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SFDIA of consecutive sensor faults using neural networks - Demonstrated on a UAV

机译:使用神经网络的连续传感器故障的SFDIA-在无人机上演示

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摘要

Neural network based sensor fault detection, isolation and accommodation (NN-SFDIA) is becoming a popular alternative to traditional linear time-invariant model-based sensor fault detection, isolation and accommodation (SFDIA) schemes, such as observer-based methods. Their online training capabilities and ability to model complex nonlinear systems have attracted much research interest in the applications area of neural networks. In this article, we design an NN-SFDIA scheme to detect multiple sensor faults in an unmanned air vehicle (UAV). Model-based SFDIA is a direction of development in particular with UAVs where sensor redundancy may not be an option due to weight, cost and space implications. In this article, a maximum of three consecutive faults are assumed in the pitch gyro, normal accelerometer and angle of attack sensor of a nonlinear UAV model. Furthermore, a novel residual generator which is designed to minimise the false alarm rates and missed faults, is implemented. After 33 separate SFDIA tests implemented on a 1.6 GHz Pentium processor, the NN-SFDIA scheme detected all but three faults with a fast execution time of 0.55 ms per flight data sample.
机译:基于神经网络的传感器故障检测,隔离和适应(NN-SFDIA)成为基于线性时不变模型的传感器故障检测,隔离和适应(SFDIA)方案(例如基于观察者的方法)的流行替代方案。他们的在线训练能力和对复杂非线性系统建模的能力在神经网络的应用领域吸引了许多研究兴趣。在本文中,我们设计了一种NN-SFDIA方案来检测无人飞行器(UAV)中的多个传感器故障。基于模型的SFDIA是发展的方向,特别是对于无人机而言,由于重量,成本和空间的影响,传感器冗余可能不是一种选择。在本文中,在非线性UAV模型的俯仰陀螺仪,法向加速度计和迎角传感器中最多假定了三个连续故障。此外,实现了一种新颖的残差发生器,其被设计为最小化错误警报率和漏失的故障。在1.6 GHz奔腾处理器上执行了33次单独的SFDIA测试之后,NN-SFDIA方案检测到了除三个故障以外的所有故障,每个飞行数据样本的执行时间为0.55 ms。

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