With the rapid urbanization, electrical infrastructure spreads to raw areas without existing loads. How to achieve accurate long-term load forecasts based on land use plans is a realistic problem. On the other hand, load forecasting (LF) should be extended to high spatial resolutions to guide middle- or low-voltage planning and time domain to consider the impacts of distribution generations and diversified users on multi-period system demands. A data-driven bottom-up spatial and temporal LF approach is proposed in this paper to solve these challenges. Land plots are treated as basic LF resolution to describe available multi-attribute data in smart grids and modern cities. Kernel density estimation and adaptive k-means are adopted to aggrega...
During the last four decades various load forecasting methods have been created. However, these meth...
Model-based analysis is assigned a central role in the discussions on how to design the energy syste...
With the advent of smart grid, load forecasting is emerging as an essential technology to implement ...
A method for spatial electric load forecasting using a reduced set of data is presented. The method ...
In view of the influence of large-scale electric vehicle access to the distribution network on spati...
Low growth of electricity load forecast eliminates cost opportunity of electricity sale due to unser...
Electric load forecasting is a field where continuous, rigorous efforts are made to improve models w...
With the high level of city expansion observed during the last few decades, distribution utilities c...
This paper presents a grid-based model that aims to find a suitable spatial resolution to improve vi...
In recent years, electrical load forecasting has received continuous research efforts aiming to impr...
A method for spatial electric load forecasting using elements from evolutionary algorithms is presen...
Short-term residential load forecasting is the precondition of the day-ahead and intra-day schedulin...
The worldwide coronavirus disease 2019 (COVID-19) pandemic has greatly affected the power system ope...
Data analytics in smart grids can be leveraged to channel the data downpour from individual meters i...
In the spatial electric load forecasting, the future land use determination is one of the most impor...
During the last four decades various load forecasting methods have been created. However, these meth...
Model-based analysis is assigned a central role in the discussions on how to design the energy syste...
With the advent of smart grid, load forecasting is emerging as an essential technology to implement ...
A method for spatial electric load forecasting using a reduced set of data is presented. The method ...
In view of the influence of large-scale electric vehicle access to the distribution network on spati...
Low growth of electricity load forecast eliminates cost opportunity of electricity sale due to unser...
Electric load forecasting is a field where continuous, rigorous efforts are made to improve models w...
With the high level of city expansion observed during the last few decades, distribution utilities c...
This paper presents a grid-based model that aims to find a suitable spatial resolution to improve vi...
In recent years, electrical load forecasting has received continuous research efforts aiming to impr...
A method for spatial electric load forecasting using elements from evolutionary algorithms is presen...
Short-term residential load forecasting is the precondition of the day-ahead and intra-day schedulin...
The worldwide coronavirus disease 2019 (COVID-19) pandemic has greatly affected the power system ope...
Data analytics in smart grids can be leveraged to channel the data downpour from individual meters i...
In the spatial electric load forecasting, the future land use determination is one of the most impor...
During the last four decades various load forecasting methods have been created. However, these meth...
Model-based analysis is assigned a central role in the discussions on how to design the energy syste...
With the advent of smart grid, load forecasting is emerging as an essential technology to implement ...