Artículo de revista
Bayesian identification of electromechanical properties in piezoelectric energy harvesters
Fecha
2020Registro en:
Mechanical Systems and Signal Processing 141 (2020) 106506
10.1016/j.ymssp.2019.106506
Autor
Peralta, Patricio
Ruiz, Rafael O.
Taflanidis, Alexandros A.
Institución
Resumen
The model updating of the electro-mechanical properties of Piezoelectric Energy
Harvesters (PEHs) using experimental data within a Bayesian inference setting is discussed.
The implementation requires: a predictive model for the harvester response; an assumption
for its prediction error; a prior multivariate probabilistic density function for the electromechanical
properties; and experimental measurements of the harvester response.
Different approaches are compared with respect to the Bayesian model updating, including
point estimates of the updated properties based on Maximum a Posteriori and Maximum
Likelihood Estimates, as well as a full description of the posterior density for the model
characteristics, obtained through a Transitional Markov Chain Monte Carlo approach. A
model class selection implementation is also discussed that allows for the consideration
of some PEH properties as either deterministic or aleatoric (uncertain) variables. The overall
framework offers an elegant approach to calibrate PEH numerical/analytical model or
identify variability trends for the PEH manufacturing process.