LGCESep 22, 2025

An AutoML Framework using AutoGluonTS for Forecasting Seasonal Extreme Temperatures

arXiv:2509.17734v1h-index: 11IJCNN
Originality Synthesis-oriented
AI Analysis

This work addresses a complex climatological forecasting problem for meteorology and climate science, but it is incremental as it applies an existing AutoML tool to a specific domain.

The paper tackled forecasting medium-term (90-day) maximum daily temperature events as a temporal classification problem, using AutoGluonTS on a large historical dataset with exogenous ocean data, achieving competitive performance with lower computational cost compared to operational platforms.

In recent years, great progress has been made in the field of forecasting meteorological variables. Recently, deep learning architectures have made a major breakthrough in forecasting the daily average temperature over a ten-day horizon. However, advances in forecasting events related to the maximum temperature over short horizons remain a challenge for the community. A problem that is even more complex consists in making predictions of the maximum daily temperatures in the short, medium, and long term. In this work, we focus on forecasting events related to the maximum daily temperature over medium-term periods (90 days). Therefore, instead of addressing the problem from a meteorological point of view, this article tackles it from a climatological point of view. Due to the complexity of this problem, a common approach is to frame the study as a temporal classification problem with the classes: maximum temperature "above normal", "normal" or "below normal". From a practical point of view, we created a large historical dataset (from 1981 to 2018) collecting information from weather stations located in South America. In addition, we also integrated exogenous information from the Pacific, Atlantic, and Indian Ocean basins. We applied the AutoGluonTS platform to solve the above-mentioned problem. This AutoML tool shows competitive forecasting performance with respect to large operational platforms dedicated to tackling this climatological problem; but with a "relatively" low computational cost in terms of time and resources.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes