Automated detection of EVs from smart meter data can provide important insights for DSOs about spatiotemporal EV charging patterns. However, smart meters typically provide only hourly measurements of consumption while most load disaggregation techniques require at least minute level data. We use machine and deep learning methods to detect EV signatures in hourly smart meter data. Models are trained and evaluated on labelled data, before being tested on unlabelled field data. While balanced models catch about 75% of EVs at false positive rates of 35%, tuned models detect up to 90% of EVs with 10% false positives. When using models to detect EVs on unlabelled Norwegian smart meter data, detections are in line with EV fractions from the nation...
Smart meters are key elements of a smart grid. These data from Smart Meters can help us analyze ener...
There are tons of motivations for people to move toward EVs. First, it is more economical to use ele...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
Automated detection of EVs from smart meter data can provide important insights for DSOs about spati...
Detecting electrical vehicle (EV) charging from smart meter data (EV detection) is a highly relevant...
By 2019, Norway will complete the national rollout of advanced metering systems (AMS) for all custom...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
Due to the climate crisis, energy-saving issues and carbon reduction have become the top priority fo...
Smart meters give us valuable insight into how electricity is used. However, the value is greatly i...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
The energy landscape for the Low-Voltage (LV) networks is undergoing rapid changes. These changes ar...
Smart cities are envisioned to include million of sensors and devices tied together through the Inte...
Electricity distribution companies have been incorporating new technologies that allow them to obtai...
Technological advancements in ihe field of electrical energy distribution and utilization are revolu...
Smart meters are key elements of a smart grid. These data from Smart Meters can help us analyze ener...
There are tons of motivations for people to move toward EVs. First, it is more economical to use ele...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
Automated detection of EVs from smart meter data can provide important insights for DSOs about spati...
Detecting electrical vehicle (EV) charging from smart meter data (EV detection) is a highly relevant...
By 2019, Norway will complete the national rollout of advanced metering systems (AMS) for all custom...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
Smart meters have become a core part of the Internet of Things, and its sensory network is increasin...
Due to the climate crisis, energy-saving issues and carbon reduction have become the top priority fo...
Smart meters give us valuable insight into how electricity is used. However, the value is greatly i...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
The energy landscape for the Low-Voltage (LV) networks is undergoing rapid changes. These changes ar...
Smart cities are envisioned to include million of sensors and devices tied together through the Inte...
Electricity distribution companies have been incorporating new technologies that allow them to obtai...
Technological advancements in ihe field of electrical energy distribution and utilization are revolu...
Smart meters are key elements of a smart grid. These data from Smart Meters can help us analyze ener...
There are tons of motivations for people to move toward EVs. First, it is more economical to use ele...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...