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Identification of pummelo cultivars by using Vis/NIR spectra and pattern recognition methods

机译:Vis / NIR光谱和模式识别方法识别柚子

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摘要

Vis/NIR spectroscopy was used in combination with pattern recognition methods to identify cultivars of pummelo (Citrus grandis (L.) Osbeck). A total of 240 leaf samples, 60 for each of the four cultivars were analyzed by Vis/NIR spectroscopy. Soft independent modeling of class analogy (SIMCA), partial least square discriminant analysis (PLS-DA), back propagation neural network (BPNN) and least squares support vector machine (LS-SVM) were applied to the spectral data. The first 8 principal components extracted by principal component analysis were used as inputs in building the BPNN and the LS-SVM models. The results showed that a 97.92 % of discrimination accuracy was achieved for both the BPNN and the LS-SVM models when used to identify samples of the validation set, indicating that the performance of the two models was acceptable. Comparatively, the results of the PLS-DA and the SIMCA models were unacceptable because they had lower discrimination accuracy. The overall results demonstrated that use of Vis/NIR spectroscopy coupled with the use of BPNN and LS-SVM could achieve an accurate identification of pummelo cultivars.
机译:Vis / NIR光谱与模式识别方法结合使用来识别柚子(Citrus grandis(L.)Osbeck)的品种。通过Vis / NIR光谱仪分析了总共240个叶样品,四个品种中的每个品种都分析了60个。将类比的软独立建模(SIMCA),偏最小二乘判别分析(PLS-DA),反向传播神经网络(BPNN)和最小二乘支持向量机(LS-SVM)应用于光谱数据。通过主成分分析提取的前8个主成分被用作构建BPNN和LS-SVM模型的输入。结果表明,当用于识别验证集样本时,BPNN和LS-SVM模型均达到了97.92%的辨别精度,表明这两个模型的性能是可以接受的。相比之下,PLS-DA和SIMCA模型的结果是不可接受的,因为它们的判别准确性较低。总体结果表明,使用Vis / NIR光谱结合BPNN和LS-SVM可以准确鉴定柚子品种。

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