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Determination of soluble solid content in multi-origin 'Fuji' apples by using FT-NIR spectroscopy and an origin discriminant strategy

机译:用FT-NIR光谱法测定多源'富士'苹果中可溶性固体含量及起源判别策略

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Apple is widely planted all over the world. Origin variability influences the internal quality of apples because soil characteristics, light effects, nutrition, weather conditions, as well as growing management vary from orchard to orchard. However, if taking spectral variations caused by the origin variability of apple samples from different orchards into account, the fruit quality parameters could not be measured or predicted with high accuracy by using the current models without updates. To improve the practicability and accuracy of the prediction models, a multi-origin regression model for the determination of soluble solids content in apples from three origins by using FT-NIR spectroscopy and a model search strategy was developed in this paper. In this model, based on the wavelengths selected by competitive adaptive reweighted sampling algorithm (CARS), partial least squares discriminant analysis (PLS-DA) was trained and applied to identify the geographical origins of the apple samples. The results indicate that the samples spectra were correctly matched to the corresponding classes and a 98.1% correct classification was achieved. Partial least squares regression (PLS) was used to establish three single-origin calibration models for the determination of soluble solids content (SSC) in apples from three different origins, and meanwhile, CARS algorithm was also applied to select the most effective wavelengths for calibration models. Then, the multi-origin CARS-PLS model for determination of SSC in apples from three origins was developed combined with origin discriminant and the proposed model search strategy. It was concluded that the multi-origin CARS-PIS model achieved more satisfying results than the single-origin CARS-PLS models for the determination of SSC, with R-p and RMSEP values for the apple samples from three geographical origins being 0.921, 0.759, 0.924 and 0.661, 0.673, 0.547 (A) over cap degrees Brix, respectively. The above results indicate that it is promising to build a multi-origin CARS-PLS model to predict SSC for apples based on an origin discriminant approach to reduce the effect of geographical origin.
机译:苹果广泛种植世界各地。原产地可变性影响苹果的内部质量,因为土壤特征,灯光效果,营养,天气状况以及日益增长的管理因果园而异。然而,如果考虑到不同果园的Apple样本的原始变异引起的谱变化,则无法通过使用当前模型来测量或预测果实质量参数,无需更新。为了提高预测模型的实用性和准确性,通过使用FT-NIR光谱和模型搜索策略,开发了一种用于测定从三个起源和模型搜索策略的苹果中可溶性固体含量的多原因回归模型。在该模型中,基于竞争自适应重新重量采样算法(汽车)选择的波长,培训部分最小二乘判别分析(PLS-DA)并应用以识别苹果样品的地理起源。结果表明,样品光谱与相应的类别正确匹配,实现了98.1%的正确分类。局部最小二乘回归(PLS)用于建立三种单一来源校准模型,用于测定来自三种不同起源的苹果中可溶性固体含量(SSC),同时也应用了汽车算法以选择最有效的校准波长楷模。然后,开发了用于从三个起源的苹果中测定SSC的多原点汽车-PLS模型与原点判别和所提出的模型搜索策略结合起来。得出结论是,多原因汽车-PIS模型比单次轿车-PLS模型更加令人满意地满足SSC,苹果​​样品的RP和RMSEP值来自三个地理起源为0.921,0.759,0.924分别为0.661,0.673,0.547(a)在帽子玻璃帽上。上述结果表明,基于原点判别方法来降低地理原点的效果,建立多个原产地CAR-PLS模型以预测苹果的SSC。

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