2024
DOI: 10.3389/fnbot.2024.1353879
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Velocity-aware spatial-temporal attention LSTM model for inverse dynamic model learning of manipulators

Wenhui Huang,
Yunhan Lin,
Mingxin Liu
et al.

Abstract: IntroductionAn accurate inverse dynamics model of manipulators can be effectively learned using neural networks. However, further research is required to investigate the impact of spatiotemporal variations in manipulator motion sequences on network learning. In this work, the Velocity Aware Spatial-Temporal Attention Residual LSTM neural network (VA-STA-ResLSTM) is proposed to learn a more accurate inverse dynamics model, which uses a velocity-aware spatial-temporal attention mechanism to extract dynamic spati… Show more

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