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Comparison of stochastic and machine learning methods for multi-step ahead forecasting of hydrological processes

机译:随机和机器学习方法对水文过程多步超前预报的比较

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摘要

Research within the field of hydrology often focuses on the statistical problem of comparing stochastic to machine learning (ML) forecasting methods. The performed comparisons are based on case studies, while a study providing large-scale results on the subject is missing. Herein, we compare 11 stochastic and 9 ML methods regarding their multi-step ahead forecasting properties by conducting 12 extensive computational experiments based on simulations. Each of these experiments uses 2000 time series generated by linear stationary stochastic processes. We conduct each simulation experiment twice; the first time using time series of 100 values and the second time using time series of 300 values. Additionally, we conduct a real-world experiment using 405 mean annual river discharge time series of 100 values. We quantify the forecasting performance of the methods using 18 metrics. The results indicate that stochastic and ML methods may produce equally useful forecasts.
机译:水文学领域的研究通常集中在比较随机预测与机器学习(ML)预测方法的统计问题上。进行的比较是基于案例研究,而缺少提供关于该主题的大规模结果的研究。在这里,我们通过进行基于模拟的12个广泛的计算实验,比较了11种随机方法和9种ML方法的多步提前预测特性。每个实验都使用线性固定随机过程生成的2000个时间序列。我们每个模拟实验进行两次;第一次使用100个值的时间序列,第二次使用300个值的时间序列。此外,我们使用405个年均河流排放时间序列(100个值)进行了真实世界的实验。我们使用18个指标来量化这些方法的预测性能。结果表明,随机和ML方法可能会产生同样有用的预测。

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