4.6 Article

Machine learning for total cloud cover prediction

期刊

NEURAL COMPUTING & APPLICATIONS
卷 33, 期 7, 页码 2605-2620

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-020-05139-4

关键词

Ensemble calibration; Logistic regression; Multilayer perceptron; Total cloud cover

资金

  1. University of Debrecen
  2. National Research, Development and Innovation Office [NN125679]
  3. Hungarian Government
  4. European Social Fund
  5. Deutsche Forschungsgemeinschaft [SFB/TRR 165]
  6. [EFOP-3.6.216-2017-00015]
  7. [EFOP-3.6.3-VEKOP-162017-00002]

向作者/读者索取更多资源

Accurate forecasting of total cloud cover is important for various sectors, and statistical calibration using machine learning methods can significantly improve forecast skill. Adding precipitation forecast data can further enhance predictive performance.
Accurate and reliable forecasting of total cloud cover (TCC) is vital for many areas such as astronomy, energy demand and production, or agriculture. Most meteorological centres issue ensemble forecasts of TCC; however, these forecasts are often uncalibrated and exhibit worse forecast skill than ensemble forecasts of other weather variables. Hence, some form of post-processing is strongly required to improve predictive performance. As TCC observations are usually reported on a discrete scale taking just nine different values called oktas, statistical calibration of TCC ensemble forecasts can be considered a classification problem with outputs given by the probabilities of the oktas. This is a classical area where machine learning methods are applied. We investigate the performance of post-processing using multilayer perceptron (MLP) neural networks, gradient boosting machines (GBM) and random forest (RF) methods. Based on the European Centre for Medium-Range Weather Forecasts global TCC ensemble forecasts for 2002-2014, we compare these approaches with the proportional odds logistic regression (POLR) and multiclass logistic regression (MLR) models, as well as the raw TCC ensemble forecasts. We further assess whether improvements in forecast skill can be obtained by incorporating ensemble forecasts of precipitation as additional predictor. Compared to the raw ensemble, all calibration methods result in a significant improvement in forecast skill. RF models provide the smallest increase in predictive performance, while MLP, POLR and GBM approaches perform best. The use of precipitation forecast data leads to further improvements in forecast skill, and except for very short lead times the extended MLP model shows the best overall performance.

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