Data-driven fault detection and isolation of system with only state measurements and control inputs using neural networks

Jae-Hyeon Park, D. Chang
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引用次数: 6

Abstract

With the advancement of neural network technology, many researchers are trying to find a clever way to apply neural network to a fault detection and isolation area for satisfactory and safer operations of the system. Some researchers detect system faults by combining a concrete model of the system with neural network, generating residuals by neural network, or training neural network with specific sensor signals of the system. In this article, we make a fault detection and isolation neural network algorithm that uses only inherent sensor measurements and control inputs of the system. This algorithm does not need a model of the system, residual generations, or additional sensors. We obtain sensor measurements and control inputs in a discrete-time manner, cut signals with a sliding window approach, and label data with one-hot vectors representing a normal or fault classes. We train our neural network model with the labeled training data. We give 2 neural network models: a stacked long short-term memory neural network and a multilayer perceptron. We test our algorithm with the quadrotor fault simulation and the real experiment. Our algorithm gives nice performance on a fault detection and isolation of the quadrotor.
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基于神经网络的仅状态测量和控制输入的系统数据驱动故障检测与隔离
随着神经网络技术的发展,许多研究人员都在努力寻找一种巧妙的方法将神经网络应用于故障检测和隔离领域,以使系统更安全、更满意地运行。一些研究者将系统的具体模型与神经网络相结合,通过神经网络产生残差,或者用系统的特定传感器信号训练神经网络来检测系统故障。在本文中,我们提出了一种仅使用系统固有传感器测量和控制输入的故障检测和隔离神经网络算法。该算法不需要系统模型、剩余代或额外的传感器。我们以离散时间方式获得传感器测量和控制输入,用滑动窗口方法切断信号,并用表示正常或故障类别的单热向量标记数据。我们用标记好的训练数据训练我们的神经网络模型。我们给出了两种神经网络模型:堆叠长短期记忆神经网络和多层感知器。通过四旋翼故障仿真和实际实验对算法进行了验证。该算法在四旋翼飞行器的故障检测和隔离方面具有良好的性能。
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