DocumentCode :
2508796
Title :
Comparison of particle filter using SIR algorithm with self-adaptive filter using ARMA for PHM of Electronics
Author :
Lall, Pradeep ; Zhang, Hao ; Goebel, Kai
Author_Institution :
Dept. of Mech. Eng., Auburn Univ., Auburn, AL, USA
fYear :
2012
fDate :
May 30 2012-June 1 2012
Firstpage :
1292
Lastpage :
1305
Abstract :
In this paper, an anomaly method has been developed for the prognostication and health monitoring of Electronic assemblies under shock and vibration. Previously, damage initiation, damage progression in electronic assemblies have been monitored using state-space vector from resistance spectroscopy and then be analyzed with particle filter (PF) and the theory of Bayesian. Precise resistance measurement based on the resistance spectroscopy method and the predicted model for the damage process, have been used to quantify the damage initiation and damage progression. However, they vary a lot in different materials and situation. The presented effectiveness of the proposed prognostic health management method based self-adaptive filter and Auto Regressive model. During a shock or vibration test, we can see that the damage of the solder must come from the previous damage in the last state. Therefore, the Auto Regressive model can help us get a precise step propagation function, build the relationship among the continuous state vectors, rate of change of the state vector and acceleration of state vector. With this relationship, we can construct a feature vector. In order to fit different material and situation, the weight of different state variables will be predicted by the self-adaptive filter in which the minimum mean square error algorithm will be used. With the estimated auto-correlation function, cross-correlation function metrics and state parameters, we can propagate the feature state vector into the future and predict the time at which the feature vector will cross the failure threshold. Therefore, remaining useful life has been calculated based on the propagation of the state vector. Standard prognostic health management metrics were used to quantify the performance of the algorithm against the actual remaining useful life.
Keywords :
Bayes methods; adaptive filters; assembling; autoregressive moving average processes; condition monitoring; dynamic testing; electric resistance measurement; electronics packaging; failure analysis; least mean squares methods; particle filtering (numerical methods); remaining life assessment; spectroscopy; vibrations; ARMA; Bayesian theory; PHM; SIR algorithm; autocorrelation function; autoregressive model; continuous state vectors; cross-correlation function metrics; damage initiation; damage process; electronic assembly; failure threshold; health monitoring; minimum mean square error algorithm; particle filter; prognostic health management method; remaining useful life assessment; resistance measurement; resistance spectroscopy method; self-adaptive filter; shock test; state parameters; state vector acceleration; state-space vector; step propagation function; vibration test; Abstracts; Estimation; Noise; Predictive models; Reliability; Resistance; Time series analysis; ARMA; Bayesian; Particle filter; Prognostic health management;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Thermal and Thermomechanical Phenomena in Electronic Systems (ITherm), 2012 13th IEEE Intersociety Conference on
Conference_Location :
San Diego, CA
ISSN :
1087-9870
Print_ISBN :
978-1-4244-9533-7
Electronic_ISBN :
1087-9870
Type :
conf
DOI :
10.1109/ITHERM.2012.6231570
Filename :
6231570
Link To Document :
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