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Quantitative analysis of soil nutrition based on FT-NIR spectroscopy integrated with BP neural deep learning

机译:基于FT-NIR光谱结合BP神经深度学习的土壤营养定量分析

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A framework of back propagation neural deep learning (BPN-DL) was constructed in this work for Fourier transform near-infrared spectroscopy (FT-NIR) to predict the nutrition components in soil samples. Characteristic wavenumbers were selected by the competitive adaptive reweighted sampling (CARS) algorithm, to be the input variables to the BPN-DL framework. With the popular computer hard configuration, BPN-DL models were established and pre-set screening for up to 32 hidden layers and 50 nodes. The results were achieved by iteration and parameter identification. The best optimal BPN-DL model was constructed with 22 hidden layers and 30 neural nodes, with 91 input wavenumbers selected by CARS. The root mean square error of training was 0.104 and that of testing was 0.279. Another available optimal model was with 19 hidden layers and 46 nodes for 216 characteristic wavenumbers. The optimal results were further compared with the benchmark PCR, PLSR and conventional back propagation network models. This study indicated that the FT-NIR analytical model can be optimized and integrated with appropriate chemometric methods, and the prediction accuracy can be improved. The BPN-DL framework reveals its superiority in model training and testing processes.
机译:在这项工作中,建立了用于神经网络傅立叶变换(FT-NIR)的反向传播神经深度学习(BPN-DL)框架,以预测土壤样品中的营养成分。通过竞争性自适应重加权采样(CARS)算法选择特征波数作为BPN-DL框架的输入变量。通过流行的计算机硬配置,建立了BPN-DL模型,并预先筛选了多达32个隐藏层和50个节点。通过迭代和参数识别获得了结果。最佳的最佳BPN-DL模型由22个隐藏层和30个神经节点构成,CARS选择了91个输入波数。训练的均方根误差为0.104,测试的均方根误差为0.279。另一个可用的最优模型是针对216个特征波数具有19个隐藏层和46个节点。将最佳结果与基准PCR,PLSR和常规反向传播网络模型进行了比较。这项研究表明,可以优化FT-NIR分析模型并将其与适当的化学计量学方法集成在一起,并可以提高预测准确性。 BPN-DL框架显示了其在模型训练和测试过程中的优越性。

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