Load forecasting is one of the major challenges of power system operation and is crucial to the effective scheduling for economic dispatch at multiple time scales. Numerous load forecasting methods have been proposed for household and commercial demand, as well as for loads at various nodes in a power grid. However, compared with conventional loads, the uncoordinated charging of the large penetration of plug-in electric vehicles is different in terms of periodicity and fluctuation, which renders current load forecasting techniques ineffective. Deep learning methods, empowered by unprecedented learning ability from extensive data, provide novel approaches for solving challenging forecasting tasks. This research proposes a comparative study o...
One of the most important research topics in smart grid technology is load forecasting, because accu...
The rapid growth of electric vehicles (EVs) can potentially cause power grids to confront new challe...
The rising popularity of deep learning can largely be attributed to the big data phenomenon, the sur...
Load forecasting is one of the major challenges of power system operation and is crucial to the effe...
Short-term load forecasting is a key task to maintain the stable and effective operation of power sy...
In the current trend of consumption, electricity consumption will become a very high cost for the en...
In recent years, replacing internal combustion engine vehicles with electric vehicles has been a sig...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
Electricity constitutes an indispensable source of secondary energy in modern society. Accurate and ...
One of the most important research topics in smart grid technology is load forecasting, because accu...
The rapid growth of electric vehicles (EVs) can potentially cause power grids to confront new challe...
The rising popularity of deep learning can largely be attributed to the big data phenomenon, the sur...
Load forecasting is one of the major challenges of power system operation and is crucial to the effe...
Short-term load forecasting is a key task to maintain the stable and effective operation of power sy...
In the current trend of consumption, electricity consumption will become a very high cost for the en...
In recent years, replacing internal combustion engine vehicles with electric vehicles has been a sig...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
Transport systems are expected to widely shift towards electric propulsion in the next decade. The d...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
Electricity constitutes an indispensable source of secondary energy in modern society. Accurate and ...
One of the most important research topics in smart grid technology is load forecasting, because accu...
The rapid growth of electric vehicles (EVs) can potentially cause power grids to confront new challe...
The rising popularity of deep learning can largely be attributed to the big data phenomenon, the sur...