J. E. Kurek
Papers
9
Total Citations
58
H-Index
5
About
J. E. Kurek’s research focuses on advancing the precision and control of robotic manipulators, particularly through the integration of neural networks and advanced control algorithms. His major contributions lie in improving robot end-effector pose accuracy and developing robust control strategies. His most cited work, “Application of Joint Error Mutual Compensation for Robot End-effector Pose Accuracy Improvement” (2003, 15 citations), introduces a novel method to enhance positioning precision. He also pioneered the “Design of decoupled sliding mode control for the PUMA 560 robot manipulator” (2003, 13 citations), which presents a sophisticated control algorithm for robot arm position control. Additionally, Kurek has made significant strides in neural network modeling, as seen in “Design of a Neural Network for an Identification of a Robot Model with a Positive Definite Inertia Matrix” (2010, 7 citations) and “Relative Error Indices for Comparison of Neural Models of Different Robots” (2009, 5 citations). His early work, “Neural Net Model of Robot Manipulator” (1998, 5 citations), laid the foundation for using Elman-type recurrent networks to model robot dynamics. With over 50 total citations, Kurek’s research has notably impacted the fields of robot control, neural modeling, and precision engineering, offering practical solutions for industrial robotics.
Research Focus
Key Achievements
Top Papers
- 1
- 2Design of decoupled sliding mode control for the PUMA 560 robot manipulator13 citations · 2003
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- 5Neural Net Model of Robot Manipulator.5 citations · 1998
- 6Calculation of robot manipulator model using neural net4 citations · 1999
- 7Calculation of robot parameters based on neural nets4 citations · 2005
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