WANG Yong-li, QIAN Jiang-bo, SUN Shu-rong, et al. AMUR:An Adaptive Measuring Algorithm of Underlying Uncertainty for RFID Data[J]. Acta Electronica Sinica, 2011, 39(3): 579-584.
DOI:
WANG Yong-li, QIAN Jiang-bo, SUN Shu-rong, et al. AMUR:An Adaptive Measuring Algorithm of Underlying Uncertainty for RFID Data[J]. Acta Electronica Sinica, 2011, 39(3): 579-584.DOI:
AMUR:An Adaptive Measuring Algorithm of Underlying Uncertainty for RFID Data
To adapt the character of evolving over time and real-time of sensor data in location tracing service based on RFID
we present an adaptive evolving particle filtering algorithm-AMUR(an adaptive measuring algorithm of underlying uncertainty for RFID data).AMUR adaptively changes the number of samples on the basis of K-L distance
introduces an improved PSO (particle swarm optimization) method to enhance the efficiency of resampling phase of conventional particle filter(SIRPF).Meanwhile
to detect the most optimal samples among candidate sample set
AMUR defines a fitness function based on CWA(conventional weighted aggregation) for PSO which balances the importance between priori density and likelihood densitys.It provides a reliable measure of confidence for initial tuple in the probability RFID database.Experimental comparison of current algorithms shows
AMUR outpreforms current methods in terms of measurement of underlying uncertainties over RFID data