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Get Free AccessAbstract Low‐speed flow energy, such as breezes and rivers, which are abundant in smart agriculture and smart cities, faces significant challenges in efficient harvesting as an untapped sustainable energy source. This study proposes an alternating magnetic field‐enhanced triboelectric nanogenerator (AMF‐TENG) for low‐speed flow energy harvesting, and demonstrates its feasibility through experimental results. AMF‐TENG's minimum cut‐in speed is 1 m s −1 , thereby greatly expanding its wind energy harvesting range. When the wind speed is 1–5 m s −1 , the open‐circuit voltage ( V OC ) is 20.9–179.3 V. The peak power is 0.68 mW at 5 m s −1 . In a durability test of 100 K cycles, the V OC decreases from 188.4 to 174.2 V but remain at 92.5% of the initial value. furthermore, the AMF‐TENG can harvest low‐speed flow energy from the natural environment to power temperature and humidity sensors and wireless light intensity sensor in smart agriculture. This study provides a promising method for low‐speed flow energy harvesting in distributed applications.
Baosen Zhang, Qi Gao, Wenbo Li, Mingkang Zhu, Hengyu Li, Tinghai Cheng, Zhong Lin Wang (2023). Alternating Magnetic Field‐Enhanced Triboelectric Nanogenerator for Low‐Speed Flow Energy Harvesting. , 33(42), DOI: https://doi.org/10.1002/adfm.202304839.
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Type
Article
Year
2023
Authors
7
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1002/adfm.202304839
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