2022
DOI: 10.3390/mi13081261
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Stable and Fast Planar Jumping Control Design for a Compliant One-Legged Robot

Abstract: Compliant bipedal robots demonstrate a potential for impact resistance and high energy efficiency through the introduction of compliant elements. However, it also adds to the difficulty of stable control of the robot. To motivate the control strategies of compliant bipedal robots, this work presents an improved control strategy for the stable and fast planar jumping of a compliant one-legged robot designed by the authors, which utilizes the concept of the virtual pendulum. The robot was modeled as an extended … Show more

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Cited by 3 publications
(2 citation statements)
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“…As this domain progresses, it promises a future where robots exemplify agility and adaptability [9], [67], [178]- [180]. Notably, these advancements' primary focus is enhancing control strategies, allowing robots to manage intricate transitions and navigate unforeseen environments seamlessly [51], [74], [75], [181], [182]. Central to this progression is integrating predictive control, trajectory planning, and reinforcement learning, all contributing synergistically to optimize robotic performance [90], [91], [103], [104].…”
Section: Future Directions Of Control S and Design In Bipedal Wheel-l...mentioning
confidence: 99%
“…As this domain progresses, it promises a future where robots exemplify agility and adaptability [9], [67], [178]- [180]. Notably, these advancements' primary focus is enhancing control strategies, allowing robots to manage intricate transitions and navigate unforeseen environments seamlessly [51], [74], [75], [181], [182]. Central to this progression is integrating predictive control, trajectory planning, and reinforcement learning, all contributing synergistically to optimize robotic performance [90], [91], [103], [104].…”
Section: Future Directions Of Control S and Design In Bipedal Wheel-l...mentioning
confidence: 99%
“…Additionally, numerical models were used to analyze the rigidity and dynamic performance of the leg while considering its weight. A new control approach that utilized a virtual pendulum was developed to improve the stability and speed of jumping in a compliant one-legged robot [24]. The robot was modeled as an advanced version of the SLIP model, taking into account the effects of the robot's torso and leg inertia as well as the leg damping on its motion.…”
Section: Introductionmentioning
confidence: 99%