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A Nonlinear Modeling Framework for Force Estimation in Human-Robot Interaction

Adriano Scibilia, Nicola Pedrocchi, Luigi Fortuna

发表年份
2024
引用次数
5

摘要

In modern applied research concerning human-machine interaction, the possibility of increasing the degree of intelligence and dexterity of the controlled plant by imitating human control dynamics has been a primary objective. To reach this goal, we propose a novel nonlinear modeling technique able to predict human force generated during a cooperative task with a controlled robot. The proposed Narmax model was constructed using an artificial neural network as a nonlinear functional approximator and was firstly trained offline with data acquired from ten subjects, performing a manipulation task on a small collaborative robot. Then, given the complexity of the system and the characteristics of human response, the exploitation of Peak to Peak Dynamics allowed the development of a reduced-order model that could reliably forecast the peak of human response. Ultimately, our human model was tested online on an industrial high-payload robot, showing its general applicability and how it can be used to let the robot anticipate human intention during collaborative manipulation.

关键词

Computer sciencePayload (computing)RobotTask (project management)Nonlinear systemHuman–robot interactionArtificial intelligenceArtificial neural networkControl engineeringControl theory (sociology)

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