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Inverting the PROSAIL canopy reflectance model using neural nets trained on streamlined databases

机译:使用在简化的数据库上训练的神经网络来反转PROSAIL机盖反射率模型

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Author Summary: The widely used PROSAIL radiative transfer model was coupled with a simple soil reflectance parameterisation to estimate the leaf area index (LAI) of winter wheat (Triticum aestivum) from ground-based spectrometer data. To avoid time-consuming numerical optimisations, a neural net (NN) was used for model inversion. The NN was trained on 3000 spectral patterns generated by the reflectance model. The training database was previously streamlined to provide good approximation of the response surface while keeping the net compact. Streamlining was achieved by retaining only those synthetic spectra that belong both to the simulated and actual measurement spaces. The estimated LAI (nobs = 15) compared well with completely independent reference measurements taken four times during the 2000 growing season in four commercial winter wheat fields (1.8?≤?LAI ≤ ?8.1). The coefficient of determination (R2) between measured and estimated LAI was 0.87 with a root mean squared error (RMSE) of 0.89 (m2 m–2). Even for LAIs exceeding 3–4, saturation effects were low. Three measurement dates yielded RMSE lower than 0.8. Only during stem elongation did RMSE exceed 1. Higher errors for this time period were attributed to abrupt changes in the canopy structure (i.e. average leaf angle) not taken into account. Compared to the normalised difference vegetation index (NDVI), the inversion of PROSAIL using hyperspectral reflectances performed well, with errors reduced by more than 50% as compared to the NDVI model (RMSE: 1.91 m2 m–2).
机译:作者摘要:广泛使用的PROSAIL辐射传输模型与简单的土壤反射率参数化结合,可从地面光谱仪数据估算冬小麦(Triticum aestivum)的叶面积指数(LAI)。为了避免耗时的数值优化,将神经网络(NN)用于模型反演。 NN在反射模型产生的3000个光谱图上进行了训练。先前简化了训练数据库,以在保持网络紧凑的同时提供对响应面的良好近似。通过仅保留那些属于模拟和实际测量空间的合成光谱来实现精简。估计的LAI(点数= 15)与2000年生长期在四个商业冬麦田(1.8?LAI≤?8.1)中进行的四次完全独立的参考测量值相比较。测量和估计的LAI之间的确定系数(R2)为0.87,均方根误差(RMSE)为0.89(m2 m&xx2013; 2)。即使对于超过3– 4的LAI,饱和效应也很低。三个测量日期得出的RMSE低于0.8。仅在茎伸长期间,RMSE才超过1。该时间段内较高的误差归因于未考虑冠层结构的突然变化(即平均叶片角度)。与归一化植被指数(NDVI)相比,使用高光谱反射率对PROSAIL的反演效果很好,与NDVI模型(RMSE:1.91 m2 m– 2)相比,误差减少了50%以上。

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