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Non-destructive prediction of soluble solids and dry matter concentrations in apples using near-infrared spectroscopy

机译:近红外光谱法的苹果中可溶性固体和干物质浓度的非破坏性预测

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Soluble solids content (SSC) is a major quality attribute for apple fruit that influences consumer purchases. Prediction of fruit quality at harvest and after storage has become a significant focus to the postharvest value chain. The objectives of this study were to evaluate the relationship between fruit dry matter content (DMC) with SSC at harvest and after storage for 'Mcintosh', 'Red Delicious' and 'Fuji' apples and to develop models based on near-infrared (NIR) spectroscopy (729-975 nm) to predict SSC and DMC. Fruit were harvested multiple times at one week intervals. Results showed that fruit DMC and SSC at harvest were closely related and the relationship was improved during maturation and storage. Partial least square regression (PLS) was used to build calibration models for prediction of SSC and DMC. Coefficient of determination (R2) values for calibration models ranged from 0.77 to 0.85 for SSC, and from 0.75 to 0.85 for DMC. Root mean square error (RMSE) of calibration models ranged from0.44 to 0.62% for SSC, and from 4.25 to 4.92 g kg1 for DMC. A strong linear relationship was found between DMC and SSC and NIR spectroscopy shows great potential for use as a non-destructive method for predicting SSC and DMC.
机译:可溶性固体含量(SSC)是影响消费者购买的苹果果实的主要质量属性。收获果实质量和储存后的预测变得显着焦点了去季全劲价值链。本研究的目标是评估水果干物质含量(DMC)与Harvest的SSC之间的关系,为“麦金塔”,“红色美味”和“富士”苹果储存和基于近红外线的模型(NIR) )光谱学(729-975nm)预测SSC和DMC。果实以一周的间隔多次收获。结果表明,果实DMC和SSC在收获密切相关,在成熟和储存过程中关系得到改善。部分最小二乘回归(PLS)用于构建用于预测SSC和DMC的校准模型。校准模型的测定系数(R2)值为SSC的0.77至0.85,DMC为0.75至0.85。 SSC的校准模型的校准均方误差(RMSE)范围为0.44至0.62%,为DMC的4.25至4.92g kg1。在DMC和SSC之间发现了强烈的线性关系,并且NIR光谱显示出用作预测SSC和DMC的非破坏性方法的巨大潜力。

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