We present a system to analyze time-series data in sensor networks. Our approach supports exploratory tasks for the comparison of univariate, geo-referenced sensor data, in particular for anomaly detection. We split the recordings into fixed-length patterns and show them in order to compare them over time and space using two linked views. Apart from geo-based comparison across sensors we also support different temporal patterns to discover seasonal effects, anomalies and periodicities. The methods we use are best practices in the information visualization domain. They cover the daily, the weekly and seasonal and patterns of the data. Daily patterns can be analyzed in a clustering-based view, weekly patterns in a calendar-based view and seas...
Diagnosing a large-scale sensor network is a crucial but challenging task. Particular challenges inc...
With the increasing capabilities of measurement devices and computing machines, the amount of record...
As we move into the big data era, data grows not just in size, but also in complexity, containing a ...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
spatial network topology view temporal patterns of nodes ' properties anomaly options (types an...
Monitoring computer networks often includes gathering vast amounts of time-series data from thousand...
Anomaly detection and change analysis are challenging tasks in stream data mining. We illustrate a n...
International audienceMonitoring and analyzing sensor networks is essential for exploring energy con...
In this paper, we present visual-interactive techniques for revealing relations between two co-exist...
In this paper, we present visual-interactive techniques for revealing relations between two co-exist...
We seek to detect statistically significant temporal or spatial changes in either the underlying pro...
Diagnosing a large-scale sensor network is a crucial but challenging task due to the spatiotemporall...
In this report we illustrate how a number of data analysis methods can be used to monitor data from ...
Sensor networks generate substantial amounts of frequently updated, highly dynamic data that are tra...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Diagnosing a large-scale sensor network is a crucial but challenging task. Particular challenges inc...
With the increasing capabilities of measurement devices and computing machines, the amount of record...
As we move into the big data era, data grows not just in size, but also in complexity, containing a ...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
spatial network topology view temporal patterns of nodes ' properties anomaly options (types an...
Monitoring computer networks often includes gathering vast amounts of time-series data from thousand...
Anomaly detection and change analysis are challenging tasks in stream data mining. We illustrate a n...
International audienceMonitoring and analyzing sensor networks is essential for exploring energy con...
In this paper, we present visual-interactive techniques for revealing relations between two co-exist...
In this paper, we present visual-interactive techniques for revealing relations between two co-exist...
We seek to detect statistically significant temporal or spatial changes in either the underlying pro...
Diagnosing a large-scale sensor network is a crucial but challenging task due to the spatiotemporall...
In this report we illustrate how a number of data analysis methods can be used to monitor data from ...
Sensor networks generate substantial amounts of frequently updated, highly dynamic data that are tra...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Diagnosing a large-scale sensor network is a crucial but challenging task. Particular challenges inc...
With the increasing capabilities of measurement devices and computing machines, the amount of record...
As we move into the big data era, data grows not just in size, but also in complexity, containing a ...