Distributed monitoring sensor networks are used in an ever increasing number of applications, particularly with the advent of IoT technologies. This has led to a growing demand for unconventional analytical tools to cope with a large amount of different signals. In this scenario, the modeling of time series in similar groups represents an interesting area especially for feature subset selection (FSS) purposes. Methods based on clustering algorithms are very promising for FSS, but in their original form they are unsuitable to manage the complexity of temporal dynamics in time series. In this paper we propose a clustering approach, based on complex network analysis, for the unsupervised FSS of time series in sensor networks. We used natural v...
Timeseries partitioning is an essential step in most machine-learning driven, sensor-based IoT appli...
In order to cope with system complexity and dynamic environments, modern industries are investing in...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
Large-scale Cyber-Physical Systems (CPSs) are information systems that involve a vast network of sen...
Event detection is a critical task in many important ap-plications of wireless sensor networks, espe...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Wireless sensor networks are widely used in environmental monitoring. The number of sensor nodes to ...
International audienceThe use of wireless sensor networks, which are the key ingredient in the growi...
With the increase in the usage of sensors to collect data, there has been a large increase in the nu...
Wireless sensor networks are widely used in environmental monitoring. The number of sensor nodes to ...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
We propose a new method to derive complex networks from time series data. Each data point in the tim...
Querying a sensor network requires the acquisition from sensors of measurements describing the state...
Journal ArticleSystem identification involves identification of a behavioral model that best explain...
Timeseries partitioning is an essential step in most machine-learning driven, sensor-based IoT appli...
In order to cope with system complexity and dynamic environments, modern industries are investing in...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...
Large-scale Cyber-Physical Systems (CPSs) are information systems that involve a vast network of sen...
Event detection is a critical task in many important ap-plications of wireless sensor networks, espe...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Wireless sensor networks are widely used in environmental monitoring. The number of sensor nodes to ...
International audienceThe use of wireless sensor networks, which are the key ingredient in the growi...
With the increase in the usage of sensors to collect data, there has been a large increase in the nu...
Wireless sensor networks are widely used in environmental monitoring. The number of sensor nodes to ...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
This paper proposes a method for clustering of time series, based upon the ability of deep Reservoir...
We propose a new method to derive complex networks from time series data. Each data point in the tim...
Querying a sensor network requires the acquisition from sensors of measurements describing the state...
Journal ArticleSystem identification involves identification of a behavioral model that best explain...
Timeseries partitioning is an essential step in most machine-learning driven, sensor-based IoT appli...
In order to cope with system complexity and dynamic environments, modern industries are investing in...
The aerospace industry develops prognosis and health management algorithms to ensure better safety o...