This paper proposes a multimodal deep learning method for forecasting the daily power generation of small hydropower stations that considers the temporal and spatial distribution of precipitation, which compensates for the shortcomings of traditional forecasting methods that do not consider differences in the spatial distribution of precipitation. First, the actual precipitation values measured by ground weather stations and the spatial distribution of precipitation observed by meteorological satellite remote sensing are used to complete the missing precipitation data through linear interpolation, and the gridded precipitation data covering a group of small hydropower stations are constructed. Then, considering the time lag between changes ...
Meteorological events constantly affect human life, especially the occurrence of excessive precipita...
Despite satellite-based precipitation products (SPPs) providing a worldwide span with a high spatial...
Combining actual conditions, power demand forecasting is affected by various uncertain factors such ...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
In order to reduce the cost of data transmission, the meter data management system (MDMS) of the pow...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
A big challenge of sustainable power systems is the integration of climate variability into the oper...
The Yunnan province of China is a typical humid region but with several severe region-wide droughts....
In recent years, many countries have provided promotion policies related to renewable energy in orde...
Satellite remote sensing precipitation is useful for many hydrological and meteorological applicatio...
Precipitation as the meteorological data is closely related to human life. For this reason, we hope ...
This study proposes a climate service named Smart Climate Hydropower Tool (SCHT) and designed as a h...
The prediction of wind power plays an indispensable role in maintaining the stability of the entire ...
Meteorological events constantly affect human life, especially the occurrence of excessive precipita...
Despite satellite-based precipitation products (SPPs) providing a worldwide span with a high spatial...
Combining actual conditions, power demand forecasting is affected by various uncertain factors such ...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
In order to reduce the cost of data transmission, the meter data management system (MDMS) of the pow...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
A big challenge of sustainable power systems is the integration of climate variability into the oper...
The Yunnan province of China is a typical humid region but with several severe region-wide droughts....
In recent years, many countries have provided promotion policies related to renewable energy in orde...
Satellite remote sensing precipitation is useful for many hydrological and meteorological applicatio...
Precipitation as the meteorological data is closely related to human life. For this reason, we hope ...
This study proposes a climate service named Smart Climate Hydropower Tool (SCHT) and designed as a h...
The prediction of wind power plays an indispensable role in maintaining the stability of the entire ...
Meteorological events constantly affect human life, especially the occurrence of excessive precipita...
Despite satellite-based precipitation products (SPPs) providing a worldwide span with a high spatial...
Combining actual conditions, power demand forecasting is affected by various uncertain factors such ...