A point-scale gap filling of the flux-tower data using the artificial neural network

Hyunho Jeon
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Abstract

In this study, we estimated missing evapotranspiration (ET) data at a eddy-covariance flux tower in the Cheongmicheon farmland site using the Artificial Neural Network (ANN). The ANN showed excellent performance in numerical analysis and is expanding in various fields. To evaluate the performance the ANN-based gap-filling, ET was calculated using the existing gap-filling methods of Mean Diagnostic Variation (MDV) and Food and Aggregation Organization Penman-Monteith (FAO-PM). Then ET was evaluated by time series method and statistical analysis (coefficient of determination, index of agreement (IOA), root mean squared error (RMSE) and mean absolute error (MAE). For the validation of each gap-filling model, we used 30 minutes of data in 2015. Of the 121 missing values, the ANN method showed the best performance by supplementing 70, 53 and 84 missing values, respectively, in the order of MDV, FAO-PM, and ANN methods. Analysis of the coefficient of determination (MDV, FAO-PM, and ANN methods followed by 0.673, 0.784, and 0.841, respectively.) and the IOA (The MDV, FAO-PM, and ANN methods followed by 0.899, 0.890, and 0.951 respectively.) indicated that, all three methods were highly correlated and considered to be fully utilized, and among them, ANN models showed the highest performance and suitability. Based on this study, it could be used more appropriately in the study of gap-filling method of flux tower data using machine learning method.
利用人工神经网络对通量塔数据进行点尺度的间隙填充
本研究利用人工神经网络(ANN)估算了清米川农田用地涡旋协方差通量塔的蒸散发(ET)缺失数据。人工神经网络在数值分析方面表现出优异的性能,并在各个领域得到拓展。为了评估基于人工神经网络的空白填充的性能,利用现有的平均诊断变异(MDV)和粮食与聚集组织Penman-Monteith (FAO-PM)空白填充方法计算了ET。然后采用时间序列法和统计分析(决定系数、一致性指数、均方根误差和平均绝对误差)对ET进行评价。为了验证每个空白填充模型,我们在2015年使用了30分钟的数据。在121个缺失值中,人工神经网络方法补值效果最佳,补值顺序依次为MDV法、FAO-PM法和人工神经网络法,分别补值70、53和84个。对决定系数(MDV、FAO-PM和ANN方法分别为0.673、0.784和0.841)和IOA (MDV、FAO-PM和ANN方法分别为0.899、0.890和0.951)的分析表明,三种方法高度相关,可以充分利用,其中ANN模型表现出最高的性能和适用性。基于本研究,可以更恰当地应用于利用机器学习方法研究磁通塔数据的补隙方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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