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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EVALUATION OF PRE-HARVEST PRODUCTION FORECASTING OF MUSTARD CROP IN MAJOR PRODUCING STATES OF INDIA, UNDER FASAL PROJECT
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EVALUATION OF PRE-HARVEST PRODUCTION FORECASTING OF MUSTARD CROP IN MAJOR PRODUCING STATES OF INDIA, UNDER FASAL PROJECT

机译:法案项目下,评价印度主要生产国芥菜作物预收获生产预测

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Rapeseed-mustard (Brassica spp.) is the major rabi oilseed crop of India. India is fourth largest contributor of oilseeds and Rapeseed-mustard contributing to around 11% of world’s total production and about 28.6% in total oilseeds production of the country. More than 85% Rapeseed-mustard production comes from 5 States viz. Rajasthan [48%], Haryana [12%], MP [10%], UP [9%] and West Bengal [7%]. In the previous few years, remote sensing technique has been progressively more considered for evolving as an alternative, standardized, possibly cheaper and faster technology for crop acreage estimation. Furthermore, satellite remote sensing data have strong advantages in comparison with other monitoring techniques because it provides timely, synoptic and latest information of crop at various stages over large scales. Therefore, under FASAL project, cloud free crop season’s images of different satellites (Sentinel-2, Resourcesat-2 and Landsat-8) were used and mustard crop was discriminated using Maximum Likelihood Classifier (MLC). Yield was estimated using different methods such as remote sensing derived NDVI, Agrometeorological yield model and Semi-Physical Model. The RMSE values for state level were found to be 4–17%, 8–19% and 13–23% for area, yield and production, respectively. The correlation coefficient (r) between DES and FASAL estimates were close to 0.9 in all the cases. The results of t-test at 5% level of significance inferred that FASAL and DES results were not significantly different. These results show that RS and weather-based techniques can be effectively used for pre-harvest acreage, yield and production estimation of mustard crop at district, state and national level.
机译:油菜籽 - 芥末(Brassica SPP)是印度的主要rabi油籽作物。印度是油籽排名第四的石油和油菜芥末贡献者,占世界总产量的11%左右,占国家石油总产量的约28.6%。超过85%的油菜芥末生产来自5个州的Ziz。拉贾斯坦邦[48%],哈里亚纳州[12%],MP [10%],UP [9%]和West Bengal [7%]。在过去几年中,遥感技术已经逐步考虑作为替代,标准化,可能更便宜的作物种植面积估计的替代性,标准化,可能更快。此外,与其他监测技术相比,卫星遥感数据具有很强的优势,因为它在大尺度上提供了各个阶段的及时,舞蹈和最新信息。因此,在Fasal项目下,使用云的不同卫星(Sentinel-2,资源-2和Landsat-8)的云种植季节,并使用最大似然分类器(MLC)对芥菜作物进行区分。利用不同方法估计产量,例如遥感衍生的NDVI,农业气象屈服模型和半物理模型。发现州级的RMSE值分别为面积,产量和生产的4-17%,8-19%和13-23%。在所有情况下,DES和Fasal估算之间的相关系数(R)接近0.9。 T检验的结果在5%的意义下推断出Fasal和DES结果没有显着差异。这些结果表明,RS和基于天气的技术可以有效地用于地区,州,国家和国家一级芥末作物的收获面积,产量和生产估算。

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