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Predicting Fault Behaviors of Networked Control Systems Using Deep Learning for Mobile Robots

机译:基于深度学习的移动机器人网络控制系统的故障行为预测

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The field of robotics research is continuously expanding at an ever-increasing rate. So much so, that as a systems' complexity grows, so too does the amount of possible points of failure. In recent years, these systems have been integrated together to create systems of systems, dramatically increasing the fragility of these networked systems, also known as a swarm. This paper presents a method for abstracting the fault of a networked control system, namely a system of mobile robots, into general feature sets and producing the capability of predicting the present fault as well as the compensation thereof.
机译:机器人研究领域正在以不断增长的速度不断扩展。如此之多,随着系统复杂性的增加,可能出现的故障点也随之增加。近年来,这些系统已集成在一起以创建系统系统,从而大大增加了这些网络系统(也称为群)的脆弱性。本文提出了一种将网络控制系统(即移动机器人系统)的故障抽象为通用特征集并产生预测当前故障及其补偿能力的方法。

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