Grid-Based Estimation of Transformation Between Partial Relationships Using a Genetic Algorithm.

Sota Nakamura,Yuichi Kobayashi, Taisei Matsuura

Journal of Robotics and Mechatronics(2022)

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摘要
Human motor learning is characterized by adaptation, wherein information obtained in the past is transferred to a different situation. In this study, we investigate a grid-based computation for explaining the reuse of the information of an existing controller for adaptation to a partial malfunction of a controller. To this end, a motor learning scheme is adopted based on the detection and estimation of partial relationships. The transformation between the partial relationships is estimated based on a grid-based estimation of the two coordinate systems. In this estimation, the coordinate systems are optimized using a genetic algorithm. Two arms in a reflection are considered, and it is confirmed that the transformation of the differential kinematics (Jacobian), as an example of the partial relationships, can be estimated by the proposed method.
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关键词
human motor learning,estimation of transformation,hyper adaptability
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