Adaptive learning algorithms for vibrationenergy harvesting

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Abstract

By scavenging energy from their local environment, portable electronic devices such as MEMS devices, mobile phones, radios and wireless sensors can achieve greater run times with potentially lower weight. Vibration energy harvesting is one such approach where energy from parasitic vibrations can be converted into electrical energy through the use of piezoelectric and electromagnetic transducers. Parasitic vibrations come from a range of sources such as human movement, wind, seismic forces and traffic. Existing approaches to vibration energy harvesting typically utilize a rectifier circuit, which is tuned to the resonant frequency of the harvesting structure and the dominant frequency of vibration. We have developed a novel approach to vibration energy harvesting, including adaptation to non-periodic vibrations so as to extract the maximum amount of vibration energy available. Experimental results of an experimental apparatus using an off-the-shelf transducer (i.e.speaker coil) show mechanical vibration to electrical energy conversion efficiencies of 27-34%. © 2008 IOP Publishing Ltd.

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APA

Ward, J. K., & Behrens, S. (2008). Adaptive learning algorithms for vibrationenergy harvesting. Smart Materials and Structures, 17(3). https://doi.org/10.1088/0964-1726/17/3/035025

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