Achievements and solutions in mechanical engineering II : selected, peer reviewed papers from the 5th International Conference of Mechanical Engineering (ICOME) 2019, October 24-25, 2019, Craiova, Romania. ICOME (Conference) (5th : 2019...最新文献

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Real Time Prediction of Sclera Force with LSTM Neural Networks in Robot-Assisted Retinal Surgery. 机器人辅助视网膜手术中基于LSTM神经网络的巩膜力实时预测。
Changyan He, Niravkumar Patel, Marin Kobilarov, Lulian Lordachita
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