Predicting unobserved climate time series data at distant areas via spatial correlation using reservoir computing
Shihori Koyama, Daisuke Inoue, Hiroaki Yoshida, Kazuyuki Aihara,, Gouhei Tanaka

TL;DR
This paper demonstrates that reservoir computing can effectively predict climate variables at distant locations by leveraging spatial correlations, outperforming traditional methods like VAR within certain distance ranges.
Contribution
It introduces the application of reservoir computing for spatial climate prediction and quantitatively assesses its effectiveness relative to distance and data correlation.
Findings
RC outperforms VAR for highly correlated data within predictive range.
Prediction accuracy decreases as distance between observation and target increases.
Strong data correlation significantly enhances prediction accuracy.
Abstract
Collecting time series data spatially distributed in many locations is often important for analyzing climate change and its impacts on ecosystems. However, comprehensive spatial data collection is not always feasible, requiring us to predict climate variables at some locations. This study focuses on a prediction of climatic elements, specifically near-surface temperature and pressure, at a target location apart from a data observation point. Our approach uses two prediction methods: reservoir computing (RC), known as a machine learning framework with low computational requirements, and vector autoregression models (VAR), recognized as a statistical method for analyzing time series data. Our results show that the accuracy of the predictions degrades with the distance between the observation and target locations. We quantitatively estimate the distance in which effective predictions are…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Neural Networks and Applications · Climate variability and models
