This paper discusses the adaptive sampling problem in a nonholonomic mobile robotic sensor network for efficiently monitoring a spatial field. It is proposed to employ Gaussian process to model a spatial phenomenon and predict it at unmeasured positions, which enables the sampling optimization problem to be formulated by the use of the log determinant of a predicted covariance matrix at next sampling locations. The control, movement and nonholonomic dynamics constraints of the mobile sensors are also considered in the adaptive sampling optimization problem. In order to tackle the nonlinearity and nonconvexity of the objective function in the optimization problem we first exploit the linearized alternating direction method of multipliers (L-...
This paper addresses the issue of monitoring spatial environmental phenomena of interest utilizing i...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
This paper discusses the adaptive sampling problem in a nonholonomic mobile robotic sensor network f...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
© 2015 IEEE. This brief addresses the issue of monitoring physical spatial phenomena of interest usi...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
UnrestrictedRobotic sensor networks provide new tools for in-situ sensing in challenging settings su...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
This paper addresses the issue of monitoring spatial environmental phenomena of interest utilizing i...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
This paper discusses the adaptive sampling problem in a nonholonomic mobile robotic sensor network f...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
Adaptive sampling in a resource-constrained mobile robotic sensor network for monitoring a spatial p...
© 2015 IEEE. This brief addresses the issue of monitoring physical spatial phenomena of interest usi...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
UnrestrictedRobotic sensor networks provide new tools for in-situ sensing in challenging settings su...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredi...
This paper addresses the issue of monitoring spatial environmental phenomena of interest utilizing i...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...