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首页> 外文期刊>Sensors and materials >Quantitative Inversion Model of Total Potassium in Desert Soils Based on Multiple Regression Combined with Fractional Differential
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Quantitative Inversion Model of Total Potassium in Desert Soils Based on Multiple Regression Combined with Fractional Differential

机译:基于多元回归与分数阶微分的沙漠土壤总钾定量反演模型

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摘要

Potassium is an important nutrient element for plant growth. The traditional integer-order differential transformation methods at first order and second order tend to reduce the accuracy of the total potassium content quantitative inversion model, and there are few reports on the use of the fractional differential algorithm for the prediction of soil total potassium content. In this paper, the use of the fractional differential algorithm to predict total potassium content is introduced. Field soils collected in the Xinjiang Uygur Autonomous Region from May 9 to 23, 2017, were used as the data sources. Firstly, we calculated the correlation between spectral reflectance and total potassium content for the original spectrum (R) and the root mean square spectrum (root R) under different fractional differential orders. Secondly, bands whose maximum absolute correlation coefficient was greater than 0.5 were selected as sensitive bands. R had seven bands: 562, 596, 1177, 2155, 2156, 2364, and 239 nm. root R had six bands: 596, 1177, 2155, 2156, 2364, and 2398 nm. Finally, a multiple regression analysis method was employed to quantitatively estimate the optimal model. The ratio of performance to deviation (RPD) evaluation index of a good model should be greater than or equal to 1.4. The simulation results showed that the optimal models for R and root R were the 0.8-order differential and the 0.6-order differential, respectively. The corresponding RPD values were 1.700182 and 1.783319, respectively. We found that the prediction model of root R was more accurate.
机译:钾是植物生长的重要营养元素。传统的一阶和二阶整数阶微分转换方法趋于降低总钾含量定量反演模型的准确性,关于分数阶微分算法用于预测土壤总钾含量的报道很少。本文介绍了使用分数微分算法预测总钾含量的方法。数据来源为2017年5月9日至23日在新疆维吾尔自治区采集的田间土壤。首先,我们计算了不同分数阶数下原始光谱(R)和均方根光谱(root R)的光谱反射率与总钾含量之间的相关性。其次,选择最大绝对相关系数大于0.5的波段作为敏感波段。 R具有七个波段:562、596、1177、2155、2156、2364和239 nm。根R具有六个波段:596、1177、2155、2156、2364和2398 nm。最后,采用多元回归分析方法对最优模型进行定量估计。好的模型的性能与偏差(RPD)评估指标之比应大于或等于1.4。仿真结果表明,R和根R的最优模型分别为0.8阶微分和0.6阶微分。相应的RPD值分别为1.700182和1.783319。我们发现根R的预测模型更准确。

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