Applied Sciences (Mar 2023)

Moment-Based Stochastic Analysis of a Bistable Energy Harvester with Matching Network

  • Kailing Song,
  • Michele Bonnin,
  • Fabio L. Traversa,
  • Fabrizio Bonani

DOI
https://doi.org/10.3390/app13063880
Journal volume & issue
Vol. 13, no. 6
p. 3880

Abstract

Read online

We discuss the analysis of a piezoelectric energy harvester for random mechanical vibrations, and we assess the performance improvement guaranteed by interposing a matching network between the transducer and the electrical load, in terms of average output power and power efficiency. The mathematical model describing the harvester is a system of stochastic differential equations, where both cases of linear and nonlinear devices are considered. In the linear case, the power delivered to the load is increased by a factor of about 20 with respect to the direct connection, with a similar increase in the conversion efficiency. In the nonlinear case, we use a moment closure technique to calculate the first- and second-order moments of the electro-mechanical variables in the weak noise limit. Moment calculation is used to determine the optimal values of the matching network components that maximize the performance. In the strong noise limit, the state equations are integrated numerically to determine the same performance metrics. Our analysis shows that a properly designed matching network improves the performance by a significant amount, especially at low noise intensity.

Keywords