Robots should offer a human-like level of dexterity when handling objects if humans are to be replaced in dangerous and uncertain working environments. This level of dexterity for human-like manipulation must come from both the hardware, and the control. Exact replication of human-like degrees of freedom in mobility for anthropomorphic robotic hands are seen in bulky, costly, fully actuated solutions, while machine learning to apply some level of human-like dexterity in underacted solutions is unable to be applied to a various array of objects. This thesis presents experimental and theoretical contributions of a novel neuro-fuzzy control method for dextrous human grasping based on grasp synergies using a Human Computer Interface glove and upgraded haptic-enabled anthropomorphic Ring Ada dexterous robotic hand. Experimental results proved the efficiency of the proposed Adaptive Neuro-Fuzzy Inference Systems to grasp objects with high levels of accuracy.
Maxwell WelyhorskyVinicius Prado da FonsecaQi ZhuBruno Monteiro Rocha LimaThiago Eustaquio Alves de OliveiraEmil M. Petriu
Eyder RodriguezDaniel RomeroFredy Hernán Martínez Sarmiento
Fredy Hernán Martínez SarmientoHolman Montiel ArizaEdwar Jacinto
Alejandro Linares-BarrancoR. Paz-VicenteGeko Ezekiel JimenezJ.L. Pedreno-MolinaJ. Molina-VilaplanaJ. Lopez-Coronado
Alejandro Linares-BarrancoR. Paz-VicenteG. JiménezJ.L. Pedreño-MolinaJavier Molina-VilaplanaJ. López-Coronado