Title :
Fire Localization Based On Range-Range-Range Model for Limited Interior Space
Author :
Quanbo Ge ; Chenglin Wen ; Sheng´an Duan
Author_Institution :
Inst. of Syst. Sci. & Control Eng., Hangzhou Dianzi Univ., Hangzhou, China
Abstract :
Fire localization problem is studied based on temperature data taken by wireless sensor arrays and a novel range-range-range (RRR) model is proposed to overcome shortcomings, which exists in the current range-point-range (RPR) model in this paper. For a single sensor array composed of four sensors deployed with a square, three angle estimates on fire bearing can be obtained using far-field localization technology. These angle estimates are used to get their statistical mean and variance at a single time. Based on the statistical features, we propose two fire localization methods under the RRR frame, which are angle bisector and nonlinear filtering methods. For the angle bisector method, a recursive formula of the mean and variance is presented in time series so that global angle estimates can be used. Furthermore, a fire coordinate estimate, which is actually the center of estimated-range circle, can be taken by use of intersecting two angle bisectors from two sensor arrays. Moreover, the estimation of a radius for the estimated fire region is also realized. In order to improve localization accuracy and robustness of fire estimation to non-Gaussian noise component, the fire localization is taken as a nonlinear bearing-only tracking issue for the case where the covariance of measurement noise is unknown and a specific variational Bayesian adaptive square-cubature Kalman filter is proposed to estimate the coordinate of the center. These proposed algorithms not only provide some new points of view on the fire localization for limited interior space, but are helpful for practical fire fighting applications.
Keywords :
Bayes methods; Kalman filters; adaptive filters; angular measurement; covariance analysis; direction-of-arrival estimation; fires; measurement errors; measurement uncertainty; nonlinear filters; recursive estimation; sensor arrays; temperature sensors; time series; variational techniques; wireless sensor networks; RPR model; RRR model; angle bisector method; estimated-range circle center; far-field localization technology; fire bearing; fire coordinate estimation; fire estimation robustness; fire fighting application; fire localization method; global angle estimation; measurement noise covariance analysis; nonGaussian noise component; nonlinear bearing-only tracking issue; nonlinear filtering method; radius estimation; range-point-range model; range-range-range model; recursive formula; statistical mean analysis; statistical variance analysis; temperature sensor; time series; variational Bayesian adaptive square-cubature Kalman filter; wireless sensor array; Computational modeling; Estimation; Fires; Sensor arrays; Temperature sensors; Time series analysis; Wireless sensor networks; Angle bisector; fire localization; nonlinear filtering; range-range-range (RRR) model; sensor array; variational Bayesian; variational Bayesian.;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2014.2308974