Rapid growth in smart meter installations has given rise to vast collections of data at a high time-resolution and down to an individual level. However, to enable efficient policy interventions, we need to be able to appropriately segment the population of users. The aim of this paper is to consider challenges and opportunities associated with large highly-granular temporal datasets that describe residential electricity consumption. In particular, the focus is on experiments relating to aggregation of smart meter time-series data in the context of clustering and prediction tasks that are often used for customer targeting and to gain insight on energy-use about sub populations. To cluster energy use profiles, we propose a novel framework bas...
Changes in the UK electricity market mean that domestic users will be required to modify their usag...
Abstract Smart meter stores electricity consumption data of every consumer in the smart grid system....
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
The large amount of data collected by smart meters is a valuable resource that can be used to better...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
Researching the dynamics of energy consumption at finely resolved timescales is increasingly practic...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
Researching the dynamics of residential electricity consumption at finely-resolved timescales is inc...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
Debates over the future of the UK's traditional decadal census have led to the exploration of supple...
Changes in the UK electricity market mean that domestic users will be required to modify their usag...
Abstract Smart meter stores electricity consumption data of every consumer in the smart grid system....
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
The large amount of data collected by smart meters is a valuable resource that can be used to better...
There is growing interest in discerning behaviors of electricity users in both the residential and c...
Researching the dynamics of energy consumption at finely resolved timescales is increasingly practic...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
Researching the dynamics of residential electricity consumption at finely-resolved timescales is inc...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
Debates over the future of the UK's traditional decadal census have led to the exploration of supple...
Changes in the UK electricity market mean that domestic users will be required to modify their usag...
Abstract Smart meter stores electricity consumption data of every consumer in the smart grid system....
This paper presents a new method for forecasting a load of individual electricity consumers using sm...