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A New Methodology of Soil Salinization Degree Classification by Probability Neural Network Model Based on Centroid of Fractional Lorenz Chaos Self-Synchronization Error Dynamics

机译:基于分数Lorenz混沌自同步误差动态的质心概率神经网络模型的土壤盐渍化度分类的新方法

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In this article, a new methodology for the centroid variation of chaos self-synchronization error dynamics was used to determine soil salinization degree based on probability neural network (PNN). This was done to overcome the difficulties involved in the handling of a large amount of spectroscopy data, as well as many spectral bands and a low determination rate caused by bands redundancy. The spectral reflectance of saline soils in Xinjiang Uygur Autonomous Region was used as data sources. The results showed that salinization in the area was severe. The proportion of saline, moderately saline, and severely saline soil accounted for 67.3 & x0025; of the total sample. Fractional-order master/slave chaotic analysis was carried out on the characteristics of soil spectroscopy data with different salinization degrees. The differences between integer order and fractional order of chaotic dynamic error were compared. Simulation results showed that changes in the 0.6 order chaos dynamic error were the most significant and so these were used as PNN input vectors. The PNN model was used to identify the nonlinear hyperspectral signal of soil salinization degrees after chaotic system conversion. The input vector was normalized after insertion into the PNN model input layer and was added to the hidden layer for Gaussian operations. Finally, the hidden layer results were used in the summation layer to calculate the correlation. The verification set classification result was 93.5 & x0025;. The studies showed that the method proposed in this article could serve as a new way for classifying soil salinization, which has a classification accuracy of 93.5 & x0025;, and the soil salinization degree can be rapidly determined.
机译:在本文中,使用混沌自同步误差动态的质心变化的新方法来确定基于概率神经网络(PNN)的土壤盐渍化度。这是为了克服处理大量光谱数据的困难以及由频带冗余引起的许多光谱带和低的测定率。新疆uygur自治区盐渍土的光谱反射用作数据来源。结果表明该地区的盐渍化严重。盐水,中等盐水和严重盐渍土的比例占67.3&x0025;总样品。分数阶主/从混沌混沌分析进行了不同盐渍度土壤光谱数据的特征。比较了整数顺序与混沌动态误差分数的差异。仿真结果表明,0.6阶混沌动态误差的变化是最重要的,因此它们用作PNN输入向量。 PNN模型用于在混沌系统转化后识别土壤盐渍化程度的非线性高光谱信号。插入PNN模型输入层后,输入向量被归一化,并将其添加到用于高斯操作的隐藏层。最后,在求和层中使用隐藏层结果以计算相关性。验证集分类结果为93.5和x0025;研究表明,本文提出的方法可以作为对土壤盐渍化进行分类的新方法,其分类精度为93.5&x0025;,土壤盐渍化程度可以快速确定。

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