As the effects of climate change are becoming severe, countries need to substantially reduce carbon emissions. Small hydropower (SHP) can be a useful renewable energy source with a high energy density for the reduction of carbon emission. Therefore, it is necessary to revitalize the development of SHP to expand the use of renewable energy. To efficiently plan and utilize this energy source, there is a need to assess the future SHP potential based on an accurate runoff prediction. In this study, the future SHP potential was predicted using a climate change scenario and an artificial neural network model. The runoff was simulated accurately, and the applicability of an artificial neural network to the runoff prediction was confirmed. The resu...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Hydro-power is a widespread source of energy, which currently provides over 60% of total renewable ...
The application of computational fluid dynamics combined with 3D modeling of the hydraulic model was...
In the study area, due to the impact of climate change on hydropower generation and energy demand ha...
The projection of future hydropower generation is extremely important for the sustainable developmen...
This study proposes a climate service named Smart Climate Hydropower Tool (SCHT) and designed as a h...
Hydropower is among the most efficient technologies to produce renewable electrical energy. Hydropow...
A big challenge of sustainable power systems is the integration of climate variability into the oper...
In developing countries, the power production is properly less than the request of power or load, an...
Recently, artificial neural networks (ANNs) have been used successfully for many engineering problem...
Climate change can cause serious problems for future hydropower plant projects and make them less ec...
Hydropower is a clean and efficient technology for producing renewable energy. Assessment and foreca...
The water-energy-carbon nexus elucidates the potential for energy recovery and more sustainable solu...
This paper aims to evaluate two machine learning (ML) algorithms, namely, convolutional neural netwo...
Hydropower reservoir volumes fluctuate as water levels increase or decrease according to precipitati...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Hydro-power is a widespread source of energy, which currently provides over 60% of total renewable ...
The application of computational fluid dynamics combined with 3D modeling of the hydraulic model was...
In the study area, due to the impact of climate change on hydropower generation and energy demand ha...
The projection of future hydropower generation is extremely important for the sustainable developmen...
This study proposes a climate service named Smart Climate Hydropower Tool (SCHT) and designed as a h...
Hydropower is among the most efficient technologies to produce renewable electrical energy. Hydropow...
A big challenge of sustainable power systems is the integration of climate variability into the oper...
In developing countries, the power production is properly less than the request of power or load, an...
Recently, artificial neural networks (ANNs) have been used successfully for many engineering problem...
Climate change can cause serious problems for future hydropower plant projects and make them less ec...
Hydropower is a clean and efficient technology for producing renewable energy. Assessment and foreca...
The water-energy-carbon nexus elucidates the potential for energy recovery and more sustainable solu...
This paper aims to evaluate two machine learning (ML) algorithms, namely, convolutional neural netwo...
Hydropower reservoir volumes fluctuate as water levels increase or decrease according to precipitati...
Machine learning models have been effectively applied to predict certain variable in several enginee...
Hydro-power is a widespread source of energy, which currently provides over 60% of total renewable ...
The application of computational fluid dynamics combined with 3D modeling of the hydraulic model was...