WANT A PROFILE LIKE THIS?
Create my FREE Plan Or learn about other options
Le Yu
PeerJ Editor & Author
1,200 Points

Contributions by role

Author 200
Editor 1,000

Contributions by subject area

Agricultural Science
Ecology
Ecosystem Science
Environmental Impacts
Spatial and Geographic Information Science
Environmental Sciences
Natural Resource Management
Plant Science
Biodiversity
Conservation Biology
Forestry
Biogeography
Computational Biology
Data Mining and Machine Learning
Climate Change Biology

Le Yu

PeerJ Editor & Author

Summary

Associate Professor in the Department of Earth System Science, Tsinghua University.

Research interests include global land-use and land-cover change mapping, modeling and application; global cropland mapping and uncertainty analysis.

Agricultural Science Climate Change Biology Food, Water & Energy Nexus Forestry Spatial & Geographic Information Science

Editorial Board Member

PeerJ - the Journal of Life & Environmental Sciences

Work details

Associate Professor

Tsinghua University
March 2015
Department of Earth System Science

Websites

  • Google Scholar

PeerJ Contributions

  • Articles 2
  • Edited 10
August 4, 2021
Towards an open and synergistic framework for mapping global land cover
Jiyao Zhao, Le Yu, Han Liu, Huabing Huang, Jie Wang, Peng Gong
https://doi.org/10.7717/peerj.11877 PubMed 34430081
September 8, 2020
Cropland heterogeneity changes on the Northeast China Plain in the last three decades (1980s–2010s)
Xiaoxuan Liu, Le Yu, Qinghan Dong, Dailiang Peng, Wenbin Wu, Qiangyi Yu, Yuqi Cheng, Yidi Xu, Xiaomeng Huang, Zheng Zhou, Dong Wang, Lei Fang, Peng Gong
https://doi.org/10.7717/peerj.9835 PubMed 33194352

Academic Editor on

November 19, 2021
Climate change favours connectivity between virus-bearing pest and rice cultivations in sub-Saharan Africa, depressing local economies
Mattia Iannella, Walter De Simone, Paola D’Alessandro, Maurizio Biondi
https://doi.org/10.7717/peerj.12387 PubMed 34820174
August 18, 2021
Leaf water potential of field crops estimated using NDVI in ground-based remote sensing—opportunities to increase prediction precision
Xuejun Dong, Bin Peng, Shane Sieckenius, Rahul Raman, Matthew M. Conley, Daniel I. Leskovar
https://doi.org/10.7717/peerj.12005 PubMed 34466291
March 22, 2021
Spatiotemporal dynamics of habitat suitability for the Ethiopian staple crop, Eragrostis tef (teff), under changing climate
Dinka Zewudie, Wenguang Ding, Zhanlei Rong, Chuanyan Zhao, Yapeng Chang
https://doi.org/10.7717/peerj.10965 PubMed 33828911
September 30, 2020
Forest structure dependency analysis of L-band SAR backscatter
Yongjie Ji, Jimao Huang, Yilin Ju, Shipeng Guo, Cairong Yue
https://doi.org/10.7717/peerj.10055 PubMed 33062445
February 11, 2020
Patterns of biodiversity response along a gradient of forest use in Eastern Amazonia, Brazil
Sérgio G. Milheiras, Marcelino Guedes, Fernando Augusto Barbosa Silva, Perseu Aparício, Georgina M. Mace
https://doi.org/10.7717/peerj.8486 PubMed 32095341
November 28, 2019
Multiple ecosystem services from field margin vegetation for ecological sustainability in agriculture: scientific evidence and knowledge gaps
Prisila A. Mkenda, Patrick A. Ndakidemi, Ernest Mbega, Philip C. Stevenson, Sarah E.J. Arnold, Geoff M. Gurr, Steven R. Belmain
https://doi.org/10.7717/peerj.8091 PubMed 31799074
August 19, 2019
Monitoring and analysis of the expansion of the Ajmr Port, Davao City, Philippines using multi-source remote sensing data
Humei Li, Mingquan Wu, Dinghui Tian, Lianxi Wu, Zheng Niu
https://doi.org/10.7717/peerj.7512 PubMed 31489267
September 6, 2018
Selecting appropriate variables for detecting grassland to cropland changes using high resolution satellite data
Tomáš Klouček, David Moravec, Jan Komárek, Ondřej Lagner, Přemysl Štych
https://doi.org/10.7717/peerj.5487 PubMed 30202648
August 31, 2018
Early-season crop mapping using improved artificial immune network (IAIN) and Sentinel data
Pengyu Hao, Huajun Tang, Zhongxin Chen, Zhengjia Liu
https://doi.org/10.7717/peerj.5431 PubMed 30186678
August 22, 2018
Global mapping of potential natural vegetation: an assessment of machine learning algorithms for estimating land potential
Tomislav Hengl, Markus G. Walsh, Jonathan Sanderman, Ichsani Wheeler, Sandy P. Harrison, Iain C. Prentice
https://doi.org/10.7717/peerj.5457 PubMed 30155360