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Monitoring the Plant Density of Cotton with Remotely Sensed Data

机译:利用遥感数据监测棉花的植物密度

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PDC (Plant Density of Cotton) was an essential parameter for estimating the cotton yield and developing the zone-management measurements. This paper proposed a new method to retrieve PDC from the satellite remote sensing data. The thirteen fields of Xinjiang Production and Construction Corps (XPCC) (total 630 hm~2) were selected as the study area, where the sowing date, emergence date, and PDC were investigated. Based on the investigation data the linear models to estimate PDC are established using EVI and DEVI respectively. The results indicated that the difference of seedling size caused by the emergence time decreased the estimation accuracy of PDC. To improve the estimation accuracy the partition functions were established in terms of sowing date. DEVI is capable of reducing the influence of soil background significantly and it can bring the monitoring time forward from June 9th to May 24th in this research. The results indicated that the optimal time monitoring PDC would be from squaring to full-flowering of cotton growing period. A demonstration to monitor PDC was taken on June 9th in the 148th farm of XPCC. It can be concluded that the emergence time and the non-cotton background were the main factors affecting the monitoring accuracy of PDC, and the partition function with the emergence time could improve the estimation accuracy, and DEVI could make the monitoring time forward, and the optimal monitoring time was from the squaring stage to the full-flowering stage. This research provides an efficient, rapid and intact way to monitor PDC, and it is significant for operational application at a regional scale.
机译:PDC(棉花的植物密度)是估算棉花产量和开展区域管理测量的重要参数。本文提出了一种从卫星遥感数据中检索PDC的新方法。选择新疆生产建设兵团(XPCC)的13个田地(总重630 hm〜2)作为研究区,对播种期,出苗期和PDC进行调查。基于调查数据,分别使用EVI和DEVI建立了估计PDC的线性模型。结果表明,出苗时间引起的苗木大小差异降低了PDC的估计精度。为了提高估计精度,根据播种日期建立了分区函数。 DEVI能够显着减少土壤背景的影响,并且可以将监测时间从6月9日推迟到5月24日。结果表明,最佳的监测时间PDC应为棉花生长期到开花期。 6月9日,在XPCC的第148个农场中进行了监视PDC的演示。可以得出结论,出现时间和非棉花本底是影响PDC监测精度的主要因素,并且随着出现时间的划分功能可以提高估计精度,而DEVI可以使监测时间向前,最佳监测时间是从开花期到开花期。这项研究提供了一种有效,快速和完整的方式来监视PDC,这对于区域范围的运营应用具有重要意义。

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