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Predicting Grassland Leaf Area Index in the Meadow Steppes of Northern China: A Comparative Study of Regression Approaches and Hybrid Geostatistical Methods

机译:北方草原草原草地叶面积指数的预测:回归方法与混合地统计方法的比较研究

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Leaf area index (LAI) is a key parameter used to describe vegetation structures and is widely used in ecosystem biophysical process and vegetation productivity models. Many algorithms have been developed for the estimation of LAI based on remote sensing images. Our goal was to produce accurate and timely predictions of grassland LAI for the meadow steppes of northern China. Here, we compare the predictive power of regression approaches and hybrid geostatistical methods using Chinese Huanjing (HJ) satellite charge coupled device (CCD) data. The regression methods evaluated include partial least squares regression (PLSR), artificial neural networks (ANNs) and random forests (RFs). The two hybrid geostatistical methods were regression kriging (RK) and random forests residuals kriging (RFRK). The predictions were validated for different grassland types and different growing stages, and their performances were also examined by adding several groups of vegetation indices (VIs). The two hybrid geostatistical models (RK and RFRK) yielded the most accurate predictions (root mean squared error (RMSE) = 0.21 m 2 /m 2 and 0.23 m 2 /m 2 for RK and RFRK, respectively), followed by the RF model (RMSE = 0.27 m 2 /m 2 ), which was the most accurate among the regression models. These three models also exhibited the best temporal performance across the duration of the growing season. The PLSR and ANN models were less accurate (RMSE = 0.33 m 2 /m 2 and 0.35 m 2 /m 2 for ANN and PLSR, respectively), and the PLSR model performed the worst (exhibiting varied temporal performance and unreliable prediction accuracy that was susceptible to ground conditions). By adding VIs to the predictor variables, the predictions of the PLSR and ANN models were obviously improved (RMSE improved from 0.35 m 2 /m 2 to 0.28 m 2 /m 2 for PLSR and from 0.33 m 2 /m 2 to 0.28 m 2 /m 2 for ANN); the RF and RFRK models did not generate more accurate predictions and the performance of the RK model declined (RMSE decreased from 0.21 m 2 /m 2 to 0.32 m 2 /m 2 ).
机译:叶面积指数(LAI)是用于描述植被结构的关键参数,广泛用于生态系统生物物理过程和植被生产力模型。已经开发了许多用于基于遥感图像的LAI估计的算法。我们的目标是为中国北方的草原草原提供准确,及时的草原LAI预测。在这里,我们比较了使用中国环京(HJ)卫星电荷耦合器件(CCD)数据的回归方法和混合地统计学方法的预测能力。评估的回归方法包括偏最小二乘回归(PLSR),人工神经网络(ANN)和随机森林(RF)。两种混合地统计方法是回归克里金法(RK)和随机森林残差克里金法(RFRK)。对不同草地类型和不同生长期的预测进行了验证,并通过添加几组植被指数(VI)检验了它们的性能。两种混合地统计模型(RK和RFRK)得出的预测最准确(RK和RFRK的均方根误差(RMSE)分别为0.21 m 2 / m 2和0.23 m 2 / m 2),其次是RF模型(RMSE = 0.27 m 2 / m 2),这是回归模型中最准确的。这三个模型在整个生长季节期间也表现出最佳的时间性能。 PLSR和ANN模型的准确性较差(ANN和PLSR的RMSE = 0.33 m 2 / m 2和0.35 m 2 / m 2),而PLSR模型的表现最差(表现出不同的时间性能和不可靠的预测精度)易受地面条件影响)。通过将VI添加到预测变量中,PLSR和ANN模型的预测得到了明显改善(RMSE从PLSR的0.35 m 2 / m 2提高到0.28 m 2 / m 2,从0.33 m 2 / m 2提高到0.28 m 2 / m 2(对于ANN); RF和RFRK模型无法产生更准确的预测,并且RK模型的性能下降(RMSE从0.21 m 2 / m 2降至0.32 m 2 / m 2)。

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