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Soil Salinity Inversion of Winter Wheat Areas Based on Satellite-Unmanned Aerial Vehicle-Ground Collaborative System in Coastal of the Yellow River Delta

机译:基于卫星 - 无人机 - 沿海的黄河三角洲沿海卫星 - 无人机地区合作系统的土壤盐度反演

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摘要

Soil salinization is an important factor affecting winter wheat growth in coastal areas. The rapid, accurate and efficient estimation of soil salt content is of great significance for agricultural production. The Kenli area in the Yellow River Delta was taken as the research area. Three machine learning inversion models, namely, BP neural network (BPNN), support vector machine (SVM) and random forest (RF) were constructed using ground-measured data and UAV images, and the optimal model is applied to UAV images to obtain the salinity inversion result, which is used as the true salt value of the Sentinel-2A image to establish BPNN, SVM and RF collaborative inversion models, and apply the optimal model to the study area. The results showed that the RF collaborative inversion model is optimal, R2 = 0.885. The inversion results are verified by using the measured soil salt data in the study area, which is significantly better than the directly satellite remote sensing inversion method. This study integrates the advantages of multi-scale data and proposes an effective “Satellite-UAV-Ground” collaborative inversion method for soil salinity, so as to obtain more accurate soil information, and provide more effective technical support for agricultural production.
机译:土壤盐渍化是影响沿海地区冬小麦生长的重要因素。对土壤盐含量的快速,准确和有效的估计对农业生产具有重要意义。黄河三角洲的Kenli地区被视为研究区。三种机器学习反演模型,即BP神经网络(BPNN),支持向量机(SVM)和随机森林(RF)是使用地面测量的数据和UAV图像构建的,并且最佳模型应用于UAV图像以获得盐度反转结果,用作Sentinel-2a图像的真正盐值,以建立BPNN,SVM和RF协作反演模型,并将最佳模型应用于研究区域。结果表明,射频协作反转模型是最佳的,R2 = 0.885。通过使用研究区域中的测量的土壤盐数据来验证反转结果,这显着优于直接卫星遥感反转方法。本研究综合了多尺度数据的优势,并提出了一种有效的“卫星 - 无人机”合作反演方法,用于土壤盐度,从而获得更准确的土壤信息,为农业生产提供更有效的技术支持。

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