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Fault detection via nonlinear profile monitoring using artificial neural networks

机译:使用人工神经网络通过非线性轮廓监视进行故障检测

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Fault detection is the characterization of a normal behavior of a system using a response function or profile of interest and the identification of any deviation from such normal behavior. As system complexity grows, predicting the underlying structure or form of response function becomes challenging if not impossible. This article presents a data-driven approach for fault detection of complex systems using multivariate statistical process control based on artificial neural network (ANN) characterization. In this approach, the quality of a system is characterized where one explanatory variable is adequately explained as a function of the other variables using an ANN model. The vector of weights and biases of the ANN model is monitored by using Hotelling T2hrough control charts. The proposed method is tested and compared with existing methods such as polynomial and sum of sine function regression for 3 cases from the literature. Moreover, it is applied to a 4-story reinforced concrete building that uses continuous monitoring to avoid potentially catastrophic failures. The proposed ANN approach outperforms the existing methods for small shifts (deviations) from healthy states. For large and medium shifts, it provides comparable results that are on the conservative side.
机译:故障检测是使用感兴趣的响应函数或配置文件来表征系统的正常行为,并确定与此类正常行为的任何偏差。随着系统复杂性的增长,预测响应函数的基础结构或形式变得很困难,即使不是不可能的话。本文提出了一种基于数据驱动的复杂系统故障检测方法,该方法使用了基于人工神经网络(ANN)表征的多元统计过程控制。在这种方法中,系统的质量具有特征,其中使用ANN模型将一个解释变量作为其他变量的函数进行了充分解释。通过使用Hotelling T2hrough控制图来监视ANN模型的权重和偏差向量。对该方法进行了测试,并与现有方法(如多项式和多项式和正弦函数回归总和)进行了比较,其中3例来自文献。此外,它还应用于四层钢筋混凝土建筑,该建筑使用连续监控以避免潜在的灾难性故障。所提出的人工神经网络方法优于现有的健康状态小偏差(偏差)方法。对于大班和中班,它提供的结果在保守方面可比。

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