Ecohydrological Model for Grassland Lacking Historical Measurements I:
Downscaling Evaporation Data Based on Dynamic Sensitive Parameters and
Deep Learning
Abstract
Key Points: • Ecological and evapotranspiration characteristics of ten
typical vegetation communities in semi-arid steppe were refined and
decomposed. • Sensitive parameters of dynamic evapotranspiration improve
the regional simulation effect. • Deep learning was used to downscale
regional evapotranspiration at the 3-hour scale. Abstract Reports on
ecohydrological models for semi-arid steppe basins with scarce
historical data are rare. To fully understand the ecohydrological
processes in such areas and accurately describe the coupling and mutual
feedback between ecological and hydrological processes, a distributed
ecohydrological model was constructed , which integrates multi-source
information into the MY Ecohydrology (MYEH) model. This paper mainly
describes the evapotranspiration module (Eva module) based on sensitive
parameters and deep learning. Based on multi-source meteorological,
soil, vegetation, and remote sensing data, the historical dynamic
characteristics of ten typical vegetation communities in the semi-arid
steppe are refined in this study and seven evaporation (ET) components
in the Xilin River Basin (XRB) from 1980 to 2018 are simulated. The
results show that the Naive Bayesian model constructed based on the
temperature and three types of surface reflectance can clearly
distinguish between snow-covered or-free conditions. Based on the
refinement of typical vegetation communities, the ET process
characteristics of different vegetation communities in response to
climate change can be determined. Dynamic sensitive parameters
significantly improve the regional ET simulation. Based on the
validation with the Global Land Evaporation Amsterdam Model product and
multiple models in multiple time scales (year, quarter, day, 3 h), a
relatively consistent and reliable ET process 1 was obtained for the XRB
at the 3-hour scale. The uncertainties of adding and dynamizing more ET
process parameters and adjusting the algorithm structure must be further
studied.