Researchers develop deep

sport2024-05-20 07:36:21383

Chinese researchers have proposed a novel hybrid deep-learning model to address streamflow forecasting for water catchment areas at a global scale, with a view to improving flood prediction, according to a recent research article published in the journal The Innovation.

Streamflow and flood forecasting remains one of the long-standing challenges in hydrology. Traditional physically based models are hampered by sparse parameters and complex calibration procedures particularly in ungauged catchments.

More than 95 percent of small and medium-sized water catchments in the world lack monitoring data, according to the Chinese Academy of Sciences (CAS).

Researchers from the Institute of Mountain Hazards and Environment of the CAS used the datasets of more than 2,000 catchments around the world to conduct model training in order to cope with streamflow forecasting at a global scale for all gauged and ungauged catchments.

The distribution of these catchments was significantly different, ensuring the diversity of data.

The results show that the forecasting accuracy of the model was higher than traditional hydrological models and other AI models.

The study demonstrated the potential of deep-learning methods to overcome the lack of hydrologic data and deficiencies in physical model structure and parameterization, the research article noted.

Address of this article:http://caymanislands.fightbigfood.org/article-54f899114.html

Popular

Elon Musk arrives in Indonesia's Bali to launch Starlink satellite internet service

3D printed storage box to further propel China's lunar mission

Hongqimen bridge under construction in Guangdong

Book on Xi's Thought on Boosting China's Strength in Cyberspace Published

EU changes pace on migration and asylum policy

China to promote steady growth in consumption and foreign trade, and stabilize economic fundamentals

Polar icebreaker Xuelong 2 receives warm welcome in Hong Kong

Construction of mainland

LINKS