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Semi-Autonomous Robotic Surgery for Space Exploration Missions

机译:用于太空探索任务的半自主机器人手术

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Space exploration missions to the moon and Mars cannot count on having a surgeon physically present to perform surgical procedures. Furthermore, telesurgery is not feasible at these distances due to network latency ranging from 3 seconds to several minutes. To address this need, a robotic surgical system can be trained by expert surgeons prospectively so that a health-preserving or life-saving procedure can be performed semi-autonomously when needed. The approach of path generation using artificial neural networks allows for an effective and scalable solution for the supervised learning and real-time performance of a surgical procedure. This study makes use of long short-term memory (LSTM) recurrent neural networks (RNNs) in conjunction with Evolino or back propagation learning algorithms for end-effector path optimization. The RNN-generated path is trained from human-performed procedures in a simulated environment. Changes in movement of path markers are accounted for by adjusting the end-effector acceleration with respect to target markers along the path. Results include smooth generated paths successfully meeting the defined procedure requirements of accuracy and speed in both static and dynamic environments.
机译:前往月球和火星的太空探索任务不能指望有外科医生亲自进行外科手术。此外,由于网络等待时间从3秒到几分钟不等,因此在这些距离下远程手术是不可行的。为了满足这一需求,可以由专业的外科医生对机器人外科手术系统进行前瞻性培训,以便在需要时可以半自动执行维护健康或挽救生命的程序。使用人工神经网络的路径生成方法可为监督学习和手术过程的实时性能提供有效且可扩展的解决方案。这项研究利用长短期记忆(LSTM)递归神经网络(RNN)结合Evolino或反向传播学习算法来实现末端执行器路径优化。 RNN生成的路径是在模拟环境中通过人工执行的过程进行训练的。路径标记运动的变化是通过调整末端执行器相对于沿路径的目标标记的加速度来解决的。结果包括平滑生成的路径,可以成功满足静态和动态环境中定义的过程的准确性和速度要求。

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