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Wireless Interference Estimation Using Machine Learning in a Robotic Force-Seeking Scenario

机译:在机器人寻求力量的情况下使用机器学习进行无线干扰估计

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Cyber-physical systems are systems governed by the laws of physics that are tightly controlled by computer-based algorithms and network-based sensing and actuation. Wireless communication technology is envisioned to play a primary role in conducting the information flows within such systems. A practical industrial wireless use case involving a robot manipulator control system, an integrated wireless force-torque sensor, and a remote vision-based observer is constructed and the performance of the cyber-physical system is examined. By using readings from the remote observer, an estimation system is developed using machine learning regression techniques. We demonstrate the practicality of combining statistical analysis with machine learning to indirectly estimate signal-to-interference of the wireless communication link using measurements from the remote observer. Results from the statistical analysis and the performance of the machine learning system are presented.
机译:网络物理系统是受物理定律支配的系统,这些定律受到基于计算机的算法和基于网络的感测和驱动的严格控制。设想无线通信技术将在此类系统内进行信息流中扮演主要角色。构建了一个实际的工业无线用例,其中涉及机器人机械手控制系统,集成的无线力转矩传感器和基于远程视觉的观察器,并检查了网络物理系统的性能。通过使用来自远程观察者的读数,使用机器学习回归技术开发了一种估计系统。我们展示了将统计分析与机器学习相结合以使用来自远程观察者的测量值间接估计无线通信链路的信号干扰的实用性。呈现了统计分析的结果和机器学习系统的性能。

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