LGMLJun 16, 2025

PeakWeather: MeteoSwiss Weather Station Measurements for Spatiotemporal Deep Learning

arXiv:2506.13652v1h-index: 54
Originality Synthesis-oriented
AI Analysis

This provides a real-world benchmark dataset for researchers in machine learning and meteorology to advance spatiotemporal modeling, though it is incremental as it offers new data rather than novel methods.

The authors introduced PeakWeather, a high-quality dataset of surface weather observations collected every 10 minutes over 8+ years from 302 stations across Switzerland, complemented with topographical indices and ensemble forecasts as a baseline, to support spatiotemporal deep learning tasks like forecasting and imputation.

Accurate weather forecasts are essential for supporting a wide range of activities and decision-making processes, as well as mitigating the impacts of adverse weather events. While traditional numerical weather prediction (NWP) remains the cornerstone of operational forecasting, machine learning is emerging as a powerful alternative for fast, flexible, and scalable predictions. We introduce PeakWeather, a high-quality dataset of surface weather observations collected every 10 minutes over more than 8 years from the ground stations of the Federal Office of Meteorology and Climatology MeteoSwiss's measurement network. The dataset includes a diverse set of meteorological variables from 302 station locations distributed across Switzerland's complex topography and is complemented with topographical indices derived from digital height models for context. Ensemble forecasts from the currently operational high-resolution NWP model are provided as a baseline forecast against which to evaluate new approaches. The dataset's richness supports a broad spectrum of spatiotemporal tasks, including time series forecasting at various scales, graph structure learning, imputation, and virtual sensing. As such, PeakWeather serves as a real-world benchmark to advance both foundational machine learning research, meteorology, and sensor-based applications.

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