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基于离散小波变换和遗传算法结合偏最小二乘法的土壤碱解氮含量高光谱估计方法(DWT-GA-PLS)

[Hyper spectral estimation method for soil alkali hydrolysable nitrogen content based on discrete wavelet transform and genetic algorithm in combining with partial least squares DWT-GA-PLS)].

作者信息

Chen Hong-Yan, Zhao Geng-Xing, Li Xi-Can, Wang Xiang-Feng, Li Yu-Ling

机构信息

National Engineering Laboratory for Efficient Utilization of Soil and Fertilizer Resources, College of Resources and Environment, Shandong Agricultural University, Tai'an 271018, Shandong, China.

College of Information Science and Engineering, Shandong Agricultural University, Tai'an 271018, Shandong, China.

出版信息

Ying Yong Sheng Tai Xue Bao. 2013 Nov;24(11):3185-91.

Abstract

Taking the Qihe County in Shandong Province of East China as the study area, soil samples were collected from the field, and based on the hyperspectral reflectance measurement of the soil samples and the transformation with the first deviation, the spectra were denoised and compressed by discrete wavelet transform (DWT), the variables for the soil alkali hydrolysable nitrogen quantitative estimation models were selected by genetic algorithms (GA), and the estimation models for the soil alkali hydrolysable nitrogen content were built by using partial least squares (PLS) regression. The discrete wavelet transform and genetic algorithm in combining with partial least squares (DWT-GA-PLS) could not only compress the spectrum variables and reduce the model variables, but also improve the quantitative estimation accuracy of soil alkali hydrolysable nitrogen content. Based on the 1-2 levels low frequency coefficients of discrete wavelet transform, and under the condition of large scale decrement of spectrum variables, the calibration models could achieve the higher or the same prediction accuracy as the soil full spectra. The model based on the second level low frequency coefficients had the highest precision, with the model predicting R2 being 0.85, the RMSE being 8.11 mg x kg(-1), and RPD being 2.53, indicating the effectiveness of DWT-GA-PLS method in estimating soil alkali hydrolysable nitrogen content.

摘要

以中国东部山东省齐河县为研究区域,采集田间土壤样本,基于土壤样本的高光谱反射率测量及一阶导数变换,通过离散小波变换(DWT)对光谱进行去噪和压缩,利用遗传算法(GA)选择土壤碱解氮定量估算模型的变量,并采用偏最小二乘法(PLS)回归建立土壤碱解氮含量的估算模型。离散小波变换与遗传算法相结合的偏最小二乘法(DWT-GA-PLS)不仅能压缩光谱变量、减少模型变量,还能提高土壤碱解氮含量的定量估算精度。基于离散小波变换的1-2级低频系数,在光谱变量大幅递减的情况下,校准模型能达到与土壤全光谱相同或更高的预测精度。基于二级低频系数的模型精度最高,模型预测R2为0.85,RMSE为8.11 mg·kg-1,RPD为2.53,表明DWT-GA-PLS方法在估算土壤碱解氮含量方面是有效的。

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