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A Novel Algorithm for the Fault Diagnosis of a Redundant Inertial Measurement Unit

机译:一种冗余惯用测量单元故障诊断的新算法

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Although a number of fault diagnosis algorithms for inertial sensors have been proposed in previous decades, the performance of these algorithms needs to be improved with regard to small faults. In this paper, we introduce a data driven-based algorithm, namely, SaPD, for the anomaly detection and output reconstruction of a redundant inertial measurement unit (RIMU). SaPD implements the fault identification of an inertial apparatus by combining an artificial neural network with the Q contribution plots method in parity space. To improve the performance of the fault detection part, in particular for small faults, we introduce a novel hyperplane that measures the distances between inputs and the primary-neuron set obtained from a self-organizing incremental neural network (SOINN). We also employ the Q contribution plots of sensors in the fault isolation part by analyzing historical data with principal component analysis (PCA). We perform quantitative evaluations in a realistic simulation environment, which demonstrates that the proposed SaPD algorithm outperforms other related algorithms in terms of the fault identification accuracy of tiny faults with an acceptable computational complexity.
机译:尽管在过去的几十年中提出了许多用于惯性传感器的故障诊断算法,但是需要在小故障方面改进这些算法的性能。在本文中,我们引入了一种基于数据驱动的算法,即SAPD,用于冗余惯性测量单元(RIMU)的异常检测和输出重建。 SAPD通过将人工神经网络与奇偶校验空间中的Q贡献绘图方法组合来实现惯性装置的故障识别。为了提高故障检测部分的性能,特别是对于小故障,我们介绍了一种新的超平面,测量输入和从自组织增量神经网络(SOINN)获得的距离之间的距离。我们还通过分析具有主成分分析(PCA)的历史数据来使用故障隔离部分中的传感器的Q贡献图。我们在现实模拟环境中进行定量评估,这表明所提出的SAPD算法在具有可接受的计算复杂度的小故障的故障识别准确性方面优于其他相关算法。

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