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Predicting spatialā€temporal patterns of diet quality and large herbivore performance using satellite time series

Authors :
Sean P. Kearney
Lauren M. Porensky
David J. Augustine
Justin D. Derner
Feng Gao
Source :
Ecological Applications. 32
Publication Year :
2022
Publisher :
Wiley, 2022.

Abstract

Adaptive management of large herbivores requires an understanding of how spatial-temporal fluctuations in forage biomass and quality influence animal performance. Advances in remote sensing have yielded information about the spatial-temporal dynamics of forage biomass, which in turn have informed rangeland management decisions such as stocking rate and paddock selection for free-ranging cattle. However, less is known about the spatial-temporal patterns of diet quality and their influence on large herbivore performance. This is due to infrequent concurrent ground observations of forage conditions with performance (e.g., mass gain), and previously limited satellite data at fine spatial and temporal scales. We combined multi-temporal field observations of diet quality (weekly) and mass gain (monthly) with satellite-derived phenological metrics (pseudo-daily, using data fusion and interpolation) to model daily mass gains of free-ranging yearling cattle in shortgrass steppe. We used this model to predict grazing season (mid-May to October) mass gains, a key management indicator, across 40 different paddocks grazed over a 10-year period (n = 138). We found strong relationships between diet quality and the satellite-derived phenological metrics, especially metrics related to the timing and rate of green-up and senescence. Satellite-derived diet quality estimates were strong predictors of monthly mass gains (R

Details

ISSN :
19395582 and 10510761
Volume :
32
Database :
OpenAIRE
Journal :
Ecological Applications
Accession number :
edsair.doi.dedup.....da201ae6cfff621d6dd8f9533369cc6c
Full Text :
https://doi.org/10.1002/eap.2503