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Time series classification of satellite data using LSTM networks: an approach for predicting leaf-fall to minimize railroad traffic disruption

Published: July 15, 2025 | arXiv ID: 2507.11702v1

By: Hein de Wilde, Ali Mohammed Mansoor Alsahag, Pierre Blanchet

Potential Business Impact:

Predicts when leaves fall to help trains run.

Business Areas:
Predictive Analytics Artificial Intelligence, Data and Analytics, Software

Railroad traffic disruption as a result of leaf-fall cost the UK rail industry over 300 million per year and measures to mitigate such disruptions are employed on a large scale, with 1.67 million kilometers of track being treated in the UK in 2021 alone. Therefore, the ability to anticipate the timing of leaf-fall would offer substantial benefits for rail network operators, enabling the efficient scheduling of such mitigation measures. However, current methodologies for predicting leaf-fall exhibit considerable limitations in terms of scalability and reliability. This study endeavors to devise a prediction system that leverages specialized prediction methods and the latest satellite data sources to generate both scalable and reliable insights into leaf-fall timings. An LSTM network trained on ground-truth leaf-falling data combined with multispectral and meteorological satellite data demonstrated a root-mean-square error of 6.32 days for predicting the start of leaf-fall and 9.31 days for predicting the end of leaf-fall. The model, which improves upon previous work on the topic, offers promising opportunities for the optimization of leaf mitigation measures in the railway industry and the improvement of our understanding of complex ecological systems.

Country of Origin
🇳🇱 Netherlands

Page Count
14 pages

Category
Computer Science:
Machine Learning (CS)