基于多源遥感协同反演的区域性土壤盐渍化监测
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国家自然科学基金项目(51249007、51569018)


Regional Soil Salinity Monitoring Based on Multi-source Collaborative Remote Sensing Data
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    摘要:

    为进一步推动多源遥感技术在农业生产与管理中的应用,以内蒙古河套灌区解放闸灌域为试验区,利用地面实测光谱和地表组合粗糙度数据,联合C波段微波雷达SAR四极化后向散射系数数据,分别利用主成分回归(PCR)、多元逐步回归(MSR)和偏最小二乘回归(PLSR)选取盐分特征波段,并建模评价土壤盐渍化分布。首先,对光谱反射率及其对数、一阶与二阶导数4种光谱数据进行相关性分析,发现相较于原始光谱和对数变换,光谱的一、二阶导数具有更好的相关性,二阶导数变换的618~622nm、1802~1806nm、2169~2173nm、2344~2348nm这4个特征波段的相关系数分别为0.37、0.28、0.39和0.27;PLSR筛选的波段相较MSR选取的波段延后,但其二阶导数变换模型拟合度小于MSR。其次,在对比二阶导数变换的PCR、MSR和PLSR土壤盐分模型基础上,最终确定了协同光谱特征波段中心反射率二阶导数和雷达后向散射特性、地表组合粗糙度的BP人工神经网络(BPANN)模型为最佳预测模型,其预测模型的R2为0.8908,稳定性和预测精度均优于前述经验回归模型。融合多源遥感数据的神经网络模型可快速精准监测土壤盐渍化分布,为灌区土壤退化防治提供基础信息指导。

    Abstract:

    Hyper-spectral remote sensing has been successfully applied to quickly and efficiently monitoring field of soil salinization. In order to further promote the multi-source remote sensing technology development in agricultural production and management, Jiefangzha zone of Hetao Irrigation District, Inner Mongolia, was selected as the study area, based on the measured ground spectra, surface roughness and four polarization scattering data of C-band microwave synthetic aperture radar (radar SAR), respectively by using the method of principal component regress (PCR), multiple stepwise regress (MSR) and partial least square regress (PLSR) to select feature band, soil salinization distribution modeling was built and evaluated. First of all, through correlation analysis of the spectral reflectance and its logarithm, the first and second order derivative of these four kinds of spectral data, it was found that the first spectrum and second derivative had better correlation compared with the original spectrum and logarithmic transformation, correlation coefficient of the second derivative transformation of 618~622nm, 1802~1806nm, 2169~2173nm and 2344~2348nm characteristic band was 0.37, 0.28, 0.39 and 0.27, respectively;characteristic band selected value of PLSR was later than that of the MSR. However, the second-order derivative transformation model was inferior to the MSR. Second, in contrast to the soil salt simulation method of PCR, MSR and PLSR based on the second order inverse transform, the BP artificial neural network (BPANN) model was the best prediction model, which collaborated the characteristics spectrum band center reflectivity after the second derivative and radar scattering characteristics, surface roughness. And the R2 value of prediction model was 0.8908, and the stability and accuracy was better than those of the empirical regression model. The neural network model integrating multisource remote sensing data can monitor soil salinization distribution more accurately, providing basic information guidance for soil salinization monitoring and soil degradation prevention in irrigation area.

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冯雪力,刘全明.基于多源遥感协同反演的区域性土壤盐渍化监测[J].农业机械学报,2018,49(7):127-133.

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  • 收稿日期:2018-01-04
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  • 在线发布日期: 2018-07-10
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