Non-destructive measurement of fracturability and chewiness of apple by FT-NIRS

被引:0
作者
Guanghui Li
Yamei Ren
Xiaolin Ren
Xiaorong Zhang
机构
[1] Northwest A&F University,College of Food Science and Engineering
[2] Yangling,College of horticulture
[3] Northwest A&F University,Department of Foreign Languages
[4] Yangling,undefined
[5] Northwest A&F University,undefined
[6] Yangling,undefined
来源
Journal of Food Science and Technology | 2015年 / 52卷
关键词
Apple; NIR; Texture; TPA test; Nondestructive;
D O I
暂无
中图分类号
学科分类号
摘要
In order to assess quickly and non-destructively the fracturability and chewiness of apple fruit by FT-NIR spectra in the wavelength range of 4000 cm−1–12000 cm−1, multivariate models were built using multiple linear regression (MLR), partial least squares regression (PLSR), and principal component regression (PCR). Fracturability and chewiness reference data were instrumentally measured using a Texture Profile Analysis (TPA) test. The effects of various pre-processing methods of the spectroscopic data on the performance of the multivariate models were analyzed. Standard normal variate transformation (SNV), multiplicative scatter correction (MSC), Min-Max normalization(MMN) and first derivative (FD) were tested. The performance of the fracturability prediction models was better for the PLSR model (R2 = 0.91, RMSEP = 101.90) than for the PCR and MLR models. With regard to chewiness, the performance of the PCR model (R2 = 0.88, RMSEP = 13.46) was similar to the one of the PLSR model but better than the one of the MLR model. The results demonstrated that NIR spectra together with stoichiometry could determine precisely fracturability and chewiness of apple, and the predictive ability of the models developed by other methods may be improved in the future.
引用
收藏
页码:258 / 266
页数:8
相关论文
共 112 条
[11]  
Lammertyn J(1997)Texture of parenchymatous plant tissue: A comparison between tensile and other instrumental and sensory measurements of tissue strength and juiciness Postharvest biology and technology 11 63-72
[12]  
Nicolai BM(2010)Evaluation of fruit authenticity and determination of the fruit content of fruit products using FT-NIR spectroscopy of cell wall components Food Chem 119 806-812
[13]  
Saeys W(2010)Nondestructive measurement of soluble solid content of navel orange fruit by visible-NIR spectrometric technique with PLSR and PCA-BPNN LWT-Food Science and Technology 43 602-607
[14]  
Brookfield PL(2010)Linear and nonlinear multivariate regressions for determination sugar content of intact Gannan navel orange by Vis-NIR diffuse reflectance spectroscopy Math Comput Model 51 1438-1443
[15]  
Nicoll S(2003)Relationship between sensory analysis, penetrometry and visible-NIR spectroscopy of apples belonging to different cultivars Food quality and preference 14 473-484
[16]  
Gunson FA(2004)Prediction of the sensory quality of apples by physical measurements Postharvest biology and technology 34 257-269
[17]  
Harker FR(2010)Vis/NIR spectroscopy and chemometrics for the prediction of soluble solids content and acidity (pH) of kiwifruit Biosyst Eng 106 295-302
[18]  
Wohlers M(2009)Instantaneous quantitative and qualitative assessment of pear quality using near infrared spectroscopy Comput Electron Agric 69 24-32
[19]  
Blasco J(2009)Effect of fruit moving speed on predicting soluble solids content of Cuiguan’pears (Pomaceae pyrifolia Nakai cv. Cuiguan) using PLS and LS-SVM regression Postharvest biology and technology 51 86-90
[20]  
Aleixos N(2009)Dielectric heating as a potential post-harvest treatment of disinfesting mangoes, Part II: Development of RF-based protocols and quality evaluation of treated fruits Biosyst Eng 103 287-296