TY - JOUR
T1 - Informing grassland ecosystem modeling with in-situ and remote sensing observations
AU - Arteaga, Johny
AU - Hartman, Melannie D.
AU - Parton, William J.
AU - Chen, Maosi
AU - Gao, Wei
N1 - Publisher Copyright:
© 2025 The Author(s). Published by IOP Publishing Ltd.
PY - 2025/3/1
Y1 - 2025/3/1
N2 - We simulated historical grassland aboveground plant productivity (ANPP) across the midwestern and western contiguous United States using the DayCent-UV ecosystem model. For this study we developed new methods for informing DayCent-UV of growing season length and validating its plant productivity estimates for grasslands by utilizing a wide range of data sources at multiple scales, from field observations to remotely sensed satellite data. The model’s phenology was informed by the MODIS MCD12Q2 product, which showed good agreement with in-situ observations of growing season commencement and duration across different grassland ecosystems, and with observed historical trends. Model results from each simulated grid cell were compared to a remote-sensing estimate of grassland plant productivity offered by the Rangeland Analysis Platform (RAP). We determined that a modified RAP ANPP calculation that incorporated total annual precipitation instead of mean annual temperature to estimate the fraction of total productivity allocated to roots improved temporal correlations between RAP and field measurements and between RAP and DayCent-UV, We found that RAP provides a valuable data set for evaluating grassland ANPP predictions from ecosystem and other types of models because it provides estimates of grassland plant productivity over large spatial regions and a long historical period and captures temporal variablilty in plant production. This work provides the foundation for using the DayCent-UV model to predict climate change impacts on grassland cecosystem dynamics in the contiguous US.
AB - We simulated historical grassland aboveground plant productivity (ANPP) across the midwestern and western contiguous United States using the DayCent-UV ecosystem model. For this study we developed new methods for informing DayCent-UV of growing season length and validating its plant productivity estimates for grasslands by utilizing a wide range of data sources at multiple scales, from field observations to remotely sensed satellite data. The model’s phenology was informed by the MODIS MCD12Q2 product, which showed good agreement with in-situ observations of growing season commencement and duration across different grassland ecosystems, and with observed historical trends. Model results from each simulated grid cell were compared to a remote-sensing estimate of grassland plant productivity offered by the Rangeland Analysis Platform (RAP). We determined that a modified RAP ANPP calculation that incorporated total annual precipitation instead of mean annual temperature to estimate the fraction of total productivity allocated to roots improved temporal correlations between RAP and field measurements and between RAP and DayCent-UV, We found that RAP provides a valuable data set for evaluating grassland ANPP predictions from ecosystem and other types of models because it provides estimates of grassland plant productivity over large spatial regions and a long historical period and captures temporal variablilty in plant production. This work provides the foundation for using the DayCent-UV model to predict climate change impacts on grassland cecosystem dynamics in the contiguous US.
KW - DayCent ecosystem modeling
KW - Rangeland Analysis Platform
KW - long-term ANPP comparisons
UR - https://www.scopus.com/pages/publications/85218150165
U2 - 10.1088/1748-9326/adb04f
DO - 10.1088/1748-9326/adb04f
M3 - 文章
AN - SCOPUS:85218150165
SN - 1748-9326
VL - 20
JO - Environmental Research Letters
JF - Environmental Research Letters
IS - 3
M1 - 034004
ER -