7,471 research outputs found
Sensor Selection Based on Generalized Information Gain for Target Tracking in Large Sensor Networks
In this paper, sensor selection problems for target tracking in large sensor
networks with linear equality or inequality constraints are considered. First,
we derive an equivalent Kalman filter for sensor selection, i.e., generalized
information filter. Then, under a regularity condition, we prove that the
multistage look-ahead policy that minimizes either the final or the average
estimation error covariances of next multiple time steps is equivalent to a
myopic sensor selection policy that maximizes the trace of the generalized
information gain at each time step. Moreover, when the measurement noises are
uncorrelated between sensors, the optimal solution can be obtained analytically
for sensor selection when constraints are temporally separable. When
constraints are temporally inseparable, sensor selections can be obtained by
approximately solving a linear programming problem so that the sensor selection
problem for a large sensor network can be dealt with quickly. Although there is
no guarantee that the gap between the performance of the chosen subset and the
performance bound is always small, numerical examples suggest that the
algorithm is near-optimal in many cases. Finally, when the measurement noises
are correlated between sensors, the sensor selection problem with temporally
inseparable constraints can be relaxed to a Boolean quadratic programming
problem which can be efficiently solved by a Gaussian randomization procedure
along with solving a semi-definite programming problem. Numerical examples show
that the proposed method is much better than the method that ignores dependence
of noises.Comment: 38 pages, 14 figures, submitted to Journa
Sensor Selection for Estimation with Correlated Measurement Noise
In this paper, we consider the problem of sensor selection for parameter
estimation with correlated measurement noise. We seek optimal sensor
activations by formulating an optimization problem, in which the estimation
error, given by the trace of the inverse of the Bayesian Fisher information
matrix, is minimized subject to energy constraints. Fisher information has been
widely used as an effective sensor selection criterion. However, existing
information-based sensor selection methods are limited to the case of
uncorrelated noise or weakly correlated noise due to the use of approximate
metrics. By contrast, here we derive the closed form of the Fisher information
matrix with respect to sensor selection variables that is valid for any
arbitrary noise correlation regime, and develop both a convex relaxation
approach and a greedy algorithm to find near-optimal solutions. We further
extend our framework of sensor selection to solve the problem of sensor
scheduling, where a greedy algorithm is proposed to determine non-myopic
(multi-time step ahead) sensor schedules. Lastly, numerical results are
provided to illustrate the effectiveness of our approach, and to reveal the
effect of noise correlation on estimation performance.Comment: IEEE Transactions on Signal Processing (accepted
Sensor Selection for Target Tracking in Wireless Sensor Networks with Uncertainty
In this paper, we propose a multiobjective optimization framework for the
sensor selection problem in uncertain Wireless Sensor Networks (WSNs). The
uncertainties of the WSNs result in a set of sensor observations with
insufficient information about the target. We propose a novel mutual
information upper bound (MIUB) based sensor selection scheme, which has low
computational complexity, same as the Fisher information (FI) based sensor
selection scheme, and gives estimation performance similar to the mutual
information (MI) based sensor selection scheme. Without knowing the number of
sensors to be selected a priori, the multiobjective optimization problem (MOP)
gives a set of sensor selection strategies that reveal different trade-offs
between two conflicting objectives: minimization of the number of selected
sensors and minimization of the gap between the performance metric (MIUB and
FI) when all the sensors transmit measurements and when only the selected
sensors transmit their measurements based on the sensor selection strategy.
Illustrative numerical results that provide valuable insights are presented
Structural Health Monitoring and Condition Assessment of Chulitna River Bridge
INE/AUTC 12.29 (Training Report) and INE/AUTC 12.30 (Sensor Selection and Field Installation Report
Online Distributed Sensor Selection
A key problem in sensor networks is to decide which sensors to query when, in
order to obtain the most useful information (e.g., for performing accurate
prediction), subject to constraints (e.g., on power and bandwidth). In many
applications the utility function is not known a priori, must be learned from
data, and can even change over time. Furthermore for large sensor networks
solving a centralized optimization problem to select sensors is not feasible,
and thus we seek a fully distributed solution. In this paper, we present
Distributed Online Greedy (DOG), an efficient, distributed algorithm for
repeatedly selecting sensors online, only receiving feedback about the utility
of the selected sensors. We prove very strong theoretical no-regret guarantees
that apply whenever the (unknown) utility function satisfies a natural
diminishing returns property called submodularity. Our algorithm has extremely
low communication requirements, and scales well to large sensor deployments. We
extend DOG to allow observation-dependent sensor selection. We empirically
demonstrate the effectiveness of our algorithm on several real-world sensing
tasks
State observation and sensor selection for nonlinear networks
A large variety of dynamical systems, such as chemical and biomolecular
systems, can be seen as networks of nonlinear entities. Prediction, control,
and identification of such nonlinear networks require knowledge of the state of
the system. However, network states are usually unknown, and only a fraction of
the state variables are directly measurable. The observability problem concerns
reconstructing the network state from this limited information. Here, we
propose a general optimization-based approach for observing the states of
nonlinear networks and for optimally selecting the observed variables. Our
results reveal several fundamental limitations in network observability, such
as the trade-off between the fraction of observed variables and the observation
length on one side, and the estimation error on the other side. We also show
that owing to the crucial role played by the dynamics, purely graph- theoretic
observability approaches cannot provide conclusions about one's practical
ability to estimate the states. We demonstrate the effectiveness of our methods
by finding the key components in biological and combustion reaction networks
from which we determine the full system state. Our results can lead to the
design of novel sensing principles that can greatly advance prediction and
control of the dynamics of such networks.Comment: Matches publication version to appear in IEEE Transactions on Control
of Network Systems. 28 pages and 13 figure
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