The introduction of Advanced Metering Infrastructures in electricity networks brings new means of dealing with issues influencing financial margins and system-safety problems, thanks to the information reported continuously by smart meters. Such an issue is the detection of Non-Technical Losses (NTLs) in electric power grids. We introduce a data-driven method, called Structure&Detect, to identify possible sources of NTLs; the method is based on spectral analysis of structural periodic patterns in consumption traces, that allows for scalable processing, using features in the frequency domain. Structure&Detect uses only on consumption traces, with no need for exogenous data about customers (e.g., trust or credit history) or explicit informati...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
Electricity losses are a frequently appearing problem in power grids. Non-technical losses (NTL) app...
Summarization: Tracking end-users' usage patterns can enable more accurate demand forecasting and th...
Non technical losses (NTL) detection plays a crucial role in protecting the security of smart grids....
Many electric utilities currently have a low level of smart meter implementation on traditional dist...
The advent and progressive deployment of the so-called Smart Grid has unleashed a profitable portfol...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
International audienceA smart grid is an electrical network enabling a two-way flow of both data and...
Smart meters are progressively deployed to replace its antiquated predecessor to measure and monitor...
Electricity losses are a frequently appearing problem in power grids. Non-technical losses (NTL) app...
The utility providers are estimated to lose billions of dollars annually due to energy theft. Althou...
Detection of non-technical losses (NTL) which include electricity theft, faulty meters or billing er...
Advanced metering infrastructure (AMI) is a component of electrical networks that combines the energ...
Non-Technical Losses (NTL) represent a serious concern for electric companies. These losses are resp...
The current study uses a data-driven method for Nontechnical Loss (NTL) detection using smart meter ...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
Electricity losses are a frequently appearing problem in power grids. Non-technical losses (NTL) app...
Summarization: Tracking end-users' usage patterns can enable more accurate demand forecasting and th...
Non technical losses (NTL) detection plays a crucial role in protecting the security of smart grids....
Many electric utilities currently have a low level of smart meter implementation on traditional dist...
The advent and progressive deployment of the so-called Smart Grid has unleashed a profitable portfol...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
International audienceA smart grid is an electrical network enabling a two-way flow of both data and...
Smart meters are progressively deployed to replace its antiquated predecessor to measure and monitor...
Electricity losses are a frequently appearing problem in power grids. Non-technical losses (NTL) app...
The utility providers are estimated to lose billions of dollars annually due to energy theft. Althou...
Detection of non-technical losses (NTL) which include electricity theft, faulty meters or billing er...
Advanced metering infrastructure (AMI) is a component of electrical networks that combines the energ...
Non-Technical Losses (NTL) represent a serious concern for electric companies. These losses are resp...
The current study uses a data-driven method for Nontechnical Loss (NTL) detection using smart meter ...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
Electricity losses are a frequently appearing problem in power grids. Non-technical losses (NTL) app...
Summarization: Tracking end-users' usage patterns can enable more accurate demand forecasting and th...