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Modelling Landsurface Time-Series with Recurrent Neural Nets

机译:与经常性神经网络建模Landsurface时间系列

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Machine learning tools and semi-empirical models have been very successful in describing and predicting instantaneous climatic influences on the spatial and seasonal variability of biosphere state and function. Yet, little work has been carried to explicitly model dynamic features accounting for memory effects, where in some cases hand-designed features (e.g. temperature sum, lagged precipitation) have been employed. Here, we explore the ability of recurrent neural network variants (RNN, LSTM) to model time series of dynamic variables 1) fPAR and NDVI, and 2) Carbon dioxide uptake and evapotranspiration, with meteorological variables as the only dynamic predictors. We show that the recurrent neural net approach excellently deals with this dynamic modelling challenge and outcompetes approaches where hand-designed features are complicated to conceive.
机译:机器学习工具和半经验模型在描述和预测生物圈状态和功能的空间和季节变异性上的瞬时气候影响方面非常成功。然而,很少的工作已经过了明确地模拟动态特征占记忆效应的动态特征,其中在某些情况下采用了手工设计的特征(例如,温度总和,滞后降水)。在这里,我们探讨了经常性神经网络变体(RNN,LSTM)到模型时间序列的动态变量1)FPAR和NDVI和2)二氧化碳摄取和蒸散,具有气象变量作为唯一动态预测因子。我们表明,经常性的神经网络方法很好地处理了这种动态建模挑战和脱颖而出的方法,手工设计的功能复杂化为设想。

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