Predicting spatiotemporal patterns of productivity and grazing from multispectral data using neural network analysis based on system complexity

被引:0
|
作者
Ashworth, A. J. [1 ]
Avila, A. [2 ]
Smith, H. [3 ]
Winzeler, T. E. [2 ]
Owens, P. [4 ]
Flynn, C. [5 ]
O'Brien, P. [6 ]
Philipp, D. [7 ]
Su, J. [2 ]
机构
[1] USDA ARS, Poultry Prod & Prod Safety Res Unit, Fayetteville, AR 72701 USA
[2] Univ Texas Arlington, Dept Math, Arlington, TX USA
[3] Univ Arkansas, Environm Dynam Program, Fayetteville, AR USA
[4] USDA ARS, Dale Bumpers Small Farms Res Ctr, Booneville, AR USA
[5] Grassland Soil & Water Res Lab, Temple, TX USA
[6] USDA ARS, Natl Lab Agr & Environm, Ames, IA USA
[7] Univ Arkansas, Anim Sci Dept, Fayetteville, AR USA
关键词
PASTURE; VARIABLES; BIOMASS; AREAS; RATES;
D O I
10.1002/agg2.20571
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Remote sensing tools, along with Global Navigation Satellite System cattle collars and digital soil maps, may help elucidate spatiotemporal relationships among soils, terrain, forages, and animals. However, standard computational procedures preclude systems-level evaluations across this continuum due to data inoperability and processing limitations. Deep learning, a subset of neural network, may elucidate efficiency of livestock production and linkages within the livestock-grazing environment. Consequently, we applied deep learning to environmental remote sensing data to (1) develop predictive models for yield and forage nutrition based on vegetation indices and (2) at a pixel-level (per 55 m2), identify how grazing is linked to soil properties, forage growth and nutrition, and terrain attributes in silvopasture and pasture-only systems. Remotely sensed data rapidly and non-destructively estimated herbage mass and nutritive value for enhanced net and primary productivity management in livestock and grazing systems. Cattle grazed big bluestem (Andropogon gerardii 'Vitman') with 182% greater frequency than orchardgrass (Dactylis glomerata L.) in the pasture-only system. Real-time estimates of vegetative bands may assist in predicting grazing pressure for more efficient pasture resource management. Cattle grazing followed distinct soil-landscape patterns, namely reduced cattle grazing preference occurred in areas of water accumulation, which highlights linkages among terrain, soil-water movement, soil properties, forage nutrition, and animal grazing response spatially and temporally. Results from this study could be scaled up to improve grazing management among the largest land-use category in the United States, that is, grasslands, which would allow for sustainable intensification of forage-based livestock production to meet growing demands for environmentally responsible protein. Terrain features are linked to water movement, soil properties, forage nutrition, and animal grazing spatially and temporarily. Neural networks excelled at capturing complex, non-linear patterns in spatial grazing data. Cattle preferred grazing drier areas in the landscape and native grasses fertilized with poultry litter. Equations were developed for non-destructively predicting forage allowance and nutrition for enhanced management.
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页数:15
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