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Fault tolerant control method for displacement sensor fault of wheel-legged robot based on deep learning

机译:基于深度学习的车轮腿机器人位移传感器故障容错控制方法

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In this paper, a fault-tolerant control method based on deep learning is proposed for multi displacement sensor fault of a wheel-legged robot with new structure. Unlike most methods that only detect a single sensor, the proposed method can detect a large number of sensors simultaneously and rapidly. The residual error is generated by sensor values and the prediction model which is established by deep belief network(DBN) in deep learning, to detect faults and locate faulty sensors. Then, by using other non-faulty sensor information to reconstruct the signal through the neural network and combining with the coupling relationship of the 6-DOF platform, the fault sensor signal can be estimated accurately and the error accumulation problem can be also solved. Comparing the two algorithms of neural network and support vector machine(SVM), the reconstruction signal of neural network has higher accuracy. So, the performance of the wheel-legged robot can be guaranteed within a safety range. It is proved that the proposed method has high reliability and stability.
机译:本文提出了一种基于深度学习的容错控制方法,用于具有新结构的轮腿机器人的多位移传感器故障。与仅检测单个传感器的大多数方法不同,所提出的方法可以同时且快速地检测大量传感器。残余误差由传感器值和深度信仰网络(DBN)建立的预测模型产生,以检测故障并定位出故障传感器。然后,通过使用其他非故障传感器信息来通过神经网络重建信号并与6-DOF平台的耦合关系组合,可以精确地估计故障传感器信号,并且还可以解决误差累积问题。比较神经网络的两种算法和支持向量机(SVM),神经网络的重建信号具有更高的精度。因此,可以在安全范围内保证车轮腿机器人的性能。事实证明,该方法具有高可靠性和稳定性。

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