Nonlinear-Observer-Based Design Approach for Adaptive Event-Driven Tracking of Uncertain Underactuated Underwater Vehicles
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- Jiajian Liang & Wenkai Huang & Fobao Zhou & Jiaqiao Liang & Guojian Lin & Endong Xiao & Hongquan Li & Xiaolin Zhang, 2022. "Double-Loop PID-Type Neural Network Sliding Mode Control of an Uncertain Autonomous Underwater Vehicle Model Based on a Nonlinear High-Order Observer with Unknown Disturbance," Mathematics, MDPI, vol. 10(18), pages 1-24, September.
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adaptive neural network observer; event-driven three-dimensional tracking; output-feedback; guaranteed performance; underactuated underwater vehicles (UUVs);All these keywords.
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