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Multi-Task Sensorization of Soft Actuators Using Prior Knowledge

机译:使用先验知识对软执行器进行多任务传感

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The space of all possible deformations of soft robotic actuators is extremely large. It is impossible to explicitly measure each internal degree of freedom, regardless of the number and types of sensors. It is, however, possible to measure a smaller subset of task-relevant deformations using only a few well-placed sensors. But for a different task, the soft actuator's deformation behavior might differ significantly. Instead of finding a new sensor placement for the new task, which would result in a separate hand for every task, we propose a method that maintains the original sensors and uses prior knowledge about each task to extend the applicability of the existing sensorized actuators to new tasks. We demonstrate our approach by the example of a PneuFlex actuator of the RBO Hand 2. When sensorizing the actuator for a single task, the sensor model does not transfer well to other tasks. Using our multi-task method, we train new sensor models that use prior knowledge about the tasks. The new models improve measurement accuracy for the new tasks without having to change the sensor hardware.
机译:软机器人执行器的所有可能变形的空间非常大。无论传感器的数量和类型如何,都不可能明确地测量每个内部自由度。但是,仅使用几个放置良好的传感器即可测量与任务相关的变形的较小子集。但是对于不同的任务,软执行器的变形行为可能会明显不同。与其为新任务找到新的传感器放置位置(而不是为每个任务分配单独的指针),我们提出了一种方法,该方法可以维护原始传感器并使用有关每个任务的先验知识来将现有的传感器执行器扩展到新的位置。任务。我们以RBO Hand 2的PneuFlex致动器为例演示了我们的方法。当感测到单个任务的致动器时,传感器模型不能很好地转移到其他任务。使用我们的多任务方法,我们训练了新的传感器模型,这些模型使用了有关任务的先验知识。新型号提高了新任务的测量精度,而无需更改传感器硬件。

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