Multi-modal temporal CNNs for live fuel moisture content estimation

Lynn Miller, Liujun Zhu, Marta Yebra, Christoph Rüdiger, Geoffrey I. Webb

Research output: Contribution to journalArticleResearchpeer-review

13 Citations (Scopus)

Abstract

Live fuel moisture content (LFMC) is an important environmental indicator used to measure vegetation conditions and monitor for high fire risk conditions. However, LFMC is challenging to measure on a wide scale, thus reliable models for estimating LFMC are needed. Therefore, this paper proposes a new deep learning architecture for LFMC estimation. The architecture comprises an ensemble of temporal convolutional neural networks that learn from year-long time series of meteorological and reflectance data, and a few auxiliary inputs including the climate zone. LFMC estimation models are designed for two training and evaluation scenarios, one for sites where historical LFMC measurements are available (within-site), the other for sites without historical LFMC measurements (out-of-site). The models were trained and evaluated using a large database of LFMC samples measured in the field from 2001 to 2017 and achieved an RMSE of 20.87% for the within-site scenario and 25.36% for the out-of-site scenario.

Original languageEnglish
Article number105467
Number of pages24
JournalEnvironmental Modelling and Software
Volume156
DOIs
Publication statusPublished - Oct 2022

Keywords

  • Convolutional neural network
  • Deep learning ensembles
  • Fire risk
  • Live fuel moisture content
  • MODIS
  • Time series analysis

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