JOURNAL ARTICLE

Wildfire prediction for California using and comparing Spatio-Temporal Knowledge Graphs

Martin BöcklingHeiko PaulheimSarah Detzler

Year: 2023 Journal:   it - Information Technology Vol: 65 (4-5)Pages: 189-199   Publisher: R. Oldenbourg Verlag

Abstract

Abstract The frequency of wildfires increases yearly and poses a constant threat to the environment and human beings. Different factors, for example surrounding infrastructure to an area (e.g., campfire sites or power lines) contribute to the occurrence of wildfires. In this paper, we propose using a Spatio-Temporal Knowledge Graph (STKG) based on OpenStreetMap (OSM) data for modeling such infrastructure. Based on that knowledge graph, we use the RDF2vec approach to create embeddings for predicting wildfires, and we align different vector spaces generated at each temporal step by partial rotation. In an experimental study, we determine the effect of the surrounding infrastructure by comparing different data composition strategies, which involve a prediction based on tabular data, a combination of tabular data and embeddings, and solely embeddings. We show that the incorporation of the STKG increases the prediction quality of wildfires.

Keywords:
Knowledge graph Computer science Graph Predictive power Data mining Expressive power Artificial intelligence Theoretical computer science

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30
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0.16
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Topics

Data Management and Algorithms
Physical Sciences →  Computer Science →  Signal Processing
Geographic Information Systems Studies
Social Sciences →  Social Sciences →  Geography, Planning and Development
Advanced Graph Neural Networks
Physical Sciences →  Computer Science →  Artificial Intelligence
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