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首页> 外文期刊>The Indian Journal of Agricultural Sciences >Prediction of wheat (Triticum aestivum) grain and biomass yield under different irrigation and nitrogen management practices using canopy reflectance spectra model
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Prediction of wheat (Triticum aestivum) grain and biomass yield under different irrigation and nitrogen management practices using canopy reflectance spectra model

机译:利用冠层反射光谱模型预测不同灌溉和施氮方式下小麦的籽粒和生物量产量

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A field experiment was carried out during rabi 2010-11 and 2011-12 to study the canopy reflectance and to predict the grain and biomass yield of wheat (Triticum aestivum L.) under different irrigation and nitrogen management practices using canopy reflectance spectra model. Wheat (cv. PBW 502) was grown with four levels of irrigation, i.e. 0.4, 0.6, 0.8 and 1.0IW/CPE and three N sources, i e 120 kg N/ha as urea, 60 kg N/ha as urea + 60 kg N/ha as farmyard manure (FYM) and 120 kg N/ha as FYM. Three spectral reflectance indices, viz. Red Normalized Difference Vegetation Index (RNDVI), Green Normalized Difference Vegetation Index (GNDVI) and Simple Ratio (SR) were computed using the spectral reflectance data. It was observed that across the treatments,the RNDVI, GNDVI, and SR increased from crown root initiation (CRI) to booting stage and thereafter decreased progressively till harvest. The pooled yield data of both the years showed significantly higher yield in 0.8 and 1.0 IW/CPE irrigation levels than 0.4 and 0.6 IW/CPE irrigation levels. The pooled data of grain yield under different nitrogen practices showed significantly higher yield in urea treatment followed by urea+FYM treatment and FYM treatment. The biomass yield under different nitrogen management practices followed trend similar to grain yield. A significant and positive correlation coefficient was observed between grain and biomass yield and spectral reflectance indices (RNDVI, GNDVI, SR) for all the phenological stages except at CRI stage and maturity stage. Highest correlation coefficient (0.97 for grain yield and 0.93 for biomass yield) was observed for GNDVI measured at milking stage. The model could account for 79 % variation in the grain yield of wheat with root mean square error (RMSE) (%) of 17.1. Similarly the model could account for 86% variation in the biomass yield of wheat with RMSE (%) of 12.7. The models slightly underestimate the grain and biomass yield of wheat with coefficient of residual mass (CRM) value of 0.13 and 0.08, respectively.
机译:在狂犬病2010-11和2011-12期间进行了田间试验,以研究冠层反射率,并使用冠层反射光谱模型预测在不同灌溉和氮素管理下小麦(Triticum aestivum L.)的籽粒和生物量产量。小麦(cb。PBW 502)在四个灌溉水平下(即0.4、0.6、0.8和1.0IW / CPE)和三个氮源(即尿素120千克氮/公顷,尿素60千克氮/公顷+ 60千克)生长N / ha作为农家肥(FYM),120 kg N / ha作为FYM。三个光谱反射指数,即。使用光谱反射率数据计算红色归一化植被指数(RNDVI),绿色归一化植被指数(GNDVI)和简单比率(SR)。观察到,在整个处理过程中,RNDVI,GNDVI和SR从树冠根萌生(CRI)到孕穗期均增加,随后逐渐减少直至收割。这两年的汇总产量数据显示,在0.8和1.0 IW / CPE灌溉水平下的单产显着高于0.4和0.6 IW / CPE灌溉水平。在不同的氮肥操作下,谷物产量的汇总数据显示,尿素处理,尿素+ FYM处理和FYM处理后的产量显着提高。在不同的氮素管理方式下,生物量的产量趋势与谷物产量相似。除CRI期和成熟期外,所有物候期的籽粒和生物量产量与光谱反射率指数(RNDVI,GNDVI,SR)之间均存在显着正相关系数。在挤奶阶段测得的GNDVI最高相关系数(谷物产量为0.97,生物质产量为0.93)。该模型可以解释小麦籽粒产量的79%变化,均方根误差(RMSE)(%)为17.1。同样,该模型可以解释RMSE(%)为12.7的小麦生物量产量的86%变化。该模型略微低估了小麦的谷物和生物量产量,其残留质量系数(CRM)值分别为0.13和0.08。

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