Buildings play a central role in energy transition, as they were responsible for 67.8% of the total consumption of electricity in France in 2017. Because of that, detecting anomalies (outliers) is crucial in order to identify both potential opportunities to reduce energy consumption and malfunctioning of the metering system. This work aims to compare the performance of several outlier detection methods, such as classical statistical methods (as boxplots) applied to the actual measurements and to the difference between the measurements and their predictions, in the task of detecting outliers in the power consumption data of a tertiary building located in France. The results show that the combination of a regression method, such as random for...
Electrical Load data are stored in each time interval generating big databases with high dimensional...
This study describes three different data mining techniques for detecting abnormal lighting energy c...
There is an increasing need for automated fault detection tools in buildings. The total energy reque...
The aim of this paper is to provide an extended analysis of the outlier detection, using probabilist...
In this paper, we propose an intelligent data-analysis method for modeling and prediction of daily e...
Anomaly detection in power consumption is one of the major challenges faced by the modern world in r...
In the past years both companies and academics communities pulled their efforts in generating input ...
Buildings are highly energy-consuming and therefore are largely accountable for environmental degrad...
The occurrence of outliers in real-world phenomena is quite usual. If these anomalous data are not p...
The aim of this project was to develop an automated tool which can help monitoring agents to identif...
AbstractThis study describes three different data mining techniques for detecting abnormal lighting ...
In the past decade, numerous datasets have been released with the explicit goal of furthering non-in...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
Despite a dramatic growth of power consumption in households, less attention has been paid to monito...
Presently, households and buildings use almost one-third of total energy consumption among all the p...
Electrical Load data are stored in each time interval generating big databases with high dimensional...
This study describes three different data mining techniques for detecting abnormal lighting energy c...
There is an increasing need for automated fault detection tools in buildings. The total energy reque...
The aim of this paper is to provide an extended analysis of the outlier detection, using probabilist...
In this paper, we propose an intelligent data-analysis method for modeling and prediction of daily e...
Anomaly detection in power consumption is one of the major challenges faced by the modern world in r...
In the past years both companies and academics communities pulled their efforts in generating input ...
Buildings are highly energy-consuming and therefore are largely accountable for environmental degrad...
The occurrence of outliers in real-world phenomena is quite usual. If these anomalous data are not p...
The aim of this project was to develop an automated tool which can help monitoring agents to identif...
AbstractThis study describes three different data mining techniques for detecting abnormal lighting ...
In the past decade, numerous datasets have been released with the explicit goal of furthering non-in...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
Despite a dramatic growth of power consumption in households, less attention has been paid to monito...
Presently, households and buildings use almost one-third of total energy consumption among all the p...
Electrical Load data are stored in each time interval generating big databases with high dimensional...
This study describes three different data mining techniques for detecting abnormal lighting energy c...
There is an increasing need for automated fault detection tools in buildings. The total energy reque...