peer reviewedIn this paper we propose a methodology based on supervised automatic learning in order to classify the behaviour of generators in terms of their performance in providing primary frequency control ancillary services. The problem is posed as a time-series classification problem, and handled by using state-of- the-art supervised learning methods such as ensembles of decision trees and support-vector machines combined with several preprocessing techniques. The method was designed in the context of the Belgian system and is validated on real-life data composed of more than 600 time-series recorded on this system
A concept of linearly graded statistical models for analogue performance evaluation is proposed and ...
This paper focuses on classifying Radio Frequency transmitters depending on their Radiofrequencyimpe...
Statistically based classification systems need to be trained on a large number of training data in ...
The article studies and develops the methods for assessing the degree of participation of power plan...
peer reviewedIn this paper, a temporal machine learning method is presented which is able to automat...
Power systems must maintain the frequency within acceptable limits when subjected to a disturbance. ...
For a number of years, the frequency quality has been decreasing in the Nordic synchronous area. The...
The field of radio frequency interference (RFI) flagging involves the identification of corrupted da...
The electric grid is undergoing a major transition from fossil fuel-based power generation to renewa...
Within this survey an approach is presented for the simultaneous online identification and localizat...
This paper proposes a autocorrelation-based method to classify traffic patterns of primary channels ...
A new method of fault analysis and detection by signal classification in industrial frequency conver...
Power system balancing authorities are routinely affected by sudden frequency fluctuations. These fr...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
Power quality (PQ) is an increasing concern in the distribution networks of modern industrialized co...
A concept of linearly graded statistical models for analogue performance evaluation is proposed and ...
This paper focuses on classifying Radio Frequency transmitters depending on their Radiofrequencyimpe...
Statistically based classification systems need to be trained on a large number of training data in ...
The article studies and develops the methods for assessing the degree of participation of power plan...
peer reviewedIn this paper, a temporal machine learning method is presented which is able to automat...
Power systems must maintain the frequency within acceptable limits when subjected to a disturbance. ...
For a number of years, the frequency quality has been decreasing in the Nordic synchronous area. The...
The field of radio frequency interference (RFI) flagging involves the identification of corrupted da...
The electric grid is undergoing a major transition from fossil fuel-based power generation to renewa...
Within this survey an approach is presented for the simultaneous online identification and localizat...
This paper proposes a autocorrelation-based method to classify traffic patterns of primary channels ...
A new method of fault analysis and detection by signal classification in industrial frequency conver...
Power system balancing authorities are routinely affected by sudden frequency fluctuations. These fr...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
Power quality (PQ) is an increasing concern in the distribution networks of modern industrialized co...
A concept of linearly graded statistical models for analogue performance evaluation is proposed and ...
This paper focuses on classifying Radio Frequency transmitters depending on their Radiofrequencyimpe...
Statistically based classification systems need to be trained on a large number of training data in ...