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Estimation of Maize Yield in Yitong County based on Multi-source Remote Sensing Data from 2007 to 2017

机译:基于2007至2017年的多源遥感数据的伊龙县玉米产量估算

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With the development of remote sensing technology, the utilizations of multi-spatial and multispectral resolution remote images have proved to be very important in monitoring the growth and estimating the yield of agricultural crops. The light energy utilization models using remote sensing have got the wide application because of its simple data acquisition, less parameters and capabilities for time series analysis. In this research, the yield estimation has been carried out using the net primary productivity (NPP) and the contents of soil organic matter which are obtained by Carnegie-Ames-Stanford approach (CASA) model and our proposed approach respectively. More specifically, NPP of maize in the study area from 2007 to 2017 was estimated using CASA model, and the characters of spatio-temporal variation were explored. After that, the retrieval model of the soil organic matter content was established based on the relationship analyzation between the soil organic content and NPP. The characters of spatio-temporal variation also have been explored. Then the yield of spring maize in Yitong County from 2007 to 2017 was estimated using an improved yield estimation model. Moreover, the maize harvest index and the yield of maize per unit area in the study area were obtained. Finally, the growth and development information of maize in Yitong County were comprehensively evaluated combining with these mentioned data.
机译:随着遥感技术的发展,多空间和多光谱分辨率远程图像的利用证明在监测生长和估算农业作物产量方面非常重要。由于其简单的数据采集,时间序列分析的参数和能力较少,使用遥感的光能利用模型具有广泛的应用。在该研究中,通过Carnegie-Ames-Stanford方法(CASA)模型和所提出的方法获得的净初级生产率(NPP)和土壤有机质的含量和我们提出的方法进行了产量估计。更具体地说,使用CASA模型估计了2007年至2017年研究领域的玉米NPP,探讨了时空变异的特征。此后,基于土壤有机含量和NPP之间的关系分析来建立土壤有机质含量的检索模型。还探索了时空变化的特征。然后利用改进的收益率估计模型估算了2007年至2017年尤孔县春玉米产量。此外,获得了研究区域中每单位面积玉米收获指数和玉米产率。最后,与这些数据进行了全面评估了伊龙县玉米的增长和发展信息。

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