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Risk assessment using transfer learning for grassland fires.

Authors :
Liu, Xing-peng
Zhang, Guang-quan
Lu, Jie
Zhang, Ji-quan
Source :
Agricultural & Forest Meteorology. May2019, Vol. 269, p102-111. 10p.
Publication Year :
2019

Abstract

Highlights • The grassland fire risk was assessed in remote and data lacking areas. • The grassland fire risk knowledge and experience was transferred from one region to another. • This method could conveniently be used for risk mapping and updating. • It will reduce grassland fire risk management costs. Abstract A new direction of risk assessment research in grassland fire management is data-driven prediction, in which data are collected from particular regions. Since some regions have rich datasets that can easily generate knowledge for risk prediction, and some have no data available, this study addresses how we can leverage the knowledge learned from one grassland risk assessment to assist with a current assessment task. In this paper, we first introduce the transfer learning methodology to map and update risk maps in grassland fire management, and we propose a new grassland fire risk analysis method. In this study, two major grassland areas (Xilingol and Hulunbuir) in northern China are selected as the study areas, and five representative indicators (features) are extracted from grassland fuel, fire climate, accessibility, human and social economy. Taking Xilingol as the source domain (where sufficient labelled data are available) and Hulunbuir as the target domain (which contains insufficient data but requires risk assessment/prediction), we then establish the mapping relationship between grassland fire indicators and the degrees of grassland fire risk by using a transfer learning method. Finally, the fire risk in the Hulunbuir grassland is assessed using the transfer learning method. Experiments show that the prediction accuracy reached 87.5% by using the transfer learning method, representing a significant increase over existing methods. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01681923
Volume :
269
Database :
Academic Search Index
Journal :
Agricultural & Forest Meteorology
Publication Type :
Academic Journal
Accession number :
135398833
Full Text :
https://doi.org/10.1016/j.agrformet.2019.01.011