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Get Free AccessAbstract Triboelectric nanogenerator (TENG) harvesting ocean wave energy is an effective method to alleviate the energy crisis. However, the breakdown phenomenon is ubiquitous for the TENG with a large area of dielectric layer, which not only limits the output and reliability but also highly risks the device failure. Here, a self‐recovery TENG (SR‐TENG) featuring high breakdown resistance is designed, which achieves a high output charge density of 4.24 mC m −2 with the assistance of the charge excitation technique, as well as maintains 87% of the initial output even after six times fierce electric breakdown, minimizing the negative impacts of the breakdown phenomenon. Besides, based on the SR‐TENG, a symmetric anaconda‐shaped self‐charge excited TENG is designed for effective water wave energy harvesting. This work not only sheds light on the self‐recovery phenomenon in TENGs, but also represents a significant step toward the high performance TENG featuring high breakdown resistance and ultimate stability, accelerating the practical applications of TENG for blue energy harvesting.
Jing Wang, Zhihao Zhao, Longwei Li, Yikui Gao, Xuejiao Zhao, Baofeng Zhang, Linglin Zhou, Zhong Lin Wang, Jie Wang (2024). A Self‐Recovery Triboelectric Nanogenerator with High Breakdown Resistance for Water Wave Energy Harvesting. , DOI: https://doi.org/10.1002/aenm.202404147.
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Type
Article
Year
2024
Authors
9
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1002/aenm.202404147
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