This study presents how to improve the short-term forecast of photovoltaic plant's output power by applying the Long Short-Term Memory, LSTM, neural networks for industrial-scale solar power plants in Vietnam under possible curtailment operation. Since the actual output power does not correspond to the available power, new techniques (Global Horizontal Irradiance - GHI interval division, P/GHI factor addition (P - Power)) have been designed and applied for processing errors and missing data. The prediction model (LSTM network, structure of hidden layers, number of nodes) has been developed by the authors in a previous work. In this new version of the model, the training technique is improved by using validation and experiments to determine ...
In order to reduce the cost of data transmission, the meter data management system (MDMS) of the pow...
6th IEEE International Energy Conference (IEEE ENERGYCON) - Energy Transition for Developing Smart S...
In this paper, a simple but accurate approach for short-term forecasting of the power produced by a ...
This paper proposes a new model for short-term forecasting power generation capacity of large-scale ...
This paper aims to forecast the photovoltaic power, which is beneficial for grid planning which aids...
This paper aims to forecast the photovoltaic power, which is beneficial for grid planmng which aids ...
The penetration of renewable energies has increased during the last decades since it has become an e...
Increasing integration of renewable energy sources, like solar photovoltaic (PV), necessitates the d...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
Solar photovoltaic power generation is more and more popular in recent year. However, when solar PV ...
Deep learning has proven to be a valued contributor to recent technological advancements within ener...
The intermittence and fluctuation character of solar irradiance places severe limitations on most of...
Solar energy is one of the most promising renewable energy sources for electricity generation due ...
The fact that countries have increased the use of renewable energy resources in order to meet increa...
This study introduces a long short-term memory (LSTM) neural network model to forecast the freshwate...
In order to reduce the cost of data transmission, the meter data management system (MDMS) of the pow...
6th IEEE International Energy Conference (IEEE ENERGYCON) - Energy Transition for Developing Smart S...
In this paper, a simple but accurate approach for short-term forecasting of the power produced by a ...
This paper proposes a new model for short-term forecasting power generation capacity of large-scale ...
This paper aims to forecast the photovoltaic power, which is beneficial for grid planning which aids...
This paper aims to forecast the photovoltaic power, which is beneficial for grid planmng which aids ...
The penetration of renewable energies has increased during the last decades since it has become an e...
Increasing integration of renewable energy sources, like solar photovoltaic (PV), necessitates the d...
The intermittence and fluctuation of photovoltaic power generation seriously affect output power rel...
Solar photovoltaic power generation is more and more popular in recent year. However, when solar PV ...
Deep learning has proven to be a valued contributor to recent technological advancements within ener...
The intermittence and fluctuation character of solar irradiance places severe limitations on most of...
Solar energy is one of the most promising renewable energy sources for electricity generation due ...
The fact that countries have increased the use of renewable energy resources in order to meet increa...
This study introduces a long short-term memory (LSTM) neural network model to forecast the freshwate...
In order to reduce the cost of data transmission, the meter data management system (MDMS) of the pow...
6th IEEE International Energy Conference (IEEE ENERGYCON) - Energy Transition for Developing Smart S...
In this paper, a simple but accurate approach for short-term forecasting of the power produced by a ...