We present a data mining technique for the analysis of multichannel oscillatory timeseries data and show an application using poloidal arrays of magnetic sensors installed in the H-1 heliac. The procedure is highly automated, and scales well to large datasets. The timeseries data is split into short time segments to provide time resolution, and each segment is represented by a singular value decomposition (SVD). By comparing power spectra of the temporal singular vectors, related singular values are grouped into subsets which define fluctuation structures. Thresholds for the normalised energy of the fluctuation structure and the normalised entropy of the SVD can be used to filter the dataset. We assume that distinct classes of fluctuations ...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
This study reports one approach for the classification of magnetic storms into recurrent patterns. A...
Abstract—Periodicy detection in time series data is a challenging problem of great importance in man...
A periodic datamining algorithm has been developed and used to extract distinct plasma fluctuations ...
We develop a practical, structured analysis of multi-channel time series measurements where the main...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
More and more, physical systems are being fitted with various kinds of sensors in order to monitor t...
International audienceMultiple signals are measured by sensors during a flight or a test bench and t...
Context. The multiscale entropy assesses the complexity of a signal across different timescales. It ...
Streams of data can be continuously generated by sensors in various real-life applications such as e...
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)Fundação de Amparo à Pesquisa do ...
A new method for analyzing time series data is introduced in this paper. Inspired by data mining, th...
A new method for analyzing time series data is introduced in this paper. Inspired by data mining, th...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
This study reports one approach for the classification of magnetic storms into recurrent patterns. A...
Abstract—Periodicy detection in time series data is a challenging problem of great importance in man...
A periodic datamining algorithm has been developed and used to extract distinct plasma fluctuations ...
We develop a practical, structured analysis of multi-channel time series measurements where the main...
Analysis of Time-Evolving Systems is an important and challenging problem. Although it is a necessar...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
More and more, physical systems are being fitted with various kinds of sensors in order to monitor t...
International audienceMultiple signals are measured by sensors during a flight or a test bench and t...
Context. The multiscale entropy assesses the complexity of a signal across different timescales. It ...
Streams of data can be continuously generated by sensors in various real-life applications such as e...
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)Fundação de Amparo à Pesquisa do ...
A new method for analyzing time series data is introduced in this paper. Inspired by data mining, th...
A new method for analyzing time series data is introduced in this paper. Inspired by data mining, th...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
This study reports one approach for the classification of magnetic storms into recurrent patterns. A...
Abstract—Periodicy detection in time series data is a challenging problem of great importance in man...