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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

发表年份
2022
引用次数
18
访问权限
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摘要

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.

关键词

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

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