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Determination of organic matter in soils using radial basis function networks and near infrared spectroscopy

机译:径向基函数网络和近红外光谱法测定土壤中的有机物

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摘要

A relationship was established between the organic matter content in soils determined by conventional chemical measurements and by diffuse reflectance spectra in the near infrared region (1000-2500 nm). Radial basis function netowrks (RBFN) with regularized forward selection to control the model complexity were used for non-parametric regression, resulting in a RMSEP of 0.25%. The observed results using RBFN were better than those obtained by partial least squares regression (PLS) and multi-layer perceptron (MLP) feed-forward netowrks with a back-propagation learning algorithm. RBFN is a suitable tool to model this complex system, with additional advantages over MLP, since the training procedure is less dependent on the initial conditions.
机译:在通过常规化学测量确定的土壤有机物含量与通过近红外区域(1000-2500 nm)的漫反射光谱之间建立了关系。径向基函数网络(RBFN)具有正则正向选择以控制模型的复杂性,用于非参数回归,其RMSEP为0.25%。使用RBFN观察到的结果要好于采用反向传播学习算法的偏最小二乘回归(PLS)和多层感知器(MLP)前馈网络。 RBFN是建模此复杂系统的合适工具,与MLP相比,它具有其他优势,因为训练过程对初始条件的依赖性较小。

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