Title
Learning from the 2018 Western Japan heavy rains to detect floods during the 2019 Hagibis Typhoon
Date Issued
01 July 2020
Access level
open access
Resource Type
journal article
Publisher(s)
MDPI AG
Abstract
Applications of machine learning on remote sensing data appear to be endless. Its use in damage identification for early response in the aftermath of a large-scale disaster has a specific issue. The collection of training data right after a disaster is costly, time-consuming, and many times impossible. This study analyzes a possible solution to the referred issue: the collection of training data from past disaster events to calibrate a discriminant function. Then the identification of affected areas in a current disaster can be performed in near real-time. The performance of a supervised machine learning classifier to learn from training data collected from the 2018 heavy rainfall at Okayama Prefecture, Japan, and to identify floods due to the typhoon Hagibis on 12 October 2019 at eastern Japan is reported in this paper. The results show a moderate agreement with flood maps provided by local governments and public institutions, and support the assumption that previous disaster information can be used to identify a current disaster in near-real time.
Volume
12
Issue
14
Language
English
OCDE Knowledge area
Ciencias ambientales Otras ingenierías y tecnologías Meteorología y ciencias atmosféricas
Scopus EID
2-s2.0-85088636794
Source
Remote Sensing
ISSN of the container
20724292
Sponsor(s)
This study was partly funded by the JSPS Kakenhi Program (17H06108 and 17H02050); the Core Research Cluster of Disaster Science at Tohoku University; the National Fund for Scientific, Technological and Technological Innovation Development (Fondecyt-Peru) [contract number 038-2019]; Japan Aerospace Exploration Agency (JAXA), and the MEXT Next Generation High-Performance Computing Infrastructures and Applications R&D Program. The satellite images were preprocessed with ArcGIS 10.6 and ENVI 5.5, and the other processing and analysis steps were implemented in Python using GDAL and NumPy libraries.
Sources of information: Directorio de Producción Científica Scopus