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Environmental Time Series Prediction with Missing Data by Machine Learning and Dynamics Recostruction

机译:通过机器学习和动态重建缺失数据的环境时间序列预测

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Environmental time series are often affected by missing data, namely data unavailability at certain time points. In this paper, it is presented an Iterated Prediction and Imputation algorithm, that makes possible time series prediction in presence of missing data. The algorithm uses Dynamics Reconstruction and Machine Learning methods for estimating the model order and the skeleton of time series, respectively. Experimental validation of the algorithm on an environmental time series with missing data, expressing the concentration of Ozone in a European site, shows an average percentage prediction error of 0.45% on the test set.
机译:环境时间序列通常受到缺失数据的影响,即某些时间点的数据不可用。 在本文中,呈现了一种迭代预测和撤销算法,其在存在缺失数据的情况下实现时间序列预测。 该算法分别使用动态重建和机器学习方法来分别估计模型顺序和时间序列的骨架。 对缺失数据缺失数据的环境时间序列的实验验证,表达欧洲部位中臭氧的浓度,显示了测试集的平均百分比预测误差为0.45%。

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