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Bioinspired Central Pattern Generator and T-S Fuzzy Neural Network-Based Control of a Robotic Manta for Depth and Heading Tracking

Yonghui Cao, Yu Xie, Yue He, Guang Pan, Qiaogao Huang, Yong Cao

Year
2022
Citations
18
Access
Open access

Abstract

Aiming at the difficult problem of motion control of robotic manta with pectoral fin flexible deformation, this paper proposes a control scheme that combines the bioinspired Central Pattern Generator (CPG) and T-S Fuzzy neural network (NN)-based control. An improved CPG drive network is presented for the multi-stage fin structure of the robotic manta. Considering the unknown dynamics and the external environmental disturbances, a sensor-based classic T-S Fuzzy NN controller is designed for heading and depth control. Finally, a pool test demonstrates the effectiveness and robustness of the proposed controller: the robotic manta can track the depth and heading with an error of ±6 cm and ±6°, satisfying accuracy requirements.

Keywords

Heading (navigation)Central pattern generatorRobustness (evolution)Computer scienceDigital pattern generatorControl theory (sociology)Artificial neural networkFuzzy control systemArtificial intelligenceFuzzy logic

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