Title :
On-line detection and estimation of gaseous point sources using sensor networks
Author :
Agostinho, S. ; Gomes, João
Author_Institution :
Inst. for Syst. & Robot., Univ. of Lisbon, Lisbon, Portugal
Abstract :
The current work tackles the detection and localization of a diffusive point source, based on spatially distributed concentration measurements acquired through a sensor network. A model-based strategy is used, where the concentration field is modeled as a diffusive and advective-diffusive semi-infinite environment. We rely on hypothesis testing for source detection and maximum likelihood estimation for inference of the unknown parameters, providing Cramér-Rao Lower Bounds as benchmark. The (non-convex and multimodal) likelihood function is maximized through a Newton-Conjugate Gradient method, with an applied convex relaxation under steady-state assumptions to provide a suitable source position initialization. Detection is carried out resorting to a Generalized Likelihood Ratio Test. The framework´s robustness is validated against a numerically simulated environment generated by the Toolbox of Level Set Methods, which provides data (loosely) consistent with the model.
Keywords :
Newton method; distributed sensors; gradient methods; maximum likelihood estimation; signal detection; source separation; statistical testing; Cramér-Rao lower bounds; Newton-conjugate gradient method; advective-diffusive semiinfinite environment; concentration field; convex relaxation; diffusive point source detection; diffusive point source localization; gaseous point source estimation; generalized likelihood ratio test; hypothesis testing; level set methods; maximum likelihood estimation; model-based strategy; multimodal likelihood function; nonconvex likelihood function; online detection; sensor networks; source detection; source position initialization; spatially distributed concentration measurements; steady-state assumptions; unknown parameter inference; Equations; Mathematical model; Maximum likelihood estimation; Optimization; Position measurement; Vectors; Diffusive Source Localization; Generalized Likelihood Ratio Test; Maximum Likelihood Estimator; Newton-Conjugate Gradient; Sensor Network;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Conference_Location :
Lisbon