유적판별,교정집식별준학솔체도100%,예측결과적오판솔위0,판별하한위2.5%。결과표명응용랍만광보결합화학계량학능구용우대두원유참위적쾌속감별。랍만광보간편、쾌속、무손、궤호몰유시제소모,괄합현장검측,종이위대두원유적참위분석제공료일충신적비선방법。
In the present paper ,a non-destructive ,simple and rapid analytical method was proposed based on Raman spectrosco-py (Raman) combined with principal component analysis (PCA ) and support vector machine (SVM ) as pattern recognition methods for adulteration of crude soybean oil (CSO) .Based on fingerprint characteristics of Raman ,the spectra of 28 CSOs ,46 refined edible oils (REOs) and 110 adulterated oil samples were analyzed and used for discrimination model establishment .The preprocessing methods include choosing spectral band of 780~1 800 cm -1 ,Y-axis intensity correction ,baseline correction and normalization in succession .After those series of spectral pretreatment ,PCA was usually employed for extracting characteristic variables of all Raman spectral data and 7 principal components which were the highest contributions of all data were used as var-iables for SVM model .The SVM discrimination model was established by randomly picking 20 CSOs and 95 adulterated oils as calibration set ,and 8 CSOs and 35 adulterated oils as validation set .There were 4 kinds of kernel function algorithm (linear , polynomial ,RBF ,sigmoid) respectively used for establishing SVM models and grid-search for optimization of parameters of all the SVM models .The classification results of 4 models were compared by their discrimination performances and the optimal SVM model was based on linear kernel classification algorithm with 100% accuracy rate of calibration set recognition ,a zero mis-judgment rate and the lowest detection limit of 2.5% .The above results showed that Raman combined PCA-SVM could discrim-inate CSO adulteration with refined edible oils .Since Raman spectroscopy is simple ,rapid ,non-destructive ,environment friend-ly ,and suitable for field testing ,it will provide an alternative method for edible oil adulteration analysis .