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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Nonlinear hierarchical models for predicting cover crop biomass using Normalized Difference Vegetation Index
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Nonlinear hierarchical models for predicting cover crop biomass using Normalized Difference Vegetation Index

机译:使用归一化植被指数预测农作物生物量的非线性层次模型

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Incorporating cover crops into agricultural systems can improve soil structural properties, increase nutrient availability, reduce erosion and loss of agrochemicals, and suppress weeds. These benefits are a function of the amount of cover crop biomass that enters the soil. The ability to easily and inexpensively quantify the spatial variability of cover crop biomass is needed to better understand and predict its potential as an input to agricultural systems. Here, we explore the use of Normalized Difference Vegetation Index (NDVI) as a source of information for improving accuracy and precision of cover crop biomass prediction. We focus on developing models that account for biomass variability within and among fields. These models are used to produce digital data layers of predicted biomass and associated uncertainty. We propose hierarchical nonlinear models with field random effects and a residual variance function to accommodate strong heteroscedasticity. These models are motivated using aboveground biomass of red clover (Trifolium pratense L.) measured on three different dates in five fields in southwest Michigan. Model adequacy was assessed using the Deviance Information Criterion. Given this criterion, the "best" fitting model included field effects and a polynomial function to account for non-constant residual variance. Importantly, we demonstrate that accounting for heteroscedasticity in the model fitting is critical for capturing uncertainty in subsequent biomass prediction.
机译:将覆盖作物纳入农业系统可以改善土壤结构特性,增加养分利用率,减少农用化学品的侵蚀和损失,并抑制杂草。这些好处是进入土壤的农作物生物量的函数。为了更好地了解和预测其作为农业系统投入物的潜力,需要能够轻松,廉价地量化覆盖作物生物量的空间变异性。在这里,我们探索使用归一化植被指数(NDVI)作为信息源来提高覆盖作物生物量预测的准确性和精度。我们专注于开发模型,这些模型说明了田间和田间的生物量变异性。这些模型用于产生预测生物量和相关不确定性的数字数据层。我们提出具有场随机效应和残差方差函数的分层非线性模型,以适应强异方差性。这些模型是由在密歇根州西南部五个田地的三个不同日期测量的红三叶草(Trifolium pratense L.)的地上生物量激发的。使用偏差信息准则评估模型的适当性。在此条件下,“最佳”拟合模型包括场效应和多项式函数,以解决非恒定残差的问题。重要的是,我们证明在模型拟合中考虑异方差对于捕获后续生物量预测中的不确定性至关重要。

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