期刊
REMOTE SENSING
卷 8, 期 6, 页码 -出版社
MDPI
DOI: 10.3390/rs8060502
关键词
phenology; citizen science; remote sensing; MODIS; forest; landscape ecology
类别
资金
- National Science Foundation [1461868]
- Division Of Integrative Organismal Systems
- Direct For Biological Sciences [1461868] Funding Source: National Science Foundation
There is great potential value in linking geographically dispersed multitemporal observations collected by lay volunteers (or citizen scientists) with remotely-sensed observations of plant phenology, which are recognized as useful indicators of climate change. However, challenges include a large mismatch in spatial scale and diverse sources of uncertainty in the two measurement types. These challenges must be overcome if the data from each source are to be compared and jointly used to understand spatial and temporal variation in phenology, or if remote observations are to be used to predict ground-based observations. We investigated the correlation between land surface phenology derived from Moderate Resolution Imaging Spectrometer (MODIS) data and citizen scientists' phenology observations from the USA National Phenology Network (NPN). The volunteer observations spanned 2004 to 2013 and represented 25 plant species and nine phenophases. We developed quality control procedures that removed observations outside of an a priori determined acceptable period and observations that were made more than 10 days after a preceding observation. We found that these two quality control steps improved the correlation between ground- and remote-observations, but the largest improvement was achieved when the analysis was restricted to forested MODIS pixels. These results demonstrate a high degree of correlation between the phenology of individual trees (particularly dominant forest trees such as quaking aspen, white oak, and American beech) and the phenology of the surrounding forested landscape. These results provide helpful guidelines for the joint use of citizen scientists' observations and remote sensing phenology in work aimed at understanding continental scale variation and temporal trends.
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