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Original Submission Date Received: .
We are pleased to announce the winners of the Machines 2023 Outstanding Reviewer Award. The Machines Editorial Board and editorial team would like to gratefully acknowledge the time and energy dedicated by reviewers to checking the manuscripts submitted to Machines (ISSN: 2075-1702). It is due to their efforts that the high quality and quick turnaround of the journal are maintained.
Name: Dr. Lorenzo Scalera
Affiliation: University of Udine, Udine, Italy
Research Interests: robotics; mechatronics; path planning; trajectory planning; kinematic and dynamic modeling; energy efficiency; cable-driven parallel robots; collaborative robotics; artistic robotic painting; robotics for agriculture
Name: Dr. Piotr Gierlak
Affiliation: Rzeszow University of Technology, Rzeszów, Poland
Research Interests: robot modeling; identification; control of robotic systems; nonlinear control; adaptive control; force control; neural networks; fuzzy logic; underactuated systems; mechanical vibration; vibration measurement; VR in robotics
The Prize for Each Winner:
Machines Editorial Office