With the advancement of technology and science, the power system is getting more intelligent and flexible, and the way people use electric energy in their daily lives is changing. Monitoring the condition of electrical energy loads, particularly in the early detection of aberrant loads and behaviors, is critical for power grid maintenance and power theft detection. In this paper, we combine the widely used deep learning model Transformer with the clustering approach K-means to estimate power consumption over time and detect anomalies. The Transformer model is used to forecast the following hour’s power usage, and the K-means clustering method is utilized to optimize the prediction results, finally, the anomalies is detected by comparing the...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
Based on high dimensional random matrix theory and machine learning algorithm, a method to detect ab...
Power big data-based artificial intelligence or data mining methods, which can be used to analyze el...
International audienceAnomalies are patterns in data that do not follow the expected behaviour and t...
Electricity usage has been increasing globally in recent years, primarily as a result of population ...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
The demand on the electricity supply is rising up day by day in proportion to the power usage and g...
Power has become an essential element of daily life in the modern world. At the same time, over usag...
Electricity demand is increasing proportionally to the increase in power usage. Without a doubt, ene...
With the increase of energy demand, energy wasteful behavior is inevitable. To reduce energy waste, ...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
Household power load forecasting plays an important role in the operation and planning of power grid...
Due to the climate crisis, energy-saving issues and carbon reduction have become the top priority fo...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
Based on high dimensional random matrix theory and machine learning algorithm, a method to detect ab...
Power big data-based artificial intelligence or data mining methods, which can be used to analyze el...
International audienceAnomalies are patterns in data that do not follow the expected behaviour and t...
Electricity usage has been increasing globally in recent years, primarily as a result of population ...
Electricity loss minimization is one of the major issues the service providers are facing, which nee...
The demand on the electricity supply is rising up day by day in proportion to the power usage and g...
Power has become an essential element of daily life in the modern world. At the same time, over usag...
Electricity demand is increasing proportionally to the increase in power usage. Without a doubt, ene...
With the increase of energy demand, energy wasteful behavior is inevitable. To reduce energy waste, ...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
Household power load forecasting plays an important role in the operation and planning of power grid...
Due to the climate crisis, energy-saving issues and carbon reduction have become the top priority fo...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
The purpose of this thesis is to investigate how data from a residential property owner can be utili...
Based on high dimensional random matrix theory and machine learning algorithm, a method to detect ab...
Power big data-based artificial intelligence or data mining methods, which can be used to analyze el...