• Search Research Projects
  • Search Researchers
  • How to Use
  1. Back to project page

2016 Fiscal Year Final Research Report

Desert oasis monitoring based on remote sensing data

Research Project

  • PDF
Project/Area Number 15H06249
Research Category

Grant-in-Aid for Research Activity Start-up

Allocation TypeSingle-year Grants
Research Field Environmental dynamic analysis
Research InstitutionShizuoka University

Principal Investigator

Sonobe Rei  静岡大学, 農学部, 助教 (40755352)

Project Period (FY) 2015-08-28 – 2017-03-31
Keywordsオアシス / 新疆ウイグル自治区 / リモートセンシング
Outline of Final Research Achievements

This study compares the kernel-based extreme learning machine (KELM) and the two traditional machine learning algorithms including self-organizing maps (SOM) and the random forest (RF) for detecting ecological degradation in Xinjiang (China), using satellite data. The results showed that KELM had the best performance in this study and kappa scores greater than 0.8 were confirmed against the validation data.
Based on the detection of changes in land cover during 2000-2015 using MODIS data (MOD13A2) and KELM, it can be found that the oasis decreased (15,739 km2).

Free Research Field

環境動態解析

URL: 

Published: 2018-03-22  

Information User Guide FAQ News Terms of Use Attribution of KAKENHI

Powered by NII kakenhi