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A comparison of gap-filling algorithms for eddy covariance fluxes and their drivers

机译:赤纬协方差磁通量及其驱动器的间隙填充算法的比较

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The errors and uncertainties associated with gap-filling algorithms of water, carbon, and energy fluxes data have always been one of the main challenges of the global network of microclimatological tower sites that use the eddy covariance?(EC) technique. To address these concerns and find more efficient gap-filling algorithms, we reviewed eight algorithms to estimate missing values of environmental drivers and nine algorithms for the three major fluxes typically found in EC time series. We then examined the algorithms' performance for different gap-filling scenarios utilising the data from five EC?towers during?2013. This research's objectives were (a)?to evaluate the impact of the gap lengths on the performance of each algorithm and (b)?to compare the performance of traditional and new gap-filling techniques for the EC data, for fluxes, and separately for their corresponding meteorological drivers. The algorithms' performance was evaluated by generating nine gap windows with different lengths, ranging from a day to 365?d. In each scenario, a gap period was chosen randomly, and the data were removed from the dataset accordingly. After running each scenario, a variety of statistical metrics were used to evaluate the algorithms' performance. The algorithms showed different levels of sensitivity to the gap lengths; the Prophet Forecast Model?(FBP) revealed the most sensitivity, whilst the performance of artificial neural networks?(ANNs), for instance, did not vary as much by changing the gap length. The algorithms' performance generally decreased with increasing the gap length, yet the differences were not significant for windows smaller than 30?d. No significant differences between the algorithms were recognised for the meteorological and environmental drivers. However, the linear algorithms showed slight superiority over those of machine learning?(ML), except the random forest?(RF) algorithm estimating the ground heat flux (root mean square errors – RMSEs – of?28.91 and?33.92 for?RF and classic linear regression?– CLR, respectively). However, for the major fluxes, ML algorithms and the MDS showed superiority over the other algorithms. Even though ANNs, random forest?(RF), and eXtreme Gradient Boost?(XGB) showed comparable performance in gap-filling of the major fluxes, RF?provided more consistent results with slightly less bias against the other ML algorithms. The results indicated no single algorithm that outperforms in all situations, but the RF?is a potential alternative for the MDS and ANNs as regards flux gap-filling.
机译:与水,碳和能量通量数据的间隙填充算法相关的误差和不确定性一直是使用涡流协方差的微循环学塔网站的全球网络的主要挑战之一?(EC)技术。为了解决这些问题并找到更高效的缺口算法,我们审查了八种算法,以估计欧欧元时间序列中通常在EC时间序列中发现的三个主要通量的环境驱动程序和九种算法的缺失值。然后,我们将使用来自五个EC的数据的不同差距填充方案进行算法的性能,从而在2013年期间塔楼。该研究的目标是(a)?评估间隙长度对每种算法和(b)的性能的影响?为了比较EC数据的传统和新的差距填充技术的性能,用于助势,分开他们相应的气象司机。通过生成具有不同长度的九个间隙窗口来评估算法的性能,从一天到365?D。在每种情况下,随机选择间隙时段,并且相应地从数据集中移除数据。运行每个场景后,使用各种统计指标来评估算法的性能。该算法显示出与间隙长度不同的敏感性;先知预测模型?(FBP)揭示了最灵敏度,而人工神经网络的性能(例如,Anns),例如,通过改变间隙长度并没有变化。随着间隙长度的增加,算法的性能通常降低,但窗口对于小于30≤d的窗口不显着。对于气象和环境司机,算法之间没有显着差异。然而,线性算法显示出对机器学习的略有优势?(ml),除了随机森林(rf)算法估计地热通量(均均方误差 - rms-28.91和α33.92经典线性回归? - CLR分别)。然而,对于主要助熔剂,M1算法和MDS在其他算法上显示出优越性。即使是Anns,随机森林?(RF)和极端梯度提升?(XGB)显示出在主要助焊剂的间隙填充中的相当性能,RF?提供了更一致的结果,略微较小偏向其他ML算法。结果表明,在所有情况下,没有单一的算法,但是RF?是在焊剂间隙填充方面的MDS和ANN的潜在替代方案。

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