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
2728-2731
,共4页
杨勇%任健%郑喜群%赵丽影%李毛毛
楊勇%任健%鄭喜群%趙麗影%李毛毛
양용%임건%정희군%조려영%리모모
近红外光谱%甜菜%糖度%偏最小二乘法
近紅外光譜%甜菜%糖度%偏最小二乘法
근홍외광보%첨채%당도%편최소이승법
Near infrared spectroscopy (NIRS)%Sugar beet%Sugar content%Partial least square
为了实现甜菜依据含糖量定等分级,甜菜收购环节的按质论价,促进甜菜制糖行业的良好健康发展,应用近红外光谱技术对甜菜糖度的快速检测进行了系统研究,确定了一种快速、无损、准确的测量甜菜糖度的方法。采集具有代表性的28个甜菜品种,820个甜菜样品作为校正集,70个样品作为预测集,扫描得到甜菜校正集样品的近红外原始光谱,选择合适的光谱预处理方法,采用偏最小二乘法建立甜菜糖度的定量预测数学模型,以校正模型的内部交互验证均方根误差(RMSECV)、决定系数(R2)和外部预测标准误差(SEP)为指标对模型的性能进行评价,并对模型的预测效果进行了比较。采用一阶导数和标准正态变量变换对光谱进行预处理并结合偏最小二乘法所建立的定量预测数学模型的预测能力较好。甜菜糖度定量校正数学模型的模型决定系数为0.9083,内部交互验证预测均方根误差为0.3767。用此数学模型对预测集70个样品进行预测,预测值与实测值的相关系数达到0.9214,预测标准误差为0.439,预测值和实测值之间不存在显著性差异( p>0.05)。结果表明:近红外光谱法作为一种简单、快速、无损、环保的检测方法,能够良好的评价甜菜的糖度。建立的模型具有很高的精确性,可以满足甜菜糖含量测定的需要,该方法可以实现甜菜收购环节的定等分级和按质论价。
為瞭實現甜菜依據含糖量定等分級,甜菜收購環節的按質論價,促進甜菜製糖行業的良好健康髮展,應用近紅外光譜技術對甜菜糖度的快速檢測進行瞭繫統研究,確定瞭一種快速、無損、準確的測量甜菜糖度的方法。採集具有代錶性的28箇甜菜品種,820箇甜菜樣品作為校正集,70箇樣品作為預測集,掃描得到甜菜校正集樣品的近紅外原始光譜,選擇閤適的光譜預處理方法,採用偏最小二乘法建立甜菜糖度的定量預測數學模型,以校正模型的內部交互驗證均方根誤差(RMSECV)、決定繫數(R2)和外部預測標準誤差(SEP)為指標對模型的性能進行評價,併對模型的預測效果進行瞭比較。採用一階導數和標準正態變量變換對光譜進行預處理併結閤偏最小二乘法所建立的定量預測數學模型的預測能力較好。甜菜糖度定量校正數學模型的模型決定繫數為0.9083,內部交互驗證預測均方根誤差為0.3767。用此數學模型對預測集70箇樣品進行預測,預測值與實測值的相關繫數達到0.9214,預測標準誤差為0.439,預測值和實測值之間不存在顯著性差異( p>0.05)。結果錶明:近紅外光譜法作為一種簡單、快速、無損、環保的檢測方法,能夠良好的評價甜菜的糖度。建立的模型具有很高的精確性,可以滿足甜菜糖含量測定的需要,該方法可以實現甜菜收購環節的定等分級和按質論價。
위료실현첨채의거함당량정등분급,첨채수구배절적안질론개,촉진첨채제당행업적량호건강발전,응용근홍외광보기술대첨채당도적쾌속검측진행료계통연구,학정료일충쾌속、무손、준학적측량첨채당도적방법。채집구유대표성적28개첨채품충,820개첨채양품작위교정집,70개양품작위예측집,소묘득도첨채교정집양품적근홍외원시광보,선택합괄적광보예처리방법,채용편최소이승법건립첨채당도적정량예측수학모형,이교정모형적내부교호험증균방근오차(RMSECV)、결정계수(R2)화외부예측표준오차(SEP)위지표대모형적성능진행평개,병대모형적예측효과진행료비교。채용일계도수화표준정태변량변환대광보진행예처리병결합편최소이승법소건립적정량예측수학모형적예측능력교호。첨채당도정량교정수학모형적모형결정계수위0.9083,내부교호험증예측균방근오차위0.3767。용차수학모형대예측집70개양품진행예측,예측치여실측치적상관계수체도0.9214,예측표준오차위0.439,예측치화실측치지간불존재현저성차이( p>0.05)。결과표명:근홍외광보법작위일충간단、쾌속、무손、배보적검측방법,능구량호적평개첨채적당도。건립적모형구유흔고적정학성,가이만족첨채당함량측정적수요,해방법가이실현첨채수구배절적정등분급화안질론개。
In order to classify and set different prices on basis of difference of beet sugar content in the acquisition process and promote the development of beet sugar industry healthily ,a fast ,nondestructive ,accurate method to detect sugar content of beet was determined by applying near infrared spectroscopy technology .Eight hundred twenty samples from 28 representative varie-ties of beet were collected as calibration set and 70 samples were chosen as prediction set .Then near infrared spectra of calibra-tion set samples were collected by scanning ,effective information was extracted from NIR spectroscopy ,and the original spec-troscopy data was optimized by data preprocessing methods appropriately .Then partial least square(PLS)regression was used to establish beet sugar quantitative prediction mathematical model .The performances of the models were evaluated by the root mean square of cross-validation (RMSECV) ,the coefficient of determination (R2 ) of the calibration model and the standard error of prediction (SEP) ,and the predicted results of these models were compared .Results show that the established mathematical model by using first derivative(FD) and standard normal variate transformation(SNV) coupled with partial least squares has good predictive ability .The R2 of calibration models of sugar content of beet is 0.908 3 ,and the RMSECV is 0.376 7 .Using this model to forecast the prediction set including 70 samples ,the correlation coefficient is 0.921 4 between predicted values and measured values ,and the standard error of prediction (SEP) is 0.439 ,without significant difference (p>0.05) between predic-ted values and measured values .These results demonstrated that NIRS can take advantage of simple ,rapid ,nondestructive and environmental detection method and could be applied to predict beet sugar content .This model owned high accuracy and can meet the precision need of determination of beet sugar content .This detection method could be used to classify and set different prices on basis of difference of beet sugar content in the acquisition process .