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Classification of flexible three-fingered hand grasping pattern based on BP neural network

机译:基于BP神经网络的柔性三手指抓握模式分类。

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In robotic application, flexible actuator is the end terminal parts. Rigid actuators are accurate but have poor security and practicability. This paper designed a new type of pneumatic dexterous hand - flexible three-fingered hand. The flexible three-fingered hand grasping pattern can be divided into griping, grasping and holding. The pattern classification of flexible three-fingered hand is designed based on the BP neural network. The network training results show that the proposed classification can determine the operation pattern of flexible three-fingered hand, according to the characteristics of the specific operating parameter vector of the target.
机译:在机器人应用中,柔性执行器是终端的零件。刚性致动器是准确的,但安全性和实用性较差。本文设计了一种新型的气动灵巧手-柔性三指手。灵活的三指手抓握模式可分为抓握,抓握和握持。基于BP神经网络,设计了柔性三指手的模式分类。网络训练结果表明,所提出的分类方法可以根据目标特定操作参数向量的特征,确定柔性三指手的操作模式。

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