Artículo
On Fully-Distributed Composite Tests with General Parametric Data Distributions in Sensor Networks
Fecha de publicación:
08/2021
Editorial:
Institute of Electrical and Electronics Engineers
Revista:
IEEE Transactions on Signal and Information Processing over Networks
ISSN:
2373-776X
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
We consider a distributed detection problem where measurements at each sensor follow a general parametric distribution. The network does not have a central processing unit or fusion center (FC). Thus, each node takes some measurements, does some processing, exchanges messages with its neighbors and finally makes a decision (typically the same for all nodes) about the phenomenon of interest. The problem can be formulated as a composite hypothesis test with unknown parameters where, in general, a uniformly most powerful test does not exist. This leads naturally to the use of the Generalized Likelihood Ratio (GLR) test. As the measurements follow a general parametric distribution (which could model spatial dependence of the data), the implementation of fully-distributed detection procedures could be demanding in network resources. For this reason, we study the use of a simpler test (referred as L-MP) which uses the product of the marginals of the measurements taken at each node, where the unknown parameters are easily estimated with only local measurements. Although this simple proposal still requires network-wide cooperation between nodes, the number of communications is significantly reduced with respect to the GLR test, making it a suitable choice in severely resource-constrained sensor networks. As this simpler test does not exploit the full parametric model of data, it becomes important to analyze its statistical properties and its potential performance loss. This is done through the analysis of the L-MP asymptotic distribution. Interestingly, despite the fact that the L-MP is simpler and more efficient to implement than the GLR test, we obtain some conditions under which the L-MP has superior asymptotic performance to the GLR test. Finally, we present numerical results for a fully-distributed spectrum sensing application for cognitive radios, showing the gains of the L-MP in terms of performance, and saving of resources in comparison with some other well-known approaches for this application.
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Articulos(CSC)
Articulos de CENTRO DE SIMULACION COMPUTACIONAL P/APLIC. TECNOLOGICAS
Articulos de CENTRO DE SIMULACION COMPUTACIONAL P/APLIC. TECNOLOGICAS
Citación
Maya, Juan Augusto; Rey Vega, Leonardo Javier; On Fully-Distributed Composite Tests with General Parametric Data Distributions in Sensor Networks; Institute of Electrical and Electronics Engineers; IEEE Transactions on Signal and Information Processing over Networks; 7; 8-2021; 509-521
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