Điều khiển tối ưu bám quỹ đạo cho USV có động lực học bất định và nhiễu biến thiên theo thời gian bằng thuật toán PI và IRL
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#Integral reinforcement learning; PI; Optimal control; HJB; USVs.Tài liệu tham khảo
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