Anomaly Detection for Cyber-Physical Systems Using Transformers

Yuliang Ma, A. Morozov, Sheng Ding
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Abstract

Safety and reliability are two critical factors of modern Cyber-Physical Systems (CPS). However, the increasing structural and behavioral complexity of modern automation systems significantly increases the possibility of system errors and failures, which can easily lead to economic loss or even hazardous events. Anomaly Detection (AD) techniques provide a potential solution to this problem, and conventional methods, e.g., Autoregressive Integrated Moving Average model (ARIMA), are no longer the best choice for anomaly detection for modern complex CPS. Recently, Deep Learning (DL) and Machine Learning (ML) anomaly detection methods became more popular, and numerous practical applications have been presented in many industrial scenarios. Most of the modern DL-based anomaly detection methods use the prediction approach and LSTM architecture. The Transformer is a new neural network architecture that outperforms LSTM in natural language processing. In this paper, we show that the Transformer-based deep learning model, which has received much attention recently, can be applied to the anomaly detection of industrial automation systems. Specifically, we collect time-series data from a system of two industrial robots using a Simulink model. Then, we feed these data into our Transformer-based model and train it to be a time-series data predictor. The paper presents the experimental results that show the comparison of precision and speed of a Long-Short Time Memory (LSTM) predictor and our Transformer-based predictor.
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基于变压器的信息物理系统异常检测
安全性和可靠性是现代信息物理系统(CPS)的两个关键因素。然而,现代自动化系统的结构和行为复杂性的增加大大增加了系统错误和故障的可能性,这很容易导致经济损失甚至危险事件。异常检测(AD)技术为这一问题提供了一个潜在的解决方案,而传统的方法,如自回归综合移动平均模型(ARIMA),已不再是现代复杂CPS异常检测的最佳选择。近年来,深度学习(DL)和机器学习(ML)异常检测方法变得越来越流行,并在许多工业场景中提出了许多实际应用。现代基于dl的异常检测方法大多采用预测方法和LSTM体系结构。Transformer是一种新的神经网络架构,在自然语言处理方面优于LSTM。在本文中,我们证明了基于变压器的深度学习模型可以应用于工业自动化系统的异常检测,这是最近受到广泛关注的。具体来说,我们使用Simulink模型从两个工业机器人系统中收集时间序列数据。然后,我们将这些数据输入到基于transformer的模型中,并将其训练为时间序列数据预测器。本文给出了长短时记忆(LSTM)预测器与我们基于变压器的预测器在精度和速度上的比较实验结果。
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