Abstract

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.

Highlights

  • Introduction1.1 Time series forecasting in hydrology and beyondPoint forecasting (hereafter, “forecasting”, unless specified differently) is of great importance in operational hydrology (Wang et al 2009)

  • 1.1 Time series forecasting in hydrology and beyondPoint forecasting is of great importance in operational hydrology (Wang et al 2009)

  • The time series are generated by linear stationary stochastic processes, which are commonly used for modelling hydrological processes

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Summary

Introduction

1.1 Time series forecasting in hydrology and beyondPoint forecasting (hereafter, “forecasting”, unless specified differently) is of great importance in operational hydrology (Wang et al 2009). Several studies performing multi-step ahead forecasting are Ballini et al (2001), Kim and Valdés (2003), Asefa et al (2005), Khan and Coulibaly (2006), Lin et al (2006), Cheng et al (2008), Guo et al (2011) and Valipour et al (2013). In these studies, time series exhibiting seasonality are analysed. Hu et al (2001) and Tongal and Berndtsson (2016) perform multi-step ahead forecasting of time series without seasonal behaviour

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