International audienceDecarbonizing the grid is recognized worldwide as one of the objectives for the next decades. Its success depends on our ability to massively deploy renewable resources, but to fully benefit from those, grid flexibility is needed. In this paper we put forward the design of a benchmark that will allow for the systematic measurement of demand response programs' effectiveness, information that we do not currently have. Furthermore, we explain how the proposed benchmark will facilitate the use of Machine Learning techniques in grid flexibility applications
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
This paper seeks to identify some of the technology challenges and research opportunities in assessi...
The present study is focused on assessing the impact of the performance of baseline load prediction ...
Over the past decade, computational grids have become a popular computing platform for large-scale, ...
Real-time quantification of residential building energy flexibility is needed to enable a cost-effic...
Grid architectures are collections of computational and data storage resources linked by communicati...
As energy distribution systems evolve from a traditional hierarchical load structure towards distrib...
The global demand for electricity has visualized high growth with the rapid growth in population and...
Application benchmarks can play a key role in analyzing and predicting the performance and scalabili...
One of the most important topics of the last decades has been finding energy sources who can replace...
This white paper introduces the application of advanced data analytics to the modernized grid. In pa...
The global warming as the cause for the expansion of renewable energies, forces the smart grid engin...
Achieving energy flexibility is becoming a key concern for energy system planners that manage interm...
Recent years have seen an increasing interest in Demand Response (DR), as a means to satisfy the gro...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
This paper seeks to identify some of the technology challenges and research opportunities in assessi...
The present study is focused on assessing the impact of the performance of baseline load prediction ...
Over the past decade, computational grids have become a popular computing platform for large-scale, ...
Real-time quantification of residential building energy flexibility is needed to enable a cost-effic...
Grid architectures are collections of computational and data storage resources linked by communicati...
As energy distribution systems evolve from a traditional hierarchical load structure towards distrib...
The global demand for electricity has visualized high growth with the rapid growth in population and...
Application benchmarks can play a key role in analyzing and predicting the performance and scalabili...
One of the most important topics of the last decades has been finding energy sources who can replace...
This white paper introduces the application of advanced data analytics to the modernized grid. In pa...
The global warming as the cause for the expansion of renewable energies, forces the smart grid engin...
Achieving energy flexibility is becoming a key concern for energy system planners that manage interm...
Recent years have seen an increasing interest in Demand Response (DR), as a means to satisfy the gro...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
This paper seeks to identify some of the technology challenges and research opportunities in assessi...