In view of the success of machine learning based prediction algorithms in the recent years, in this study, we have employed a selection of these algorithms on some time series prediction problems in the context of smart grid. We have used real world data from the UCLA campus solar PV panels and parking lots. In the process of applying these algorithms on the Electric Vehicle (EV) charging load prediction problem, two new prediction algorithms have been proposed, namely Modified Pattern Sequence Forecasting (MPSF) and Time Weighted Dot Product Nearest Neighbor (TWDP NN). One of the objectives when predicting the EV charging load is speed of prediction since it is intended to be used in a real time application (smartphone application for EV c...
This study assesses the performance of a multivariate multi-step charging load prediction approach b...
The state of charge (SOC) prediction for an electric vehicle battery pack is critical to ensure the ...
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...
As a key pillar of smart transportation in smart city applications, electric vehicles (EVs) are beco...
Load forecasting is one of the major challenges of power system operation and is crucial to the effe...
Electric vehicles (EVs) penetration growth is essential to reduce transportation-related local pollu...
To be able to schedule the charging demand of an electric vehicle fleet using smart charging, insigh...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
In recent years, Photovoltaic System (PV) have been installed in parking lots in order to provide th...
Due to the finite nature and detrimental environmental impacts of conventional fossil-fuel energy re...
The rapid growth of electric vehicles (EVs) is likely to endanger the current power system. Forecast...
In recent years, the supply of electric vehicles, which are eco-friendly cars that use electric ener...
Short-term load forecasting is a key task to maintain the stable and effective operation of power sy...
The increasing adoption of electric vehicles poses new problems for the electrical distribution netw...
This study assesses the performance of a multivariate multi-step charging load prediction approach b...
The state of charge (SOC) prediction for an electric vehicle battery pack is critical to ensure the ...
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...
As a key pillar of smart transportation in smart city applications, electric vehicles (EVs) are beco...
Load forecasting is one of the major challenges of power system operation and is crucial to the effe...
Electric vehicles (EVs) penetration growth is essential to reduce transportation-related local pollu...
To be able to schedule the charging demand of an electric vehicle fleet using smart charging, insigh...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
In recent years, Photovoltaic System (PV) have been installed in parking lots in order to provide th...
Due to the finite nature and detrimental environmental impacts of conventional fossil-fuel energy re...
The rapid growth of electric vehicles (EVs) is likely to endanger the current power system. Forecast...
In recent years, the supply of electric vehicles, which are eco-friendly cars that use electric ener...
Short-term load forecasting is a key task to maintain the stable and effective operation of power sy...
The increasing adoption of electric vehicles poses new problems for the electrical distribution netw...
This study assesses the performance of a multivariate multi-step charging load prediction approach b...
The state of charge (SOC) prediction for an electric vehicle battery pack is critical to ensure the ...
In recent years, replacing internal combustion engine vehicles with electric vehicles has been a sig...