Zhivko Zhekov
Papers
3
Total Citations
10
H-Index
2
About
Zhivko Zhekov’s research focuses on the intersection of neural networks and robotics, with a particular emphasis on intelligent control systems for robotic manipulators. His major contributions lie in developing neural control architectures for two-link planar robots, where he pioneered methods for both online and offline neural network training to handle complex kinematic and dynamic tasks. In his most cited work (2019, 5 citations), Zhekov proposed a system using a single feedforward neural network that simultaneously serves as a neural model and controller, learning via gradient descent and error backpropagation. He extended this in 2020 (3 citations) by introducing a dual-network approach, where one network approximates inverse kinematics offline, while the other handles real-time control. More recently (2024, 2 citations), Zhekov has addressed practical challenges in industrial robotics through camera calibration techniques, ensuring accurate alignment between camera and robot coordinate systems—a critical step for machine vision applications. His work bridges theoretical neural control with real-world robotic implementation, making significant strides in autonomous robot manipulation.
Research Focus
Key Achievements
Top Papers
- 1Neural Control of Two-link Planar Robot5 citations · 2019
- 2
- 3Camera calibration for robotic lab setup2 citations · 2024