Your current location:HOME >entertainment >Researchers develop deep 正文
TIME:2024-05-08 23:17:26 Source: Internet compilationEdit:entertainment
Chinese researchers have proposed a novel hybrid deep-learning model to address streamflow forecasti
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.
Roundup: Foreign Leaders, Scholars Mourn Former Chinese Leader Jiang2024-05-08 23:10
There's the Wallys! Darts fans brawl in the crowd2024-05-08 23:05
Video shows Victim Support worker 'bragging' about smacking his children2024-05-08 22:58
Sergio Aguero's iconic title2024-05-08 22:36
Xi Stresses Enhancing Integrated National Strategies, Strategic Capabilities2024-05-08 22:34
PLAYER RATINGS: Scores revealed for DIRE Liverpool stars who flopped in first leg against Atalanta2024-05-08 22:11
Conor McGregor hails Dana White after the UFC president announced post2024-05-08 21:35
Sheffield United face two2024-05-08 20:55
Xi's Overseas Trip Demonstrates China's Commitment to Global Growth, Governance2024-05-08 20:45
Thierry Henry blames Declan Rice for Bayern Munich's opener at the Emirates2024-05-08 20:32
Xi, Peng Liyuan Meet with Thai King Maha Vajiralongkorn, Queen Suthida2024-05-08 23:13
Scary Movie is back! Franchise will be rebooted 11 years after Scary Movie 5 was released2024-05-08 22:33
Football's ultimate big2024-05-08 22:25
Kyle Richards rocks a tuxedo while ex2024-05-08 21:56
Xi Attends Welcoming Ceremony Held by Saudi Arabia's Crown Prince2024-05-08 21:40
Ai Weiwei launches new exhibit, says still trying to understand studio demolitions2024-05-08 21:23
BBC announce Tom Hiddleston is set to return to The Night Manager for two more series2024-05-08 21:22
Italian press revels in Atalanta's shock 32024-05-08 21:10
China secures Paris women's epee berth with World Cup silver2024-05-08 20:58
Lauren Sanchez turns heads with figure2024-05-08 20:45