In the past decade, numerous datasets have been released with the explicit goal of furthering non-intrusive load monitoring research (NILM). NILM is an energy measurement strategy that seeks to disaggregate building-scale loads. Disaggregation attempts to turn the energy consumption of a building into its constituent appliances. NILM algorithms require representative real-world measurements which has led institutions to publish and share their own datasets. NILM algorithms are designed, trained, and tested using the data presented in a small number of these NILM datasets. Many of the datasets contain arbitrarily selected devices. Likewise, the datasets themselves report aggregate load information from building(s) which are similarly selecte...
Non-intrusive load monitoring, or energy disaggregation, aims to separate household energy consumpti...
When designing and implementing an intelligent energy conservation system for the home, it is essent...
This study describes three different data mining techniques for detecting abnormal lighting energy c...
The aim of this paper is to provide an extended analysis of the outlier detection, using probabilist...
Buildings play a central role in energy transition, as they were responsible for 67.8% of the total ...
Appliance faults in buildings resulting in abnormal energy consumption is known as an anomaly. Tradi...
Nonintrusive load monitoring (NILM) is a method of detecting the current energy consumption of a bui...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
AbstractThis study describes three different data mining techniques for detecting abnormal lighting ...
Buildings are highly energy-consuming and therefore are largely accountable for environmental degrad...
Outdoor measurement campaigns of PV module performance are normally affected by a relatively large n...
Identification of faulty appliance behaviour in real time can signal energy wastage and the need for...
Energy consumption in buildings has steadily increased. Buildings consume more energy than necessary...
Outdoor measurement campaigns of PV module performance are normally affected by a relatively large n...
Despite a dramatic growth of power consumption in households, less attention has been paid to monito...
Non-intrusive load monitoring, or energy disaggregation, aims to separate household energy consumpti...
When designing and implementing an intelligent energy conservation system for the home, it is essent...
This study describes three different data mining techniques for detecting abnormal lighting energy c...
The aim of this paper is to provide an extended analysis of the outlier detection, using probabilist...
Buildings play a central role in energy transition, as they were responsible for 67.8% of the total ...
Appliance faults in buildings resulting in abnormal energy consumption is known as an anomaly. Tradi...
Nonintrusive load monitoring (NILM) is a method of detecting the current energy consumption of a bui...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
AbstractThis study describes three different data mining techniques for detecting abnormal lighting ...
Buildings are highly energy-consuming and therefore are largely accountable for environmental degrad...
Outdoor measurement campaigns of PV module performance are normally affected by a relatively large n...
Identification of faulty appliance behaviour in real time can signal energy wastage and the need for...
Energy consumption in buildings has steadily increased. Buildings consume more energy than necessary...
Outdoor measurement campaigns of PV module performance are normally affected by a relatively large n...
Despite a dramatic growth of power consumption in households, less attention has been paid to monito...
Non-intrusive load monitoring, or energy disaggregation, aims to separate household energy consumpti...
When designing and implementing an intelligent energy conservation system for the home, it is essent...
This study describes three different data mining techniques for detecting abnormal lighting energy c...