TY - JOUR
T1 - Sub-seasonal soil moisture anomaly forecasting using combinations of deep learning, based on the reanalysis soil moisture records
AU - Wang, Xiaoyi
AU - Corzo, Gerald
AU - Lü, Haishen
AU - Zhou, Shiliang
AU - Mao, Kangmin
AU - Zhu, Yonghua
AU - Duarte, Santiago
AU - Liu, Mingwen
AU - Su, Jianbin
PY - 2024
Y1 - 2024
N2 - Sub-seasonal drought forecasting is crucial for early warning in estimating agricultural production and optimizing irrigation management, as forecasting skills are relatively weak during this period. Soil moisture exhibits stronger persistence compared to other climate system quantities, which makes it especially influential in shaping land-atmosphere feedback, thus supplying a unique insight into drought forecasting. Relying on the soil moisture memory, this study investigates the combination of multiple deep-learning modules for sub-seasonal drought indices hindcast in the Huai River basin of China, using long-term ERA5-Land soil moisture records with a noise-assisted data analysis tool. The inter-compared deep-learning models include a hybrid model and a committee machine framework. The results show that the performance of the committee machine framework can be improved with the help of series decomposition and the forecasting skill is not impaired with the lead time increases. Overall, this study highlights the potential of combining deep-learning models with soil moisture memory analysis to improve sub-seasonal drought forecasting.
AB - Sub-seasonal drought forecasting is crucial for early warning in estimating agricultural production and optimizing irrigation management, as forecasting skills are relatively weak during this period. Soil moisture exhibits stronger persistence compared to other climate system quantities, which makes it especially influential in shaping land-atmosphere feedback, thus supplying a unique insight into drought forecasting. Relying on the soil moisture memory, this study investigates the combination of multiple deep-learning modules for sub-seasonal drought indices hindcast in the Huai River basin of China, using long-term ERA5-Land soil moisture records with a noise-assisted data analysis tool. The inter-compared deep-learning models include a hybrid model and a committee machine framework. The results show that the performance of the committee machine framework can be improved with the help of series decomposition and the forecasting skill is not impaired with the lead time increases. Overall, this study highlights the potential of combining deep-learning models with soil moisture memory analysis to improve sub-seasonal drought forecasting.
KW - Committee model
KW - Deep learning
KW - Drought forecasting
KW - Noise-assisted tool
KW - Reanalysis soil moisture
UR - http://www.scopus.com/inward/record.url?scp=85187666625&partnerID=8YFLogxK
U2 - 10.1016/j.agwat.2024.108772
DO - 10.1016/j.agwat.2024.108772
M3 - Article
AN - SCOPUS:85187666625
SN - 0378-3774
VL - 295
JO - Agricultural Water Management
JF - Agricultural Water Management
M1 - 108772
ER -