top of page
wildlife conservation research in australia.webp

Lamuel Chi Hay Chung

PhD Candidate | School of the Environment, and Agriculture and Food Sustainability

About

Lamuel is a PhD candidate in the Wildlife Conservation Lab at The University of Queensland, under the supervision of Dr April Reside and Professor Stuart Phinn. His research utilized cloud computation platforms, machine learning, and citizen science to model Australian mammals’ dynamic habitat suitability across the continent.

 

Lamuel received his BA in Anthropology from the Chinese University of Hong Kong (2016), and MEnvM in Conservation Biology from The University of Queensland (2019) where he developed an immense interest in spatial ecology and remote sensing. Before returning to the university in 2022 as a PhD candidate, Lamuel worked as a Research Assistant for the State Key Laboratory of Marine Pollution of The City University of Hong Kong (2021-2022) and Ren Chao's Urban Climate Lab of The University of Hong Kong (2019-2021). His research and publications came across multi-disciplines, including ecology, geography, urban studies, artificial intelligence, etc. He is also an internationally awarded photographer and a keen hiker.

Publications

  • Hua, J., Cai, M., Shi, Y., Ren, C., Xie, J., Chung, L. C. H., Lu, Y., Chen, L., Yu, Z., & Webster, C. (2022). Investigating pedestrian-level greenery in urban forms in a high-density city for urban planning. Sustainable Cities and Society, 80, 103755. https://doi.org/10.1016/j.scs.2022.103755

  • Xie, J., Ren, C., Li, X., & Chung, L. C. H. (2022). Investigate the urban growth and urban-rural gradients based on local climate zones (1999–2019) in the Greater Bay Area, China. Remote Sensing Applications, 25, 100669. https://doi.org/10.1016/j.rsase.2021.100669

  • Chen, G., Xie, J., Li, W., Li, X., Chung, L. C. H., Ren, C., & Liu, X. (2021). Future "local climate zone" spatial change simulation in Greater Bay Area under the shared socioeconomic pathways and ecological control line. Building and Environment, 203, 108077. https://doi.org/10.1016/j.buildenv.2021.108077

  • Chung, L. C. H., Xie, J., & Ren, C. (2021). Improved machine-learning mapping of local climate zones in metropolitan areas using composite Earth observation data in Google Earth Engine. Building and Environment, 199, 107879. https://doi.org/10.1016/j.buildenv.2021.107879

lamuel c. h. chung - wildlife conservation labs.webp

Further Links

wildlife conservation lab - wildlife research logo.webp

Wildlife Conservation Lab

uq.png
diversity flag.webp

Diverse perspectives, abilities, experiences, and backgrounds inspire creativity, encourage innovation, and enrich communities. Members of our broad community are valued and respected for their individuality. The Wildlife Conservation Lab strives to create a culturally safe, welcoming, and inclusive workplace, with strong community connections and partnerships. 
We acknowledge the Traditional Owners of the lands on which we live and work, pay our respects to their Ancestors and their descendants, and recognise their valuable contributions to Australian and global society.

Copyright 2025 Wildlife Conservation Lab | Site Designed by Synergy Creative Co

bottom of page