Abstract—Increasing numbers of sensors are being deployed in environments to monitor our behaviours and environmental phenomena. Missing data is an inevitable problem in almost every sensorised environment, due to physical failure, poor connection, or dislodgement. This results in an incomplete view of the real-world, leading to poor prediction and consequently, degraded quality of system services. This paper explores generic solutions towards detecting missing data on event-driven sensors using both temporal correlation and time series analysis. The solutions are evaluated on a real-world dataset and achieve promising results with accuracy around 80%. I
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
Sensor-based condition monitoring systems are becoming an important part of modern industry. However...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
Sensor-based human activity recognition has various applications in the arena of healthcare, elderly...
Data streams from remote monitoring systems such as wireless sensor networks show immediately that t...
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies....
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
In many embedded systems, we face the problem of correlating signals characterising device operation...
Presentation 'Experiences from dealing with missing values in sensor time series data' at useR! Conf...
The reliable acquisition of monitoring information is critical for several industrial use cases rely...
Event detection is an essential element for various sensor network applications, such as disaster al...
Abstract—This paper describes an algorithm for determining if an event occurs on a routine basis wit...
With the advancement of Internet of Things (IoT) technology, smart sensors have become extensively u...
Abstract—Recovering missing sensor data is a critical problem for sensor networks, especially when n...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
Sensor-based condition monitoring systems are becoming an important part of modern industry. However...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
Sensor-based human activity recognition has various applications in the arena of healthcare, elderly...
Data streams from remote monitoring systems such as wireless sensor networks show immediately that t...
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies....
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
In many embedded systems, we face the problem of correlating signals characterising device operation...
Presentation 'Experiences from dealing with missing values in sensor time series data' at useR! Conf...
The reliable acquisition of monitoring information is critical for several industrial use cases rely...
Event detection is an essential element for various sensor network applications, such as disaster al...
Abstract—This paper describes an algorithm for determining if an event occurs on a routine basis wit...
With the advancement of Internet of Things (IoT) technology, smart sensors have become extensively u...
Abstract—Recovering missing sensor data is a critical problem for sensor networks, especially when n...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...
Sensor-based condition monitoring systems are becoming an important part of modern industry. However...
We present a system to analyze time-series data in sensor networks. Our approach supports explorator...