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Remote Sensing of Land Surface Phenology



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Autore: Ma Xuanlong Visualizza persona
Titolo: Remote Sensing of Land Surface Phenology Visualizza cluster
Pubblicazione: MDPI - Multidisciplinary Digital Publishing Institute, 2022
Descrizione fisica: 1 electronic resource (276 p.)
Soggetto topico: Technology: general issues
History of engineering & technology
Environmental science, engineering & technology
Soggetto non controllato: climate change
digital camera
MODIS
Mongolian oak
phenology
sap flow
urbanization
plant phenology
spatiotemporal patterns
structural equation model
Google Earth Engine
Three-River Headwaters region
GPP
carbon cycle
arctic
photosynthesis
remote sensing
crop sowing date
development stage
yield gap
yield potential
process-based model
land surface temperature
urban heat island effect
contribution
Hangzhou
land surface phenology
NDVI
spatiotemporal dynamics
different drivers
random forest model
data suitability
satellite data
spatial scaling effects
the Loess Plateau
autumn phenology
turning point
climate changes
human activities
Qinghai-Tibetan Plateau
snow phenology
driving factors
spatiotemporal variations
Northeast China
vegetation indexes
seasonally dry tropical forest
vegetation phenology
climatic limitation
solar-induced chlorophyll fluorescence
enhanced vegetation index
gross primary production
evapotranspiration
water use efficiency
NDPI
Qilian Mountains
snow cover
high elevation
soil moisture
vegetation dynamics
carbon exchange
Persona (resp. second.): JinJiaxin
ZhuXiaolin
ZhouYuke
XieQiaoyun
MaXuanlong
Sommario/riassunto: Land surface phenology (LSP) uses remote sensing to monitor seasonal dynamics in vegetated land surfaces and retrieve phenological metrics (transition dates, rate of change, annual integrals, etc.). LSP has developed rapidly in the last few decades. Both regional and global LSP products have been routinely generated and play prominent roles in modeling crop yield, ecological surveillance, identifying invasive species, modeling the terrestrial biosphere, and assessing impacts on urban and natural ecosystems. Recent advances in field and spaceborne sensor technologies, as well as data fusion techniques, have enabled novel LSP retrieval algorithms that refine retrievals at even higher spatiotemporal resolutions, providing new insights into ecosystem dynamics. Meanwhile, rigorous assessment of the uncertainties in LSP retrievals is ongoing, and efforts to reduce these uncertainties represent an active research area. Open source software and hardware are in development, and have greatly facilitated the use of LSP metrics by scientists outside the remote sensing community. This reprint covers the latest developments in sensor technologies, LSP retrieval algorithms and validation strategies, and the use of LSP products in a variety of fields. It aims to summarize the ongoing diverse LSP developments and boost discussions on future research prospects.
Titolo autorizzato: Remote Sensing of Land Surface Phenology  Visualizza cluster
ISBN: 3-0365-5326-6
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910619465703321
Lo trovi qui: Univ. Federico II
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