利用多变量数据进行实时预测性状态监测

Daniel Menges;Adil Rasheed;Harald Martens;Torbjørn Pedersen
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摘要

本文以船舶发动机的热图像数据为基础,介绍了一种利用多变量数据进行实时状态监测和状态预测的算法框架。所提出的方法旨在通过识别高维数据集中信息量最大的采样位置并提取系统的基本动态,提高状态监测和状态预测的准确性、效率和鲁棒性。该方法基于适当正交分解(POD)、最佳采样位置(OSL)和动态模式分解(DMD)的组合,可识别系统行为的关键特征并预测未来状态。基于热图像数据,我们展示了如何通过 POD 对感兴趣的热区域进行分类。通过提取数据的 POD 模式,可以大幅减少维数,并通过 OSL 找到最佳采样位置。此外,基于非线性核的支持向量回归(SVR)可用于在最佳位置之间建立模型,从而对错误数据进行估算,提高整体鲁棒性。为了建立预测性数据驱动模型,在 OSL 获得的子空间上应用了 DMD,从而降低了对计算资源的密集需求,使所提出的方法具有实时性。此外,还提出了一种利用 OSL 进行异常检测的无监督方法。异常检测框架与状态预测框架相结合,扩展了实时异常预测的能力。总之,本研究提出了一种用于实时风险评估的稳健预测性状态监测框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Predictive Condition Monitoring Using Multivariate Data
This article presents an algorithmic framework for real-time condition monitoring and state forecasting using multivariate data demonstrated on thermal imagery data of a ship’s engine. The proposed method aims to improve the accuracy, efficiency, and robustness of condition monitoring and state predictions by identifying the most informative sampling locations of high-dimensional datasets and extracting the underlying dynamics of the system. The method is based on a combination of Proper Orthogonal Decomposition (POD), Optimal Sampling Location (OSL), and Dynamic Mode Decomposition (DMD), allowing the identification of key features in the system’s behavior and predicting future states. Based on thermal imagery data, it is shown how thermal areas of interest can be classified via POD. By extracting the POD modes of the data, dimensions can be drastically reduced and via OSL, optimal sampling locations are found. In addition, nonlinear kernel-based Support Vector Regression (SVR) is used to build models between the optimal locations, enabling the imputation of erroneous data to improve the overall robustness. To build predictive data-driven models, DMD is applied on the subspace obtained by OSL, which leads to an intensive lower demand of computational resources, making the proposed method real-time applicable. Furthermore, an unsupervised approach for anomaly detection is proposed using OSL. The anomaly detection framework is coupled with the state prediction framework, which extends the capabilities to real-time anomaly predictions. In summary, this study proposes a robust predictive condition monitoring framework for real-time risk assessment.
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