冻结状态下盐渍化土壤中水溶性盐基离子含量高光谱反演

    Hyperspectral inversion of water-soluble salt ion contents in frozen saline soil

    • 摘要: 为探究采用高光谱技术反演冻结状态土壤水溶性盐基离子含量的可行性,该研究针对河套灌区盐渍化土壤,测定土壤在冻结与未冻结状态下的光谱和主要水溶性盐基离子含量(HCO3-、Cl-、CO32-、SO42-、K+、Na+、Ca2+、Mg2+),光谱经标准正态变量变换(standard normal variable,SNV)和变量投影重要性法(variable importance in projection,VIP)筛选出敏感波段后,采用偏最小二乘回归法(partial least squares regression,PLSR)、支持向量机回归法(support vector regression,SVR)和极限学习机法(extreme learning machine,ELM)构建基于特征光谱的土壤离子含量高光谱反演模型,并对比冻结与未冻结状态反演模型的精度。结果表明:在冻结状态下,不同离子的反演精度存在很大差异,其中Cl-和K+的预测精度极高(相对分析误差大于2.5),SO42-、Ca2+和Na+预测精度较好(相对分析误差在2.0~2.5之间),其余离子预测效果较差;3种回归方法中,ELM模型精度最高,SVM模型次之,PLSR模型最低。冻结和未冻结状态下离子的最优反演模型相同,但冻结状态下Cl-、SO42-、K+和Na+反演精度比未冻结状态高,而Ca2+和Mg2+反演精度比未冻结状态低且Mg2+的反演精度差别最大。各离子最优反演模型与未冻结状态下的相对分析误差相比变化为-34.45%~24.43%。该研究构建的VIP-ELM模型为季节性冻土区盐渍化土壤盐基离子的高光谱监测提供了一种可靠途径。

       

      Abstract: Salinization in frozen soil has posed a serious threat to the emergence and growth of crops in the next growing period. It is of great importance for the accurate detection of the content and composition of soil salt during the freeze-thaw period. Fortunately, the spectral data can be used to monitor the soil salinity during the crop growing period, particularly for the soil under an unfrozen state. However, the monitoring models under the unfrozen state cannot suitable for the frozen soil, due to the variation in the soil reflectance during freezing. In this study, an inversion model was established for the soil water-soluble salt ions in the frozen state using hyperspectral technology. A systematic analysis was made to compare the accuracy of the model in the frozen and unfrozen states. The soil samples were first collected with different salinity gradients from the Jiefangzha Irrigation Area of Hetao Irrigation District in the Inner Mongolia of China. The contents of major water-soluble salt ions (i.e., HCO3-, Cl-, CO32-, SO42-, K+, Na+, Ca2+, and Mg2+) were then measured in the unfrozen soil. The hyperspectral reflectance of soil samples was also measured by the ASD FieldSpec 3 instrument. Secondly, the soil samples were then frozen at -15°C for 12h. After that, the above-mentioned hyperspectral reflectance and ion contents were measured once again after freezing. The raw spectral data was also processed using standard normal variable (SNV) for the subsequent model construction, in order to make the hyperspectral curves smoother. Thirdly, two-thirds of the soil samples were used for the modeling (n = 78), while one-third for the validation (n = 39). The concentration gradient method was utilized to ensure the statistical characteristics of the modeling and the validation sets resembled that of the whole sample set. At the same time, the sensitive spectral intervals of each water-soluble salt ion were selected using variable importance in projection (VIP). The hyperspectral inversion model was formulated for the major water-soluble salt ions content with the sensitive spectral bands using partial least squares regression (PLSR), support vector regression (SVR), and extreme learning machine (ELM). Finally, the performances of these models were evaluated by the determination coefficient of calibration sets (RC2), determination coefficient of prediction sets (RP2), root mean square error (SRMSE), and residual predictive deviation (SRPD). The results showed that the VIP hyperspectral monitoring model managed to invert the most content of the water-soluble salt ions in the frozen soil, but the inversion accuracy of different ions varied greatly. Among them, the prediction accuracies of Cl-and K+ were extremely high with an RPD of above 2.5. There was a reasonably good prediction accuracy of SO42-, Ca2+, and Na+ (2.0 

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