Xugang Feng
Papers
2
Total Citations
41
H-Index
2
About
Xugang Feng is a leading researcher in robotics and intelligent control, with a primary focus on time-optimal trajectory planning for multi-degree-of-freedom manipulators. His most influential work, "A 6-DOF robot-time optimal trajectory planning based on an improved genetic algorithm" (32 citations), introduces a sophisticated approach that employs quintic polynomial interpolation to model joint variables over time, ensuring smooth and continuous motion. To overcome the limitations of conventional genetic algorithms, Feng developed enhanced crossover and mutation operators that significantly boost search efficiency and solution quality. This foundational work is complemented by his study on "Time-optimal trajectory planning of robot based on improved adaptive genetic algorithm" (9 citations), where he further refines the algorithm by dynamically adjusting crossover and mutation probabilities, leading to faster convergence and more robust trajectory generation. Feng’s contributions are critical for advancing industrial automation, enabling robots to execute complex tasks with greater speed, precision, and energy efficiency. His research not only provides a rigorous mathematical framework for motion planning but also offers practical, implementable solutions for real-world robotic systems, making him a key figure in the optimization of robotic performance.
Research Focus
Key Achievements
Top Papers
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