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首页> 外文期刊>Journal of near infrared spectroscopy >Sorting of fruit using near infrared spectroscopy: application to a range of fruit and vegetables for soluble solids and dry matter content
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Sorting of fruit using near infrared spectroscopy: application to a range of fruit and vegetables for soluble solids and dry matter content

机译:使用近红外光谱对水果进行分选:适用于各种水果和蔬菜中的可溶性固形物和干物质含量

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摘要

The performance of a single instrumentation platform, incorporating the use of a tungsten halogen light source, body transmittance optics and a silicon photodiode array detector, and a uniform chemometric approach is reported for the application of assessment of determination of soluble solids and dry matter content of a range of fruit. Spectra were acquired at integration times of 30ms or less, with integration time varied between fruit types to achieve a similar signal level. Calibration performance was compared in terms of root mean standard error of cross validation (RMSECV), regression coefficient (R), and the SDR (SDR=SD/RMSECV (SD is standard deviation)]. The technology was well suited to sorting on soluble solids content (SSC) in apple (RMSECV 0.22%, SDR>5; R 0.98), and useful, in decreasing order of accuracy, for sorting of stonefruit, mandarin, banana, melons, onions, tomato and papaya (RMSECV 1.1%, SDR 1.6, R 0.79). The technology also performed well in sorting on dry matter content in kiwifruit (RMSECV 0.38%, SDR >3,R 0.95), and useful, in decreasing order of accuracy, for sorting of banana, mango, avocado, tomato and potato (RMSECV 1.0%, SDR 1.7, R 0.79). The limitations of the application of the technology to fruit sorting is discussed in terms of fruit type ("skin" thickness) and population range. For example, calibration RMSECV was only 0.20% on tomato SSC, but as population variation was low (SD 0.30%), a poor R (0.77) and SDR (1.5) was obtained.
机译:据报道,单个仪器平台的性能结合了卤化钨光源,人体透射光学器件和硅光电二极管阵列检测器的使用,以及统一的化学计量学方法,可用于评估可溶性固形物和干物质的含量。各种水果。光谱是在30ms或更短的积分时间内获得的,积分时间因水果类型而异,以达到相似的信号水平。通过交叉验证的均方根标准误(RMSECV),回归系数(R)和SDR(SDR = SD / RMSECV(SD为标准偏差)]对校准性能进行了比较,该技术非常适合于对可溶物进行分选苹果中的固体成分(SSC)(RMSECV 0.22%,SDR> 5; R 0.98),并以准确度从高到低的顺序对核果,橘子,香蕉,瓜,洋葱,番茄和木瓜分类(RMSECV 1.1% SDR 1.6,R 0.79)。该技术在猕猴桃干物质含量的分选中也表现出色(RMSECV 0.38%,SDR> 3,R 0.95),并且以降低的准确性顺序用于香蕉,芒果,鳄梨的分选。 ,番茄和马铃薯(RMSECV 1.0%,SDR 1.7,R 0.79),该技术在水果分选中的局限性是根据水果类型(“皮肤”厚度)和种群范围来讨论的,例如,校准RMSECV为番茄SSC仅为0.20%,但由于种群变异较低(SD为0.30%),R(0.77)和SDR(1.5)较差内德

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