顶吹炉时空协同传感器故障诊断方法研究

IF 6.3 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
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引用次数: 0

摘要

顶吹炉系统的特点是传感器数量多、工作环境恶劣,因此很容易因元件老化和外部干扰等因素而出现传感器故障。这些故障会严重影响系统的安全可靠运行。然而,传统的传感器故障诊断方法往往忽视了对时空特征的探索,只注重学习传感器之间的时间关系,未能有效地考虑它们之间的空间关系。在本研究中,我们利用最大互信息构建传感器网络知识图,提出了一种基于最大信息图卷积网络(MI-GCN)的空间关联模型。MI-GCN 利用图卷积机制提取多尺度空间特征,捕捉传感器之间的空间关系。此外,我们还开发了一个空间-时间图级预测模型,即空间-时间图转换器(STGT),用于提取时间特征。通过将 MI-GCN 提取的空间特征与 STGT 捕获的时间特征相结合,可以实现精确预测。通过分析预测值与地面实况之间的归一化残差,可以进行传感器故障诊断。最后,利用镍冶炼过程中顶吹炉系统的测试数据验证了所提方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on spatial-temporal synergistic sensor fault diagnosis method for top-blowing furnace

Top-blowing furnace systems, characterized by a large number of sensors and harsh working environments, are prone to sensor failures due to factors like component aging and external interference. These failures can significantly impact the system's safe and reliable operation. However, traditional sensor fault diagnosis methods often neglect the exploration of spatial-temporal characteristics and focus solely on learning temporal relationships between sensors, failing to effectively consider their spatial relationships. In this study, we propose a spatial correlation model based on the maximal information-based graph convolutional network (MI-GCN) by constructing a sensor network knowledge graph using maximal mutual information. The MI-GCN leverages the graph convolution mechanism to extract multi-scale spatial features and capture the spatial relationships between sensors. Additionally, we develop a spatial-temporal graph-level prediction model, known as the spatial-temporal graph transformer (STGT), to extract temporal features. By combining the spatial features extracted by the MI-GCN with the temporal features captured by the STGT, accurate predictions can be achieved. Sensor fault diagnosis is conducted by analysing the normalized residuals between the predicted values and the ground truth. Finally, the feasibility and effectiveness of the proposed method are validated using test data from a top-blowing furnace system in the nickel smelting process.

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来源期刊
ISA transactions
ISA transactions 工程技术-工程:综合
CiteScore
11.70
自引率
12.30%
发文量
824
审稿时长
4.4 months
期刊介绍: ISA Transactions serves as a platform for showcasing advancements in measurement and automation, catering to both industrial practitioners and applied researchers. It covers a wide array of topics within measurement, including sensors, signal processing, data analysis, and fault detection, supported by techniques such as artificial intelligence and communication systems. Automation topics encompass control strategies, modelling, system reliability, and maintenance, alongside optimization and human-machine interaction. The journal targets research and development professionals in control systems, process instrumentation, and automation from academia and industry.
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