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单变量环境预测的时间序列和回归方法:实证评估

Time series and regression methods for univariate environmental forecasting: An empirical evaluation.

作者信息

Effrosynidis Dimitrios, Spiliotis Evangelos, Sylaios Georgios, Arampatzis Avi

机构信息

Database & Information Retrieval Research Unit, Department of Electrical & Computer Engineering, Democritus University of Thrace, Xanthi 67100, Greece.

Forecasting and Strategy Unit, School of Electrical and Computer Engineering, National Technical University of Athens, Athens, Greece.

出版信息

Sci Total Environ. 2023 Jun 1;875:162580. doi: 10.1016/j.scitotenv.2023.162580. Epub 2023 Mar 9.

Abstract

One of the most common and valuable applications of science to the environment is to forecast the future, as it affects human lives in many aspects. However, it is not yet clear which methods -conventional time series or regression- deliver the highest performance in univariate time series forecasting. This study attempts to answer that question with a large-scale comparative evaluation that includes 68 environmental variables over three frequencies (hourly, daily, monthly), forecasted in one to twelve steps into the future, and evaluated over six statistical time series and fourteen regression methods. Results suggest that the strongest representatives of the time series methods (ARIMA, Theta) exhibit high accuracies, but certain regression methods (Huber, Extra Trees, Random Forest, Light Gradient Boosting Machines, Gradient Boosting Machines, Ridge, Bayesian Ridge) deliver even more promising results for all forecasting horizons. Finally, depending on the specific use case, the suitable method should be employed, as certain methods are more appropriate for different frequencies and some have an advantageous trade-off between computational time and performance.

摘要

科学在环境领域最常见且有价值的应用之一是预测未来,因为它在许多方面影响着人类生活。然而,目前尚不清楚哪种方法——传统时间序列法还是回归法——在单变量时间序列预测中能提供最高的性能。本研究试图通过大规模比较评估来回答这个问题,该评估包括68个环境变量,涵盖三个频率(每小时、每日、每月),预测未来一到十二个时间步,并通过六种统计时间序列方法和十四种回归方法进行评估。结果表明,时间序列方法中最具代表性的(ARIMA、Theta)表现出较高的准确性,但某些回归方法(Huber、Extra Trees、Random Forest、Light Gradient Boosting Machines、Gradient Boosting Machines、Ridge、Bayesian Ridge)在所有预测范围内都能给出更有前景的结果。最后,根据具体的用例,应采用合适的方法,因为某些方法更适合不同的频率,而且有些方法在计算时间和性能之间具有有利的权衡。

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