A distributed approach to monitoring the environmental field function with mobile sensor networks is presented in this paper. With this approach, a mobile sensor network is capable to estimate a model of field functions in real-time. This approach consists of two stages, a field function learning stage and a locational optimising stage. A distributed least square support vector regression (LS-SVR) is developed for the field function learning stage. On the locational optimising stage, a gradient based method: centroidal Voronoi tessellation (CVT) is used to allocate each sensor node's position. These two stages are running alternately in a loop so that the field function learning stage can keep updating the field function with new sensor rea...
A mobile wireless sensor network may be deployed to detect and track a large-scale physical phenomen...
The unpredictable noise in received signal strength indicator (RSSI) measurements in indoor environm...
A distributed coordinated dynamic sensor network for optimal environmental field estimation is propo...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
This paper presents an approach to modeling and tracking spatio-temporal field functions by using a ...
We present distributed regression, an efficient and general framework for in-network modeling of sen...
Abstract—Over the past few years, wireless sensor networks received tremendous attention for monitor...
Gaussian process (GP) is well researched and used in machine learning field. Comparing with artifici...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
This work takes into account the problem of distributed estimation of a physical field of interest t...
Reliable prediction and monitoring of dynamically changing environments are essential for a safer an...
Distributed networks comprising a large number of nodes, e.g., Wireless Sensor Networks, Personal Co...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
This paper is concerned with the distributed field estimation problem using a sensor network, and th...
A mobile wireless sensor network may be deployed to detect and track a large-scale physical phenomen...
The unpredictable noise in received signal strength indicator (RSSI) measurements in indoor environm...
A distributed coordinated dynamic sensor network for optimal environmental field estimation is propo...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
This paper presents an approach to modeling and tracking spatio-temporal field functions by using a ...
We present distributed regression, an efficient and general framework for in-network modeling of sen...
Abstract—Over the past few years, wireless sensor networks received tremendous attention for monitor...
Gaussian process (GP) is well researched and used in machine learning field. Comparing with artifici...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
This work takes into account the problem of distributed estimation of a physical field of interest t...
Reliable prediction and monitoring of dynamically changing environments are essential for a safer an...
Distributed networks comprising a large number of nodes, e.g., Wireless Sensor Networks, Personal Co...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
This paper is concerned with the distributed field estimation problem using a sensor network, and th...
A mobile wireless sensor network may be deployed to detect and track a large-scale physical phenomen...
The unpredictable noise in received signal strength indicator (RSSI) measurements in indoor environm...
A distributed coordinated dynamic sensor network for optimal environmental field estimation is propo...