Seminar: Christian Reimers
Institutsseminar
- Datum: 16.11.2023
- Uhrzeit: 14:00
- Vortragende(r): Christian Reimers
- (Reichstein department)
- Raum: Hörsaal (C0.001)
Modeling the Plant Phenology in Deciduous Broadleaf Forests using Explainable Artificial Intelligence
Understanding
the future climate is crucial for informed policy decisions on climate
change prevention and mitigation. Earth system models play an important
role in predicting future climate, requiring accurate representation of
complex sub-processes
that span multiple time scales and spatial scales. One such process
that links seasonal and interannual climate variability to cyclical
biological events is tree phenology in deciduous forests. Phenological
dates, such as the start andend
of the growing season, are critical for understanding the exchange of
carbon and water between the biosphere and the atmosphere. Mechanistic
prediction of these dates is challenging. Hybrid modelling, which
integrates data-driven approaches into complex models, offers a
solution. In this work, as a first step towards this goal, train a deep
neural network to predict a phenological index from meteorological time
series. We find that this approach outperforms traditional process-based
models. This highlights the potential of data-driven methods to improve
climate predictions. We also analyze which variables and aspects of the
time series influence the predicted onset of the season, in order to
gain a better understanding of the advantages and limitations of our
model.