慢速特征约束分解自动编码器:应用于流程异常检测和定位

IF 3.9 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Mingwei Jia, Lingwei Jiang, Junhao Hu, Yi Liu, Tao Chen
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引用次数: 0

摘要

摘要检测生产过程中的异常对于确保安全至关重要。然而,噪声极大地削弱了数据驱动异常检测模型的可靠性。为了应对这一挑战,我们提出了一种慢速特征约束分解自动编码器(SFC-DAE),用于噪声场景下的异常检测。考虑到过程可能同时表现出长期趋势和周期特性,过程数据被分解为趋势和周期。通过切片和随机屏蔽某些趋势和周期来减少重复信息。构建切片之间的依赖关系以提取内在信息,同时使用慢速特征约束损耗降低高频噪声。通过重建误差策略来检测和定位异常。SFC-DAE 的有效性通过糖厂和安全水处理系统的数据得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Slow feature‐constrained decomposition autoencoder: Application to process anomaly detection and localization
SummaryDetecting anomalies in manufacturing processes is crucial for ensuring safety. However, noise significantly undermines the reliability of data‐driven anomaly detection models. To address this challenge, we propose a slow feature‐constrained decomposition autoencoder (SFC‐DAE) for anomaly detection in noisy scenarios. Considering that the process can exhibit both long‐term trends and periodic properties, the process data is decomposed into trends and cycles. The repetitive information is mitigated by slicing and randomly masking certain trends and cycles. Dependencies among slices are constructed to extract intrinsic information, while high‐frequency noise is reduced using a slow feature‐constrained loss. Anomalies are detected and localized through a reconstruction error strategy. The effectiveness of SFC‐DAE is demonstrated using data from a sugar factory and a secure water treatment system.
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来源期刊
CiteScore
5.30
自引率
16.10%
发文量
163
审稿时长
5 months
期刊介绍: The International Journal of Adaptive Control and Signal Processing is concerned with the design, synthesis and application of estimators or controllers where adaptive features are needed to cope with uncertainties.Papers on signal processing should also have some relevance to adaptive systems. The journal focus is on model based control design approaches rather than heuristic or rule based control design methods. All papers will be expected to include significant novel material. Both the theory and application of adaptive systems and system identification are areas of interest. Papers on applications can include problems in the implementation of algorithms for real time signal processing and control. The stability, convergence, robustness and numerical aspects of adaptive algorithms are also suitable topics. The related subjects of controller tuning, filtering, networks and switching theory are also of interest. Principal areas to be addressed include: Auto-Tuning, Self-Tuning and Model Reference Adaptive Controllers Nonlinear, Robust and Intelligent Adaptive Controllers Linear and Nonlinear Multivariable System Identification and Estimation Identification of Linear Parameter Varying, Distributed and Hybrid Systems Multiple Model Adaptive Control Adaptive Signal processing Theory and Algorithms Adaptation in Multi-Agent Systems Condition Monitoring Systems Fault Detection and Isolation Methods Fault Detection and Isolation Methods Fault-Tolerant Control (system supervision and diagnosis) Learning Systems and Adaptive Modelling Real Time Algorithms for Adaptive Signal Processing and Control Adaptive Signal Processing and Control Applications Adaptive Cloud Architectures and Networking Adaptive Mechanisms for Internet of Things Adaptive Sliding Mode Control.
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