首页> 外文期刊>E3S Web of Conferences >Application of GIS and RS in real time crop monitoring and yield forecasting: a case study of cotton fields in low and high productive farmlands
【24h】

Application of GIS and RS in real time crop monitoring and yield forecasting: a case study of cotton fields in low and high productive farmlands

机译:GIS和Rs在实时作物监测和产量预测中的应用 - 以低高效农田棉田为例

获取原文
           

摘要

Badland reclamation and low productive farmlands always have been one of the most detrimental effects on the national economy, typically in agricultural sector of Uzbekistan. Nonetheless, such kind of lands has been used extensively for major crops like cotton and winter wheat. However, it is difficult to assessing real productivity of them. Advanced technologies as GIS and RS are vital tool for geospatially analysing and making decisions on this type of fields. This research was carried out for real-time crop monitoring and yield forecasting in case of low productive (3.5 ha) and high productive (8.3 ha) cotton areas of Jarkurgan district (Surkhandarya region, Uzbekistan) based on geospatial analyses of multi-temporal satellite images, condition of groundwater, soil salinity, and ground truth data. For monitoring vegetation phenology of cotton and forecasting its harvest, False Colour, NDVI (Normalized Difference Vegetation Index) and SI (Salinity Index) analyses of areas were carried out by using 6 temporal windows of multi-temporal Sentinel 2 from April through August 2019. Besides, groundwater condition data which was obtained from observation wells these located in massives consists of both cotton fields was analysed by IDW (Inverse Distance Weighting) interpolation algorithm method to determine groundwater’s effect to vegetation development and yield.
机译:荒地填海和低生产力农田始终是对国民经济的最不利影响之一,通常是乌兹别克斯坦的农业部门。尽管如此,这种土地已被广泛用于棉花和冬小麦等主要作物。但是,很难评估它们的真正生产力。高级技术作为GIS和RS是地理空间分析和做出这种类型的决策的重要工具。该研究是在基于多时间卫星的地理空间分析的基础上的低生产率(3.5公顷)和高生产率(8.3公顷)和高生产率(8.3公顷)棉花地区的实时作物监测和产量预测,基于多颞卫星的地理空间分析,进行了实时作物监测和产量预测(乌兹别克斯坦)地下水,土壤盐度和地面真理数据的图像。对于监测棉花的植被候选酚醛化,预测其收获,通过在2019年8月的4月4日从4月2日使用6次颞窗2,通过使用6个时间窗口来分析区域的假色,NDVI(归一化差异植被指数)和Si(盐度指数)分析。此外,从位于大量的观察孔中获得的地下水条件数据包括IDW(逆距离加权)插值算法分析棉田,以确定地下水对植被发展和产量的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号