2023
DOI: 10.18311/jmmf/2023/41611
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Humanoid Motion Control using Auto Resonance Neural Network

V. M. Aparanji,
Sujata N. Patil

Abstract: It has been proven difficult to control robots with many mechanical joints due to a variety of problems, including redundant configurations, non-linear displacement, dynamic user surroundings, etc. Iterative computations have been applied to address inverse kinematic problems of industrial robots with up to six Degrees of Freedom (DoF). With one to three degrees of freedom in each of more than hundred joints used by humans for locomotion, the complexity is unfathomable. Consequently, in humanoid structures, al… Show more

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