five

Robust conservation planning for biodiversity under climate change uncertainty – example dataset

收藏
Research Data Australia2025-12-20 收录
下载链接:
https://researchdata.edu.au/robust-conservation-planning-example-dataset/3576828
下载链接
链接失效反馈
官方服务:
资源简介:
This file was generated on 2025-05-12 by A. RUTSCHMANN GENERAL INFORMATION 1. Title of Dataset: Robust Conservation Planning for Biodiversity Under Climate Change Uncertainty – SPCA example dataset 2. Author Information A. Principal Investigator Contact Information Name: C. PARMESAN Institution: SETE Address: 09200, Moulis, FR Email: parmesan@austin.utexas.edu B. Alternate Contact Information Name: A. Rutschmann Institution: SORBONNE UNIVERSITE, UMR 7618, CNRS Address: CNRS, Sorbonne Université Email: alexis.rutschmann@gmail.com 3. Date of data generation: 2023 to 2024 4. Information about funding sources that supported the collection of the data: Make Our Planet Great Again award’ CCISS ANR-17-MPGA-0007 (AR, CP); NSF/EaSM grant # 1049208 (RL, CP, LM); DoE / NICCR grant # DE-FC02-06ER64156 / 09-NICCR-1077 (CP); US DoE RGCM program award DOE DE-SC0016605 (SM); (LABEX) TULIP ANR-10-LABX-41 SHARING/ACCESS INFORMATION 1. Licenses/restrictions placed on the data: Please contact the author before using the dataset or to obtain data for other species. 2. Links to publications that cite or use the data: A. Rutschmann et al., (in review). Robust Conservation Planning for Biodiversity Under Climate Change Uncertainty. Global Change biology. 3. Recommended citation for this dataset: A. Rutschmann et al., (in review). Robust Conservation Planning for Biodiversity Under Climate Change Uncertainty. Global Change biology. METHODOLOGICAL INFORMATION 1. Description of methods used for generation of data: For each species used in the manuscript, numerous SDM models were run by systematically sampling combinations of modelling approaches. The ‘SPCA_futures’ file countains the 176 SDMs for Speyeria carolae (the Carole's fritillary; SPCA), the species we used to illustrate our approach. Files’ names specify which of the 4 statistical algorithms was used in the modelling process (GBM, GLM, MARS, RF). The name also indicates which of the 4 non-redundant subsets of bioclimatic predictors was used. Note that for SPCA, only one subset was used (Sub0). Similary, the name details the spatial regions (mp10, mp25, sq10, sq25) and the combinations of global and regional climate models used in the SDM. 11 combinations of GCM and RCM were used for each speceis(e.g., RCM3_gfdl, WRFG_ccsm, WRFM_cgcm3, …). See main text and supplementary files for more details. The ‘SPCA_Ensemble_Data’ file countains the modelling ensembles used to create the different conservation strategies tested in our approach. These strategies are based on a combination of ensembles that have been run at different temporal (present or future) and geographical scales (Local, Minimum Convex Polygon or 250 km buffer). They also account for land already owned by govenmental agencies. See main text and supplementary files for details. DATA-SPECIFIC INFORMATION: 1. Variable List for the SPCA files: X: Latitude. Y: Longitude. Score: Habitate suitability as predicted by the SDM (from 0 to 1). 2. Variable List for other files: X: Latitude. Y: Longitude. ScoreT50: 0 or 1. Habitat is suitable (1) if at least 50 % of the SDM project the location (X,Y) to be suitable. ScoreT95: 0 or 1. Habitat is suitable (1) if at leaste 95% of the SDM project the location (X,Y) to be suitable. 3.Parks: land owned by american gouvernmental agencies (e.g., National Parks or Forest): X: Latitude. Y: Longitude.
提供机构:
Charles Sturt University
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作