A decentralized detection method is proposed for revealing a radioactive nuclear source with unknown intensity and at unknown location, using a number of cheap radiation counters, to ensure public safety in smart cities. In the source present case, sensors nodes record an (unknown) emitted Poisson-distributed radiation count with a rate decreasing with the sensor-source distance (which is unknown), buried in a known Poisson background and Gaussian measurement noise. To model energy-constrained operations usually encountered in an Internet of Things (IoT) scenario, local one-bit quantizations are made at each sensor over a period of time. The sensor bits are collected via error-prone binary symmetric channels by the Fusion Center (FC), which has the task of achieving a better global inference. The considered model leads to a one-sided test with parameters of nuisance (i.e., the source position) observable solely in the case of H1 hypothesis. Aiming at reducing the higher complexity requirements induced by the generalized likelihood ratio test, Davies’ framework is exploited to design a generalized form of the locally optimum detection test and an optimization of sensor thresholds (resorting to a heuristic principle) is proposed. Simulation results verify the proposed approach.

IoT-Enabled Distributed Detection of a Nuclear Radioactive Source via Generalized Score Tests / Bovenzi, Giampaolo; Ciuonzo, Domenico; Persico, Valerio; Pescapè, Antonio; Rossi, Pierluigi Salvo. - 968:(2019), pp. 77-91. (Intervento presentato al convegno 4th International Symposium on Signal Processing and Intelligent Recognition Systems (SIRS 2018) tenutosi a Bangalore, India nel Settembre 2018) [10.1007/978-981-13-5758-9_7].

IoT-Enabled Distributed Detection of a Nuclear Radioactive Source via Generalized Score Tests

BOVENZI, GIAMPAOLO;Ciuonzo, Domenico
;
Persico, Valerio;Pescapè, Antonio;
2019

Abstract

A decentralized detection method is proposed for revealing a radioactive nuclear source with unknown intensity and at unknown location, using a number of cheap radiation counters, to ensure public safety in smart cities. In the source present case, sensors nodes record an (unknown) emitted Poisson-distributed radiation count with a rate decreasing with the sensor-source distance (which is unknown), buried in a known Poisson background and Gaussian measurement noise. To model energy-constrained operations usually encountered in an Internet of Things (IoT) scenario, local one-bit quantizations are made at each sensor over a period of time. The sensor bits are collected via error-prone binary symmetric channels by the Fusion Center (FC), which has the task of achieving a better global inference. The considered model leads to a one-sided test with parameters of nuisance (i.e., the source position) observable solely in the case of H1 hypothesis. Aiming at reducing the higher complexity requirements induced by the generalized likelihood ratio test, Davies’ framework is exploited to design a generalized form of the locally optimum detection test and an optimization of sensor thresholds (resorting to a heuristic principle) is proposed. Simulation results verify the proposed approach.
2019
978-981-13-5757-2
978-981-13-5758-9
IoT-Enabled Distributed Detection of a Nuclear Radioactive Source via Generalized Score Tests / Bovenzi, Giampaolo; Ciuonzo, Domenico; Persico, Valerio; Pescapè, Antonio; Rossi, Pierluigi Salvo. - 968:(2019), pp. 77-91. (Intervento presentato al convegno 4th International Symposium on Signal Processing and Intelligent Recognition Systems (SIRS 2018) tenutosi a Bangalore, India nel Settembre 2018) [10.1007/978-981-13-5758-9_7].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/747376
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