光谱学与光谱分析
光譜學與光譜分析
광보학여광보분석
SPECTROSCOPY AND SPECTRAL ANALYSIS
2014年
4期
958-961
,共4页
王立琦%葛慧芳%李贵滨%于殿宇%胡立志%江连洲
王立琦%葛慧芳%李貴濱%于殿宇%鬍立誌%江連洲
왕립기%갈혜방%리귀빈%우전우%호립지%강련주
卡尔曼滤波%近红外光谱%油脂酸价%波长优选
卡爾曼濾波%近紅外光譜%油脂痠價%波長優選
잡이만려파%근홍외광보%유지산개%파장우선
Kalman filtering%Near-infrared spectroscopy%Oil acid value%Wavelength optimization*Corresponding author
将经典的卡尔曼滤波器与近红外光谱分析技术相结合,提出了一种新的特征波长变量选择方法---卡尔曼滤波法。分析了卡尔曼滤波器用于波长优选的原理,设计了波长选择算法并将其应用到大豆油脂酸价的近红外光谱检测中。首先利用偏最小二乘法(PLS )对油脂不同吸收波段建模,初步筛选出4472~5000 cm-1油脂酸价特征波段共132个波长点,然后进一步利用卡尔曼滤波器进行特征波长选择,从中优选出22个特征波长变量建立PLS校正模型,预测集决定系数 R2、预测误差均方根RMSEP分别为0.9708和0.1254,与利用132个波长点建立的校正模型预测结果相当,而波长变量数减少到原来的16.67%。该波长变量选择算法是一种确定性的迭代过程,无复杂的参数设置和变量选择的随机性,物理意义明确。优选出少数对模型影响较大的特征波长变量以代替全谱建模,在简化模型的同时提高了模型的稳健性,为开发专用油脂近红外光谱分析仪器提供了重要参考依据。
將經典的卡爾曼濾波器與近紅外光譜分析技術相結閤,提齣瞭一種新的特徵波長變量選擇方法---卡爾曼濾波法。分析瞭卡爾曼濾波器用于波長優選的原理,設計瞭波長選擇算法併將其應用到大豆油脂痠價的近紅外光譜檢測中。首先利用偏最小二乘法(PLS )對油脂不同吸收波段建模,初步篩選齣4472~5000 cm-1油脂痠價特徵波段共132箇波長點,然後進一步利用卡爾曼濾波器進行特徵波長選擇,從中優選齣22箇特徵波長變量建立PLS校正模型,預測集決定繫數 R2、預測誤差均方根RMSEP分彆為0.9708和0.1254,與利用132箇波長點建立的校正模型預測結果相噹,而波長變量數減少到原來的16.67%。該波長變量選擇算法是一種確定性的迭代過程,無複雜的參數設置和變量選擇的隨機性,物理意義明確。優選齣少數對模型影響較大的特徵波長變量以代替全譜建模,在簡化模型的同時提高瞭模型的穩健性,為開髮專用油脂近紅外光譜分析儀器提供瞭重要參攷依據。
장경전적잡이만려파기여근홍외광보분석기술상결합,제출료일충신적특정파장변량선택방법---잡이만려파법。분석료잡이만려파기용우파장우선적원리,설계료파장선택산법병장기응용도대두유지산개적근홍외광보검측중。수선이용편최소이승법(PLS )대유지불동흡수파단건모,초보사선출4472~5000 cm-1유지산개특정파단공132개파장점,연후진일보이용잡이만려파기진행특정파장선택,종중우선출22개특정파장변량건립PLS교정모형,예측집결정계수 R2、예측오차균방근RMSEP분별위0.9708화0.1254,여이용132개파장점건립적교정모형예측결과상당,이파장변량수감소도원래적16.67%。해파장변량선택산법시일충학정성적질대과정,무복잡적삼수설치화변량선택적수궤성,물리의의명학。우선출소수대모형영향교대적특정파장변량이대체전보건모,재간화모형적동시제고료모형적은건성,위개발전용유지근홍외광보분석의기제공료중요삼고의거。
Combining classical Kalman filter with NIR analysis technology ,a new method of characteristic wavelength variable selection , namely Kalman filtering method ,is presented .The principle of Kalman filter for selecting optimal wavelength variable was analyzed .The wavelength selection algorithm was designed and applied to NIR detection of soybean oil acid value .First ,the PLS (partial least squares) models were established by using different absorption bands of oil .The 4 472~5 000 cm-1 characteristic band of oil acid value ,including 132 wavelengths ,was selected preliminarily .Then the Kalman filter was used to select characteristic wavelengths further .The PLS cali-bration model was established using selected 22 characteristic wavelength variables ,the determination coefficient R2 of prediction set and RMSEP (root mean squared error of prediction) are 0.970 8 and 0.125 4 respectively ,equivalent to that of 132 wavelengths ,however , the number of wavelength variables was reduced to 16.67% .This algorithm is deterministic iteration ,without complex parameters set-ting and randomicity of variable selection ,and its physical significance was well defined .The modeling using a few selected characteristic wavelength variables which affected modeling effect heavily ,instead of total spectrum ,can make the complexity of model decreased , meanwhile the robustness of model improved .The research offered important reference for developing special oil near infrared spectrosco-py analysis instruments on next step .