Machine Learning for Simulation of Urban Heat Island Dynamics Based on Large-Scale Meteorological Conditions

Author:

Varentsov Mikhail12ORCID,Krinitskiy Mikhail1234ORCID,Stepanenko Victor125ORCID

Affiliation:

1. Research Computing Center, Lomonosov Moscow State University, 1/4 Leninskie Gory, Moscow 119234, Russia

2. Moscow Center for Fundamental and Applied Mathematics, 1 Leninskie Gory, Moscow 119991, Russia

3. Shirshov Institute of Oceanology, Russian Academy of Sciences, 36 Nakhimovskiy prospect, Moscow 117997, Russia

4. Moscow Institute of Physics and Technology, 9 Institutskiy per., Dolgoprudny 141701, Russia

5. Faculty of Geography, Lomonosov Moscow State University, 1 Leninskie Gory, Moscow 119991, Russia

Abstract

This study considers the problem of approximating the temporal dynamics of the urban-rural temperature difference (ΔT) in Moscow megacity using machine learning (ML) models and predictors characterizing large-scale weather conditions. We compare several ML models, including random forests, gradient boosting, support vectors, and multi-layer perceptrons. These models, trained on a 21-year (2001–2021) dataset, successfully capture the diurnal, synoptic-scale, and seasonal variations of the observed ΔT based on predictors derived from rural weather observations or ERA5 reanalysis. Evaluation scores are further improved when using both sources of predictors simultaneously and involving additional features characterizing their temporal dynamics (tendencies and moving averages). Boosting models and support vectors demonstrate the best quality, with RMSE of 0.7 K and R2 > 0.8 on average over 21 years. For three selected summer and winter months, the best ML models forced only by reanalysis outperform the comprehensive hydrodynamic mesoscale model COSMO, supplied by an urban canopy scheme with detailed city-descriptive parameters and forced by the same reanalysis. However, for a longer period (1977–2023), the ML models are not able to fully reproduce the observed trend of ΔT increase, confirming that this trend is largely (by 60–70%) driven by megacity growth. Feature importance assessment indicates the atmospheric boundary layer height as the most important control factor for the ΔT and highlights the relevance of temperature tendencies as additional predictors.

Funder

Non-commercial Foundation for the Advancement of Science and Education, INTELLECT

Ministry of Science and Higher Education of the Russian Federation

Publisher

MDPI AG

Subject

Atmospheric Science

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