4.2 Article

A Machine Learning Tutorial for Operational Meteorology. Part I: Traditional Machine Learning

Journal

WEATHER AND FORECASTING
Volume 37, Issue 8, Pages 1509-1529

Publisher

AMER METEOROLOGICAL SOC
DOI: 10.1175/WAF-D-22-0070.1

Keywords

Radars; Radar observations; Satellite observations; Forecasting techniques; Nowcasting; Operational forecasting; Artificial intelligence; Classification; Data science; Decision trees; Machine learning; Model interpretation and visualization; Regression; Support vector machines; Other artificial intelligence; machine learning

Funding

  1. National Science Foundation [ICER-2019758]
  2. NOAA/Office of Oceanic and Atmospheric Research under NOAA-University of Oklahoma, U.S. Department of Commerce [NA16OAR4320115, NA21OAR4320204]

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The use of machine learning in meteorology has increased greatly in recent years. However, the lack of formal instruction and requirement for meteorology students has led to a perception that machine learning methods are opaque and intimidating. To address this, this paper provides a survey of common machine learning methods and uses plain language and meteorological examples to explain them, aiming to enable readers to apply machine learning to their own datasets.
Recently, the use of machine learning in meteorology has increased greatly. While many machine learning methods are not new, university classes on machine learning are largely unavailable to meteorology students and are not required to become a meteorologist. The lack of formal instruction has contributed to perception that machine learning methods are black boxes and thus end-users are hesitant to apply the machine learning methods in their everyday workflow. To reduce the opaqueness of machine learning methods and lower hesitancy toward machine learning in meteorology, this paper provides a survey of some of the most common machine learning methods. A familiar meteorological example is used to contextualize the machine learning methods while also discussing machine learning topics using plain language. The following machine learning methods are demonstrated: linear regression, logistic regression, decision trees, random forest, gradient boosted decision trees, naive Bayes, and support vector machines. Beyond discussing the different methods, the paper also contains discussions on the general machine learning process as well as best practices to enable readers to apply machine learning to their own datasets. Furthermore, all code (in the form of Jupyter notebooks and Google Colaboratory notebooks) used to make the examples in the paper is provided in an effort to catalyze the use of machine learning in meteorology.

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