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A Comparison of Retrieval Approaches for Estimating the Seasonal Dynamics of Rice Leaf Area Index from simulated Sentinel-2 data

机译:从模拟哨声-2数据估算水稻叶面积指数季节动态的检索方法比较

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Leaf Area Index (LAI) is a key variable for the monitoring the ability of crops to intercept solar energy for biomass production. In addition, LAI has the high seasonal variability and differ among phenophases. Therefore, accurately monitoring LAI atthe vegetative, reproductive and ripening stage is central for improving yield. The aim of the study is to identify the performance of different retrieval methods on the estimation of LAI at different phenophases of rice from sentinel 2 simulated bands.To achieve this, the research seeks to answer the following research objectives (i) compare the performance of piecewise model based on the specific phenophases with single models generated from the entire active season, (ii) to determine whether phenophase models are advantageous for LAI estimation in rice. The retrieval models were developed and tested on proximal hyperspectral bands, with focus on the sentinel 2 spectral bands. The machine learning regression models (MLRAs) presented the highest retrieval accuracy during the entire growing season (R2=0.65-0.74). The hybrid model's retrieval performance was similar to vegetation indices but with much higher errors during the entire growing season. The phenophases estimation of LAI saw a decline in the overall retrieval performance of MLRA, hybrid and VI models. The models performed much better during the vegetative stage compared to the reproductive and ripening stages. The study shows MLRA as the best model for estimating LAI during the entire growing and vegetative stages of rice growth. The hybrid models were only suited for the entire growing season (R2>0.5) but generally low when estimating for different phenohases. Finally, VI models were identified to be the best for estimating LAI during the ripening stages of irrigated rice.
机译:叶面积指数(LAI)是监测农作物拦截太阳能以进行生物量生产的关键变量。此外,Lai具有良好的季节性变异性并在苯缺陷中不同。因此,准确地监测莱植物,生殖和成熟阶段是提高产量的核心。该研究的目的是确定来自Sentinel 2模拟频段的不同磷酸盐赖米赖赖赖赖斯的不同检索方法的性能。为了实现这一目标,研究旨在回答以下研究目标(i)比较表现基于特异性苯酚的分段模型与整个活性季节产生的单一模型,(ii)确定苯相模型是否有利于水稻中的LAI估计。在近端高光谱带上开发并测试了检索模型,专注于哨声2光谱带。机器学习回归模型(MLRAS)在整个生长季节(R2 = 0.65-0.74)中呈现了最高的检索精度。混合模型的检索性能类似于植被指数,但在整个生长季节期间有更高的错误。 Lai的苯苯胺酶估计MLRA,杂交和VI模型的总检索性能下降。与生殖和成熟阶段相比,植物阶段期间的模型更好。该研究显示MLRA作为估计赖水稻生长的寿命和营养阶段的最佳模型。混合模型仅适用于整个生长季节(R2> 0.5),但在估计不同的苯酶时通常很低。最后,鉴定了VI模型作为灌溉水稻成熟阶段的估计赖模型。

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