Deep‐Learning‐Assisted Triboelectric Whisker Sensor Array for Real‐Time Motion Sensing of Unmanned Underwater Vehicle

Aquatic animals can perceive their surrounding flow fields through highly evolved sensory systems. For instance, a seal whisker array understands the hydrodynamic field that allows seals to forage and navigate in dark environments. In this work, a deep learning‐assisted underwater triboelectric whis...

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Veröffentlicht in:Advanced materials technologies 2024-09, Vol.10 (3), p.n/a
Hauptverfasser: Liu, Bo, Dong, Bowen, Jin, Hao, Zhu, Peng, Mu, Zhaoyang, Li, Yuanzheng, Liu, Jianhua, Meng, Zhaochen, Zhou, Xinyue, Xu, Peng, Xu, Minyi
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Sprache:eng
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Zusammenfassung:Aquatic animals can perceive their surrounding flow fields through highly evolved sensory systems. For instance, a seal whisker array understands the hydrodynamic field that allows seals to forage and navigate in dark environments. In this work, a deep learning‐assisted underwater triboelectric whisker sensor array (TWSA) is designed for the 3D motion estimation and near‐field perception of unmanned underwater vehicles. Each sensor comprises a high aspect ratio elliptical whisker shaft, four sensing units at the root of the elliptical whisker shaft, and a flexible corrugated joint simulating the skin on the cheek surface of aquatic animals. The TWSA effectively identifies flow velocity and direction in the 3D underwater environments and exhibits a rapid response time of 19 ms, a high sensitivity of 0.2V/ms−1, and a signal‐to‐noise ratio of 58 dB. The device also locks onto the frequency of the upstream wake vortex, achieving a minimal detection accuracy of 81.2%. Moreover, when integrated with an unmanned underwater vehicle, the TWSA can estimate 3D trajectories assisted by a trained deep learning model, with a root mean square error of ≈0.02. Thus, the TWSA‐based assisted perception holds immense potential for enhancing unmanned underwater vehicle near‐field perception and navigation capabilities across a wide range of applications. This work introduces a deep learning‐assisted triboelectric whisker sensor array (TWSA) for 3D motion estimation and near‐field perception in unmanned underwater vehicles. The TWSA detects flow velocity and direction. It achieves 81.2% accuracy in wake vortex detection and enables precise 3D trajectory estimation with a root mean square error of 0.02, significantly enhancing underwater vehicle navigation capabilities.
ISSN:2365-709X
2365-709X
DOI:10.1002/admt.202401053